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HYPOXIA AND THE METABOLIC PHENOTYPE OF PROSTATE CANCER CELLS by Lauren Higgins A thesis submitted to the Department of Biology In conformity with the requirements for the degree of Master of Science Queen’s University Kingston, Ontario, Canada September, 2008 Copyright © Lauren Higgins, 2008 Abstract Cancer cells have the ability to survive when oxygen is limiting, and upregulate the pathway of fatty acid synthesis, owing in part to alterations in their metabolism. I compared the metabolic phenotypes of the prostate cancer cell lines LNCaP, DU145, and PC3 assessing energy metabolism, and metabolic gene expression. I also explored the plasticity of the metabolic phenotype following passage, selection and in vivo growth. Finally, I explored the sensitivity of the fatty acid synthesis pathway to low oxygen. LNCaP cells had a more oxidative phenotype based on oxygen consumption, lactate production, enzyme assays, and mRNA levels. While DU145 and PC3 cells were more glycolytic, they were unresponsive to dichloroacetate (DCA), and dinitrophenol (DNP), stimulators of oxygen consumption. Mitochondrial dysfunction in the PC3 and DU145 cells may explain this phenomenon, for they possessed normal cardiolipin levels but lower mitochondrial enzyme activities (cytochrome oxidase (COX), citrate synthase (CS)). When LNCaP cells were subjected to high passage, with and without clonal selection, the derived lines acquired a dysfunctional oxidative phenotype, becoming more glycolytic. Clonal selection appeared to have the most dramatic effect on cellular metabolism. This finding is supported by decreased oxygen consumption, increased lactate production, and a reduction in the activity of the oxidative enzymes CS and COX in the clonally selected LNCaP-luc cell line. Similar to the DU145 and PC3 cells, NAO fluorescence indicates that the oxidative impairment in these LNCaP-derived lines may be due to a reduction in mitochondrial activity. The pattern of metabolic gene expression ii seen in vitro was unaffected when LNCaP cells were grown as subcaspular and muscle xenografts in immunodeficient mice, though xenografts did exhibit indications of an hypoxic response (elevated VEGF mRNA). Oxygen deprivation in vitro increased mRNA for HIF and responsive genes but not SREBP responsive genes. Similarly, oxygen deprivation had no influence on triglyceride levels in any of the lines suggesting that the SREBP axis may not be directly modulated by oxygen levels. Collectively these studies demonstrate differences in the metabolism of these prostate cancer models, with important ramifications of therapeutic strategies involving metabolic targets. iii Co-Authorship Chapter 2, “Hypoxia and the metabolic phenotype of prostate cancer cells,” was co-authored with A. Garbens, H. Withers, and Dr. C.D. Moyes from Queen’s University and Dr. S. Hayward and H. Love from Vanderbilt University. Dr. Moyes was the supervisor for this work, contributing to experimental design, troubleshooting and editing. Alaina Garbens performed selected real-time PCR experiments to evaluate the sensitivity of the SREBP axis to low oxygen as a fourth year thesis project. I completed and extended this work after her graduation. Henry Withers, a former undergraduate student in our lab, did enzyme assays to compare the levels of metabolic enzymes between selected cell lines. I completed and extended this work after his graduation. Dr. Hayward and Harold Love from Vanderbilt were responsible for sending us the xenografts in SCID mice. They performed the injections, and collected the xenografts. They also provided us with aliquots of highly passaged and luciferase transfected cells, although the cells and experiments were run here. Leo Magnoni from the University of Ottawa (supervisor JM Weber) was kind enough to demonstrate to me how to perform my lipid extractions in their lab. iv Acknowledgements Many thanks to Chris Moyes (The Big Kahuna, Boss, Wizard, Professor M, P Moyes) for being the best supervisor, mentor, and friend I could have hoped for. I would also like to thank my fellow members of the Moyes lab, for I would not have made it through without them! Thanks to Chris Le Moine for teaching me how to keep my cool in every aspect of my life and for welcoming me warmly into the Moyes lab. Thank you to Melanie Fortner, for teaching me (basically) everything I know in the lab. Thank you to Rhiannon Davies for being an amazing friend and for keeping me entertained in Kingston. Thank you to Alex Little for making me laugh. I would also like to thank Christine Genge for her friendship and moral support. Thanks to Henry Withers and Alaina Garbens for learning alongside me, and for all of their help with my project. I give sincere thanks to my committee members Dr. Chris Mueller and Dr. Virginia Walker for all of their patience and guidance throughout my thesis work. Thank you to Bill Bendena, Steve Lougheed, and Paul Young for being invaluable mentors to me. I would also like to thank Dr. Weber at the University of Ottawa for allowing me to work in his lab to do my lipid extractions. Many thanks to the Chew lab for all of their advice and for helping me prepare for my defense. Finally, I would like to thank my friends and family for giving my life balance these past two years. Amy Hewitt, Ted Branscombe, Danae Benjamin, Emily Huva, Gary Armstrong, and Anthea Christophorou – you have been there for me throughout some of the best and worst times of my life and I will love you forever for that. I would like to thank my grandparents, Meryl and Don Forrest for being my academic backbones and v supporting me tremendously throughout my academic career. I would lastly like to thank my mother, Jane, and father, Tim, for all of their unconditional love and support. vi Table of Contents Abstract................................................................................................................... ii Co-Authorship ....................................................................................................... iv Acknowledgements .................................................................................................v Table of Contents.................................................................................................. vii List of Tables ...........................................................................................................x List of Figures........................................................................................................ xi List of Abbreviations ........................................................................................... xiii Chapter 1: Introduction and General Literature Review .........................................1 1.1. Overview ...............................................................................................................1 1.2. Cellular Metabolism ..............................................................................................2 1.3 Aerobic glycolysis in cancer...................................................................................4 1.3.1 Hypoxic selection ....................................................................................4 1.3.2 Mitochondrial dysfunction ......................................................................5 1.3.2 Activation of Akt/PKB............................................................................7 1.3.3 Inactivation of p53 ................................................................................10 1.4 Hypoxia and cellular metabolism .........................................................................12 1.4.1 Hypoxia inducible factor-1 (HIF-1) transcription factor.......................13 1.4.2 Angiogenesis .........................................................................................13 1.4.3 Glucose uptake and glycolysis ..............................................................15 1.4.4 Apoptotic resistance ..............................................................................16 1.5 Fatty acid synthesis and cancer ............................................................................19 vii 1.5.1 Sterol regulatory element-binding protein (SREBP) transcription factors ....................................................................................................................................21 1.5.2 Androgens and lipogenesis....................................................................23 1.5.3 Hypoxia and fatty acid synthesis...........................................................24 1.6 Objectives .............................................................................................................27 Chapter 2: Hypoxia and the metabolic phenotype of prostate cancer cells...........30 2.1 Introduction ..........................................................................................................30 2.2 Methods ................................................................................................................32 2.2.1 Cell culture and treatments....................................................................32 2.2.2 Oxygen consumption and lactate production measurements ................34 2.2.3 Enzyme assays.......................................................................................35 2.2.4 RNA extraction and real-time PCR.......................................................36 2.2.5 Intracellular ATP levels ........................................................................38 2.2.6 Cardiolipin content (NAO staining) ......................................................38 2.2.7 Xenografts in SCID mice ......................................................................39 2.2.8 Triglyceride extraction and quantification ............................................39 2.2.9 Statistical analyses.................................................................................40 2.3 Results ..................................................................................................................40 2.3.1 The metabolic phenotype differs between cell lines .............................40 2.3.2 DU145 and PC3 cells have reduced mitochondrial enzyme activity but not mitochondrial gene expression.............................................................................44 viii 2.3.3 LNCaP cells transition to a glycolytic phenotype with increasing passage and clonal selection.......................................................................................49 2.3.4 Metabolic gene expression of LNCaP cells in vivo...............................53 2.3.5 SREBP axis gene expression is not hypoxia sensitive ..........................57 2.3.6 Fatty acid levels are not influenced by low oxygen in these prostate cancer models .............................................................................................................59 2.4 Discussion.............................................................................................................59 2.4.1 Metabolic enzyme activities and gene expression ................................60 2.4.2 The effects of passage and selection .....................................................63 2.4.3 In vivo and in vitro differences in gene expression ...............................64 2.4.4 SREBP axis ...........................................................................................66 Chapter 3: General Discussion ..............................................................................68 3.1 The metabolic phenotype of prostate cancer cells................................................68 3.2 The influence of passage and selection on prostate cancer cells and xenografts .71 3.3 The influence of hypoxia on fatty acid synthesis .................................................74 Appendix 1 ............................................................................................................91 ix List of Tables Table 1. Real-time PCR human specific primers (5’-3’)...................................................37 Supplementary Table 1. Raw cycle thresholds of real-Time PCR data comparing LNCaP, DU145, and PC3 cells (Figure 7) ..............................................................................92 Supplementary Table 2. Raw cycle thresholds of real-Time PCR data comparing LNCaP and derived lines (Figure 11)………………………………………..………………..….92 Supplementary Table 3. Raw cycle thresholds of real-Time PCR data comparing HPLNCaPs and xenografts (Figure 12)…………………………………………..…………93 Supplementary Table 4. Raw cycle thresholds of real-Time PCR data comparing LNCaPluc cells and xenografts (Figure 13)…………………………………………...…………94 Supplementary Table 6. Raw cycle thresholds of real-Time PCR data comparing LNCaP, DU145, and PC3 cells following low oxygen treatment (Figure 14)…………………....95 x List of Figures Figure 1. Possible ways that low oxygen may influence the SREBP axis via HIF-1α .....22 Figure 2. Metabolism of LNCaP, PC3, and DU145 cells..................................................41 Figure 3. Lactate production..............................................................................................42 Figure 4. ATP levels following exposure to low pH and hypoxia ....................................43 Figure 5. Metabolism of LNCaP, DU145, and PC3 cells following treatment with dichloroacetate (DCA)...............................................................................................44 Figure 6. Glycolytic and mitochondrial enzyme activities in DU145 and PC3 cells ........45 Figure 7. mRNA levels in LNCaP, DU145, and PC3 cells ...............................................47 Figure 8. Oxygen consumption of LNCaP, DU145 and PC3 cells following exposure to dinitrophenol (DNP) ..................................................................................................48 Figure 9. NAO fluorescence in LNCaP, DU145, PC3, and LNCaP-derived cell lines measured using FACS ...............................................................................................49 Figure 10. Metabolism of HP-LNCaP and LNCaP-luc cells.............................................51 Figure 11. Transcript levels in HP-LNCaP and LNCaP-luc cells .....................................52 Figure 12. Transcript levels in HP-LNCaP cells and xenografts.......................................54 Figure 13. Transcript levels in LNCaP-luc cells and xenografts.......................................56 Figure 14. mRNA levels in LNCaP, DU145 and PC3 cells following exposure to hypoxia, anoxia, or azide ...........................................................................................58 Figure 15. Triglyceride content (ug TG/mg protein) of LNCaP, DU145, and PC3 cells following exposure to normoxia, hypoxia, and anoxia. ............................................59 xi Supplementary Figure 1. Integration of Cellular Pathways that Mediate Aerobic Glycolysis. .................................................................................................................91 xii List of Abbreviations ALDO: aldolase; CS: citrate synthase; COX: cytochrome c oxidase; DCA: dichloroacetate; Δψm: mitochondrial membrane potential; G3PDH: glyceraldehyde-3phosphate dehydrogenase; G6PDH: glucose-6-phosphate dehydrogenase; HK: hexokinase; HIF: hypoxia-inducible factor; LDH: lactate dehydrogenase; NRF-2; nuclear respiratory factor 2; OXPHOS: oxidative phosphorylation; PBS: phosphate-buffered saline; PDH: pyruvate dehydrogenase; PDK: pyruvate dehydrogenase kinase; PGC-1: PPARγ co-activator 1; PGI: phosphoglucoisomerase; PK: pyruvate kinase; PKm: pyruvate kinase muscle isoform; SCAP: SREBP cleavage activator protein; SCID: severe combined immunodeficiency; SCO2: synthesis of cytochrome c oxidase 2; SREBP: Sterol regulatory-element binding protein; TBP: TATA-binding protein; VEGF: vascular endothelial growth factor. xiii Chapter 1: Introduction and General Literature Review 1.1. Overview The metabolic phenotype of cancer cells is often neglected in cancer research, which typically focuses on mutational mechanisms of cancer progression. Nonetheless, some efforts have been placed in understanding cancer cell physiology, specifically the ability of cancer cells to survive and progress when oxygen is limiting. The focus of this study is to characterize the metabolic properties of the three most widely used prostate cancer cell lines (LNCaP, DU145, and PC3). We will assess the profile of metabolic enzymes in terms of catalytic activity and expression of the genes encoding the enzymes and their transcriptional regulators. We will also evaluate how the metabolic phenotype changes under various culture conditions (prolonged passage, clonal selection, and xenograft models). Lastly, we will explore the relationship between the sterol regulatory element binding protein (SREBP) pathway and low oxygen, to determine if it is directly influenced by low oxygen in prostate cancer cells. The goal is to determine the relationships between hypoxia, mitochondrial function, fatty acid synthesis and the phenotype of aerobic glycolysis. A detailed understanding of prostate cancer metabolism at the molecular level is crucial to understanding the progression of this disease, and may lead to the identification of possible therapeutic targets. 1 1.2. Cellular Metabolism In order to produce ATP, cells break down carbohydrates, proteins and fatty acids, and use the resulting energy to support anabolic pathways necessary for cellular growth and replication, such as DNA replication and protein synthesis (Costello and Franklin 2005). Energy metabolism, in the context of my thesis, refers to the combined processes of glycolysis, the tricarboxylic acid cycle (TCA cycle) and oxidative phosphorylation. It is tightly regulated according to cellular energy demands. Glycolysis, the first major pathway of cellular metabolism, occurs in the cytoplasm and is functional even in the absence of oxygen. While glycolysis is able to produce ATP at a high rate, it is considered a low efficiency pathway because it produces a net of only two ATP per glucose. A summarized equation of glycolysis is as in Equation 1.1: Eq 1.1. C6H12O6 + 2ADP + 2NAD+ 2ATP + 2 pyruvate + 2NADH +2H+ The pyruvate that is produced in the cytoplasm is imported into the mitochondrial matrix, where it is converted by pyruvate dehydrogenase (PDH) into acetyl-coenzyme A (acetyl-CoA). These molecules of acetyl-CoA then enter the TCA cycle where they are further oxidized to produce 2 CO2, 3 NADH and 1 FADH2. The reducing equivalents (NADH, FADH2) donate their electrons to the electron transport chain, and during the electron transfers within and between complexes, protons are pumped into the intermembrane space. This generates an electrochemical gradient (the proton motive 2 force), which can be harnessed by ATP synthase to form ATP from ADP and an inorganic phosphate. Historically, reducing equivalent oxidation was thought to pump enough protons to create a proton motive force sufficient to produce 3 ATP from NADH and 2 ATP from FADH2. As well, the reducing energy produced in glycolysis (2 NADH per glucose) can be shuttled into the mitochondria, where it can be oxidized to produce 2 or 3 ATP (per glucose). Thus, oxidative phosphorylation can produce as many as 38 or 39 ATP per glucose, in contrast to 2 ATP per glucose in glycolysis. Though the exact stoichiometries for ATP production per NADH and FADH2 are probably lower than 3 and 2, by any measure oxidative phosphorylation is much more efficient in terms of ATP per glucose than is glycolysis. Another difference in the two pathways is the dependence on oxygen. Oxidative phosphorylation requires oxygen as a final electron acceptor, and thus in the absence of oxygen, mitochondria can neither pump protons nor generate ATP. Under in the absence of oxygen, cell must rely on the ATP derived from glycolysis for survival. Since NADH produced in glycolysis cannot be oxidized via mitochondria redox shuttles, cells balance redox (NADH/NAD+) by converting pyruvate into lactate by the enzyme lactate dehydrogenase (LDH). As pyruvate is reduced, forming lactate, NADH produced during glycolysis is reoxidised, forming NAD+. Glycolysis is essential during periods of hypoxia and anoxia but its inherent inefficiency (in terms of ATP per glucose) is a problem for otherwise normoxic, healthy cells. Thus, it would be unusual for normal cells to rely on glycolysis under aerobic conditions (termed aerobic glycolysis). 3 1.3 Aerobic glycolysis in cancer In contrast to healthy cells, many types of cancer cells prefer glycolysis as an ATP source, even in the presence of abundant oxygen (Warburg 1926; Pedersen 1978). Why a cell would settle for two molecules ATP per molecule of glucose rather than the additional 34 molecules of ATP from aerobic pathways remains hotly debated. Numerous explanations have been put forward including hypoxic selection, mitochondrial dysfunction, activation of Akt, and deactivation of the tumour suppressor p53. I will consider each of these mechanisms in turn, however, none can be generalized to all cell types or types of cancer and a combination of mechanisms are likely involved. 1.3.1 Hypoxic selection Somatic evolution during carcinogenesis involves changes in the activity of tumour suppressor genes and proto-oncogenes. Such mutations confer a selective advantage to the cell, and contribute to malignant transformation (Gillies and Gatenby 2007). Molecular changes during the evolution of carcinogenesis are driven by selective pressure within the cellular microenvironment (Gillies and Gatenby 2007). Early in tumorigenesis, prior to vascularization, the cells in the centre of the tumour are unable to access oxygen and nutrients from the bloodstream and experience periods of intermittent hypoxia. Under such circumstances, enhanced glycolysis may benefit the cell in two ways: 1) by maintaining ATP production when oxygen is limiting, and 2) by producing reducing equivalents that protect the cell from oxidative stress during periods of reoxygenation (Gillies and Gatenby 2007). However, cancer cells maintain their glycolytic 4 phenotype following vascularization. Therefore, selection for cancer genotypes that improve glycolysis under anaerobic conditions may result in a genotype that must rely on glycolysis even under aerobic conditions. 1.3.2 Mitochondrial dysfunction Warburg’s original explanation for aerobic glycolysis in cancer cells was irreversible damage to the respiratory apparatus (Warburg 1926). Mitochondria are arguably the most important component of the cell for they are responsible for the production of 95% of the average eukaryotic cell’s energy and play a central role in metabolism (Goffart and Wiesner 2003). Consequently, many lines of evidence suggest that the underlying cause of the aerobic glycolytic phenotype in cancer cells may be due to mitochondrial shortfalls or dysfunction (Warburg 1930; Pedersen 1978). It is known that mitochondrial DNA (mtDNA) mutations and deletions can occur in some contexts where aerobic glycolysis is observed (Wallace 1999; Xu et al. 2005). Alternatively, it is perhaps more likely that the primary metabolic lesion is a dysregulation of mitochondrial biogenesis: cancer cells may derive the majority of their ATP from the glycolytic pathway because they do not have a sufficient number of otherwise normal mitochondria to yield ATP from oxidative metabolism. When the energy demands of a cell are heightened, a transcriptional network is activated to increase the content of mitochondria in the cell. This is most notable in exercising muscle (Hood 2001) and during adaptive thermogenesis in brown adipose tissue (Klingenspor et al. 1996), both of which require an increase in mitochondrial content to maintain the cell’s high demand for energy. 5 Likewise, a reduction in the content of mitochondria per cell may result in a cell that cannot sustain oxidative ATP production. Many cancer cells have fewer mitochondria per cell in comparison to healthy cells (Pedersen 1978; reviewed by Moreno-Sanchez et al. 2007). A reduction in mitochondrial content may result from either more dynamic mechanisms of organelle degradation (Rodriguez-Enriquez et al. 2006) or suppressed organelle biogenesis. While these observations are widespread, their molecular underpinnings have yet to be discovered. Mitochondrial biogenesis and oxidative metabolism are controlled by a number of genes, most of which are nuclear encoded and are regulated at a transcriptional level (Scarpulla 1997; Lenka et al. 1998). This regulatory network involves transcription factors including nuclear respiratory factors (NRF-1, NRF-2), peroxisome proliferatoracivated receptors (PPAR-α, PPAR-γ) and coactivators such as PPAR- γ coactivator 1 alpha family members PGC-1α and PGC-1β. PGC-1α binds to nuclear hormone receptors and other transcription factors to induce the transcription of their target genes involved in fuel intake, fatty-acid oxidation, mitochondrial biogenesis, and oxygen consumption (Wu et al. 1999). This coactivator is highly expressed in brown fat where it is involved in thermogenesis (Puigserver et al. 1998), muscle where it is implicated in fibre type switching (Lin et al. 2002), and liver, where it is important for gluconeogenesis (Yoon et al. 2001). PPAR-γ and PGC-1α mRNA levels are reduced in breast (Jiang et al. 2003), ovarian (Zhang et al. 2007), and colon cancer cells (Feilchenfeldt et al. 2004). Furthermore, Zhang et al. (2007) found that PGC-1α induces apoptosis in ovarian cancer 6 cells, suggesting that its low expression in cancerous tissues may be associated with cancer growth and progression. Therefore, altered expression of these transcriptional regulators may be involved in the impaired oxidative metabolism observed in many cancer types. 1.3.2 Activation of Akt/PKB The phosphatidylinositol 3-kinase (PI3K) signaling pathway, which mediates many aspects of cell growth and survival, is commonly deregulated in cancer (Bellacosa et al. 1995; reviewed by Cantley 2002). Activation of this pathway ultimately leads to growth and metastasis, and has been associated with therapeutic resistance (Bacus et al. 2002; Clark et al. 2002; reviewed by Hennessy et al. 2005). PI3K belongs to a family of serine/threonine kinases that are responsible for internalizing the effects of growth factors and receptor tyrosine kinases at the cellular membrane leading to the activation of an internal signaling cascade. PI3K, upon activation, subsequentially phosphorylates phosphatidylinositol-4, 5-bishosphate resulting in the formation of a secondary messenger, phosphoinositol-3’phosphate (PIP3). The tumour suppressor, phosphatase and tensin homologue (PTEN), has the ability to remove this phosphate and reduce levels of PIP3, thereby interfering with the effects of PI3K (Stambolic et al. 1998). In the absence of PTEN, PIP3 binds to lipid domains, namely pleckstrin-homology (PH) domains in its targets to recruit them for activation at the membrane. The principal moderator of the effects of PI3K activation is the downstream Akt (also known as protein kinase B). Akt is commonly constitutively expressed in cancer cells, and is very important in the 7 development of cancer for it both mediates aerobic glycolysis and is involved in the suppression of apoptosis. In addition to hypoxic selection and mitochondrial dysfunction, activation of Akt may explain the phenotype of aerobic glycolysis. It has been shown that activation of Akt leads to increased glucose consumption and lactate secretion by the cell, and thereby activates glycolysis without effecting cellular respiration (Elstrom et al. 2004). Furthermore, studies have indicated that impaired respiration my also activate Akt (Pelicano et al. 2006). Mitochondrial mutagenesis, hypoxia, and pharmacological inhibition of the respiratory chain have been associated with the inactivation of PTEN, and the subsequent activation of Akt (Pelicano et al. 2006). Pelicano and colleagues (2006) demonstrated that this occurs due to the NADH-mediated inactivation of PTEN. Hence, upon inhibition of mitochondrial respiration, the reducing equivalent NADH produced in glycolysis is unable to be oxidized via mitochondrial pathways. This increase in NADH disturbs cellular redox balance, which has been associated with PTEN inactivation (Pelicano et al. 2006). Upon activation resulting from loss of PTEN activity, Akt induces glucose transport into the cell, hexokinase (HK) activity and glycolysis as a means to derive energy when mitochondrial pathways are not functioning. This ultimately gives malignant cells an energetic advantage when mitochondrial pathways are injured, and is associated with resistance to chemotherapy. Therefore, Akt is an important player in the metabolic phenotype of cancer cells and may represent the mediator 8 between mitochondrial dysfunction and the Warburg effect (i.e. accelerated rates of glycolysis). There is a strong relationship between growth factor signaling and cellular metabolism, as both are absolutely necessary to ensure cell survival. This relationship is mediated by Akt, which not only promotes aerobic glycolysis, but is also involved in the evasion of apoptosis. Early in the apoptotic cascade, cytochrome c and other proapoptotic proteins are released from the mitochondria. Kennedy et al. (1999) demonstrated that Akt actually inhibits the release of cytochrome c from the mitochondria. Therefore, activation of Akt prevents the apoptotic cascade from being initiated. Akt exerts its inhibitory influence on the apoptotic cascade by increasing the activity of mitochondrial-associated hexokinases (mtHKs) (Robey and Hay 2005). Hexokinase (HK) is the first enzyme of glycolysis that is responsible for the conversion of glucose into glucose-6-phosphate in the cytoplasm. The most prominent isoforms of HK are HKI and HKII, and both associate with and bind to the voltage dependent anion channel (VDAC) in the outer mitochondrial membrane. This serves to couple glycolysis and oxidative phosphorylation, and provides mitochondrial-derived energy for HK activity. The activation of Akt localizes HK to the mitochondria, where it is able to regulate the opening of the permeability transition (PT) pore (Beutner et al. 1998). Therefore, by increasing the amount of mtHKs that interact with the VDAC, Akt prevents the PT pore from opening, thereby preventing the release of apoptotic proteins (Gottlob et al. 2001). 9 The kinase Akt has been the target of many therapeutic studies for its ability to link cellular metabolism to survival. 1.3.3 Inactivation of p53 Another mechanism by which cancer cells may attenuate their glycolytic phenotype is through the simple inactivation of p53. The tumour suppressor gene, p53, is often mutated in cancer cells preventing it from initiating the apoptotic cascade in response to DNA damage (Hollstein et al. 1999). Hence, p53 controls DNA repair, cell cycle progression, apoptosis, and senescence in healthy cells (Green and Chipuk 2006). The high frequency of both p53 mutations and aerobic glycolysis in cancer cells suggests that these two hallmarks of malignancy may be related. Two candidate proteins have been identified that may be responsible for linking p53 loss of function with the phenotype of aerobic glycolysis: the Synthesis of Cytochrome c Oxidase (SCO2) protein influences respiration and the Tp53 Induced Glycolysis and Apoptosis Regulator (TIGAR) exerts its effects on glycolysis. Matoba et al. (2006) discovered that the Synthesis of Cytochrome Oxidase (SCO2) gene might be the link between aerobic glycolysis and p53. SCO2 is necessary for formation of the COX holoenzyme in the mitochondria, which is required for proper functioning of the respiratory chain. Reduced expression of the SCO2 protein therefore ultimately leads to impaired respiration. The fact that SCO2 expression is p53-dependent, suggests that the loss of p53 function may be the critical factor responsible for glycolytic stimulation. SCO2 protein levels and hence respiratory rate have been shown to correlate 10 with p53 gene dosage. Furthermore, the resulting impaired mitochondrial respiratory chain may also stimulate Akt, which would lead to further glycolytic stimulation (Young and Anderson 2008). In a similar manner, Bensaad and colleagues (2006) identified the protein TIGAR to be expressed according to p53 gene dosage. This p53-inducible protein forces glucose through the pentose phosphate shunt, thereby negatively regulating glycolysis. By decreasing levels of fructose-2, 6-bisphosphate, TIGAR blocks glycolysis and leads to the generation of NADPH by the pentose phosphate way. The purpose of this shunt may be to direct glucose away from the production of energy so that it can be used to build molecules required for the synthesis of nucleic acids and other key components required to repair cell damage and ensure cell survival. This NADPH stimulates glutathione (GSH), an antioxidant that is involved in scavenging reactive oxygen species (ROS). In cells that are p53-deficient, TIGAR cannot exert its inhibitory effects on glycolysis. Under such circumstances, glycolysis is stimulated and the levels of ROS will increase in the cell due to the absence of GSH. As a result, the increase in cellular ROS may stimulate Akt by inhibiting PTEN, therefore further stimulating glycolysis. The paradox by which malignant cells derive most of their cellular energy from glycolysis rather than the more efficient pathway of mitochondrial respiration can be explained by a multitude of factors. Hypoxia selection, mitochondrial dysfunction, Akt activation and loss of p53 function may all be responsible for the altered metabolism of cancer cells. Periods of intermittent hypoxia in the tumour microenvironment may select 11 for cells that are more glycolytic that are able to survive when oxygen is not available. Defects in the mitochondrial respiratory chain, from mtDNA mutations or problems with organelle biogenesis, may also explain why cancer cells would prefer glycolysis as their primary energy source. Similarly, mutations in oncogenes and tumour suppressor genes may be responsible for this peculiar phenotype. For example, the simple activation of Akt or inactivation of p53 can explain the Warburg effect. While all of these represent explanations for aerobic glycolysis (as observed in Supplementary Figure 1), the precise source of this phenomenon remains unclear. A combination of mechanisms is likely responsible for the metabolic phenotype of cancer cells, however, the sequence by which the phenotype is selected for has yet to be elucidated. 1.4 Hypoxia and cellular metabolism In the previous section, I considered the possible reason why cancer cells appear committed to glycolysis, regardless of oxygen levels. However, hypoxia is an important element of tumour biology. Cancer cells in tumours proliferate rapidly and can outgrow the existing vasculature, leading to regional hypoxia. As discussed previously, this hypoxic exposure may lead to the selection of a glycolytic phenotype. Additionally, it triggers many metabolic and cellular responses in the tumour, including angiogenesis, glycolytic gene induction, and apoptotic resistance, all which are mediated by the hypoxia inducible factor-1 (HIF-1) transcription factor. 12 1.4.1 Hypoxia inducible factor-1 (HIF-1) transcription factor The hypoxia inducible factor-1 (HIF-1) is a heterodimeric transcription factor that functions as the master regulator of oxygen homeostasis. It is composed of an oxygen sensitive HIF-1α subunit and a constitutively expressed HIF-1β subunit. Under normoxic conditions, human HIF-1α is hydroxylated on two proline residues (402 and 564) allowing for the binding of the Von Hippel-Lindau (VHL) protein, which ubiquinates HIF-1α thereby targeting it for proteasomal degradation (Epstein et al., 2001; Ivan et al., 2001). Under hypoxic conditions, the dimerization of the HIF-1 subunits allows for their interaction with the co-activator p300 (CBP) to induce the expression of a variety of genes involved in oxygen delivery (erythropoiesis and angiogenesis) and survival during hypoxia (glucose uptake and glycolysis), all of which contain hypoxia response elements (HREs) in their promoters (Semenza 2007). 1.4.2 Angiogenesis Angiogenesis, the process of developing new blood vessels from the existing vasculature, is necessary to ensure all cells of a multicellular organism have a constant supply of oxygen (Hoeben et al. 2004). This process of blood vessel formation involves the replication of endothelial cells, partial degradation of the basement membrane and surrounding extracellular matrix, endothelial cell migration and formation of a tubular structure (Hoeben et al. 2004). This process is especially important in tumours, for without their own blood supply, they have limited access to nutrients and oxygen from the circulation and are termed avascular. Once this ‘angiogenic switch’ has occurred, the 13 tumours are able to grow as a result of the new blood vessels that have formed. Once this stage has been reached, the cancer cells can invade the blood vessel walls and spread to other regions of the body through metastasis. Therefore, by providing the cells of the tumour with access to nutrients and oxygen for growth, angiogenesis is a critical process in tumour development and cancer progression. Angiogenesis is controlled by both pro- and anti-angiogenic factors. The vascular endothelial growth factor (VEGF) is the primary pro-angiogenic factor, for it binds to its receptor (VEGFR) to initiate a signaling cascade that results in the activation of pathways involved in permeability, survival, migration, and proliferation (Hoeben et al. 2004). There are 7 members of the VEGF family (VEGFA-F and PIGF), and all share a homologous domain located in exons 1-5 (Hoeben et al. 2004). The VEGFA gene is located chromosomally at 6p12 and codes for a disulfide-linked homodimer that functions as a glycosylated mitogen. This VEGFA gene contains 8 exons, and is expressed in tissues of the adult lung, kidney, heart, and adrenal gland, and to a lesser extent in the liver, spleen and gastric mucosa (Neufeld et al. 1999; Hoeben et al. 2004). VEGFA gives rise to 7 different isoforms; 7 are splice variants, and 1 results from proteolytic cleavage. VEGFB mRNA is predominantly expressed in the myocardium, pancreas, and skeletal muscle and is composed of 7 exons that give rise to two splice variants. For the scope of this thesis, these are the only two members of the VEGF family that we will address. VEGF is the primary mediator of angiogenesis by playing an 14 important role in tumour vascularization and can be induced by hypoxic conditions, a process that is mediated by HIF-1. Tumour hypoxia occurs during tumour development and intermittently during growth when the cells have outgrown their existing vasculature and cannot access adequate oxygen from the circulation. During such periods, HIF-1 becomes active and is able to activate the transcription of its target genes. VEGF contains hypoxia response enhancer sequences in both its 5’ and 3’ domains and is coordinately upregulated under hypoxic conditions (Maxwell et al. 1997; Dachs and Tozer 2000). Similar regions are found in the erythropoietin (EPO) gene to increase the production of erythrocytes for oxygen delivery (Semenza and Wang 1992; Semenza 1994; Hoeben et al. 2004). Thus the hypoxia response, initiated by the HIF transcription factor, activates the transcription of a variety of target genes involved in survival during hypoxia, including VEGF, the primary moderator of angiogenesis. 1.4.3 Glucose uptake and glycolysis One of the most striking indications of the hypoxia response is the induction of genes involved in glucose metabolism in the cytoplasm. When oxygen is not available and mitochondrial pathways are compromised, glycolytic metabolism must be induced to provide the cell with energy (Guppy 2002). Most glucose transporters and glycolytic enzymes are transcriptionally regulated by HIF-1. In terms of glucose uptake, HREs have been identified in the promoters of the transporters GLUT1 and GLUT3 (Semenza et al. 1994; Ebert et al. 1995). Furthermore, Semenza et al. (1994) discovered that the 15 expression of aldolase A (ALDOa), phosphoglycerate kinase 1 (PGK1) and the muscle isoform of pyruvate kinase (PKm) increased following exposure to hypoxia or chemical hypoxia mimetics. Following this discovery, reporter constructs containing the promoter regions of ALDOa, enolase 1 (ENO1), phosphofructokinase L (PFKl) and PGK1 were activated in hypoxic cells, suggesting the presence of HREs (Firth et al. 1994; Semenza et al. 1994; Firth et al. 1995). Further evidence by Semenza et al. (1996) confirmed that activation of these glycolytic genes was HIF-1 mediated, as they were transcriptionally upregulated in non-hypoxic cells that were overexpressing HIF-1α. The ability of the transcription factor HIF-1 to regulate glucose uptake and glycolysis highlights the importance of glycolysis in the cellular response to hypoxia. 1.4.4 Apoptotic resistance The relationship between hypoxia and apoptosis is not well defined. While evidence exists for hypoxia-induced apoptosis, in some instances hypoxia can confer apoptotic resistance. The balance between these outcomes is controlled by HIF-1α and other regulatory networks that respond to the cell’s microenvironment. During periods of severe or prolonged hypoxia, necrosis or apoptosis generally occur to prevent the accumulation of mutations that accompany environmental stress (Greijer and van der Wall 2004). While there are both extrinsic (death receptor activated) and intrinsic (mitochondrial) pathways of programmed cell death, environmental stress and growth factor withdrawal trigger cell death using the latter of these two pathways. During intrinsic apoptosis, DNA damage activates the transcription factor p53, which 16 stimulates cytochrome c release from the mitochondria by activating the apoptotic proteins Bak and Bax (Wei et al. 2001). Following cytochrome c release and subsequent binding with the apoptotic protease activating factor (Apaf-1), caspase 9 is activated (Wei et al. 2001). Following this event, effector caspases and caspase substrates are cleaved and hallmarks of apoptosis are apparent, including DNA fragmentation, chromatin condensation, membrane blebbing, and formation of apoptotic bodies. A reduction in the proton pumping by the electron transport chain during hypoxic stress reduces ATP production and depolarizes the mitochondrial inner membrane. This reduction in mitochondrial ATP is associated with the activation of the proapoptotic proteins Bak and Bax, which stimulate cytochome c release from the mitochondria thereby initiating the apoptotic cascade (Saikumar et al. 1998). Similarly, hypoxia may induce apoptosis in a ROS-mediated process, which involves cleavage of caspase 9 independent of cytochrome c release (Kim and Park 2003). Kim and Park (2003) proposed that this pre-activation of caspase 9 secondarily facilitates cytochrome c release from the mitochondria by altering the mitochondrial membrane integrity. Furthermore, HIF may play a role in hypoxia-induced apoptosis by stabilizing the tumour suppressor gene p53, or by increasing the expression of the bcl-2 binding proteins, thereby inhibiting the apoptotic effects of the protein. Therefore, periods of severe hypoxia or anoxia can activate the intrinsic apoptotic pathway through multiple mechanisms. While it seems evident that a cell would undergo apoptosis during hypoxia due to either hypoxia-induced DNA damage or energy deprivation, what is more interesting is 17 the ability of some cancer cells to adapt to survive under such conditions. That is, when hypoxia is acute or mild, cells that are able to adapt metabolically to their new environment are able to evade the process of apoptosis. Perhaps cells that already express HIF-1α at high levels under normoxia, due to hypoxia-independent activation of the HIF1 pathway, have a survival advantage when exposed to hypoxia in their microenvironment. Hypoxia-independent HIF-1α protein accumulation can result from genetic alterations such as mutations in proto-oncogenes or tumour suppressor genes. For example, loss of VHL function can lead to HIF-1α stabilization under normoxia by allowing the protein to escape proteasomal degradation. Pancreatic cancer cells have been shown to overexpress HIF-1α protein under normoxic conditions, likely through activation of the PI3K signaling pathway for cellular survival (Akakura et al. 2001). Similar findings were shown in the prostate cancer cell lines, PC3, which express HIF-1α constitutively under normoxic conditions (Zhong et al. 1998). Furthermore, PC3 cells are androgen-independent, and thus represent a model of advanced stage prostate cancer. Expression of HIF-1α can be correlated to tumor grade whereby more aggressive cancers have greater responses to hypoxia (Hochachka et al. 2002). When cells that over-express HIF-1α under normoxia are deprived of oxygen and glucose, they show more resistance to apoptosis than do cancer cells that do not over-express HIF-1α under the same conditions (Akakura et al. 2001). It is evident that HIF-1α determines whether a cell will succumb to apoptosis or evade it in response to environmental hypoxia; however the exact mechanisms underlying this ability have yet to be resolved. Perhaps cells that over18 express HIF-1α independently of hypoxia are able to survive and adapt when they are exposed to hypoxia because the genes required for survival under hypoxic conditions are already being transcribed. 1.5 Fatty acid synthesis and cancer In addition to glycolysis, the TCA cycle, and the electron transport chain, fatty acid synthesis is a crucial process to cancer metabolism. In lieu of the TCA cycle, cells can shunt glucose to the pentose phosphate pathway (PPP), which plays a role in the anabolism of fatty acids by producing reducing equivalents, and nucleic acids through the production of their precursor, ribose 5-phosphate. De novo fatty acid synthesis is a component of cellular anabolism and can be outlined as in Equation 1. 2: Eq 1.2: citrate ACL acetyl-CoA malonyl-CoA ACC fatty acids (i.e. palmitate) FAS The overall reaction for fatty acid synthesis from acetyl CoA is shown in Equation 1.3: Eq 1.3: acetyl-CoA + 7 malonyl-CoA +14 NADPH+ +14H+ palmitate + 7CO2 + 8 CoA +14 NAD+ + 6 H20 Citrate from the TCA cycle can be exported into the cytosol where it is converted into acetyl-CoA by the enzyme ATP citrate lyase (ACL). Acetyl-CoA carboxylase (ACC) then converts the acetyl-CoA into malonyl-CoA. The formation of malonyl-CoA is the rate-limiting step of this process and can be controlled both allosterically and through 19 covalent modification. Its allosteric regulators include citrate, isocitrate, and αketoglutarate. Malonyl-CoA is then converted into palmitate by the enzyme fatty acid synthase (FAS). This 16-carbon palmitate can be modified by chain elongation or desaturation to produce other fatty acids via pathways in the mitochondria and endoplasmic reticulum. However, free fatty acids do not accumulate in the cell under normal circumstances and are rather converted into triacylglycerols for storage, or phospholipids for cell membrane biosynthesis. While aerobic glycolysis has been studied for decades, a more recently discovered metabolic alteration in cancer cells is the up-regulation of the pathway of de novo fatty acids, both at the mRNA and protein level. The link between fatty acid synthesis and cancer was first discovered when an oncogene-marker, OA-519, was isolated from the tumours of breast cancer patients and was later identified as the 270-kDa polypeptide, fatty acid synthase (FAS) (Kuhajda et al. 1994). FAS is the final enzyme in the endogenous fatty acid synthesis pathway that is involved in metabolizing glucose to fatty acids. Since it was identified in breast cancer, overexpression of FAS protein has been documented in colorectal, ovarian, endometrial, and prostate cancers (Rashid et al. 1997; Hardman et al. 1995; Pizer et al. 1998; Shurbaji et al. 1992). The original proposal was that this pathway was upregulated to support membrane biosynthesis in the cancer cells as they undergo rapid cell division; however, there is a lack of evidence to support this. Membrane biosynthesis seems an unlikely reason for upregulating fatty acid synthesis because, while all cancer cells rapidly grow and divide, only certain types have an 20 upregulation of this pathway. Evidence indicates that FAS is regulated both transcriptionally and posttranscriptionally (Rossi et al. 2003). FAS inhibitors have been associated with apoptosis in cancer cells therefore suggesting that the pathway of fatty acid synthesis is a potential target for cancer therapy (Kuhajda 2000). Furthermore, there is a correlation between the overexpression of FAS and therapeutic resistance in cancer, but this may merely be attributed to one of the other metabolic abnormalities that are common in cancer (Swinnen et al. 2000). 1.5.1 Sterol regulatory element-binding protein (SREBP) transcription factors Sterol regulatory element-binding protein transcription factors (SREBPs) are the master controllers of lipid metabolism. Among these basic helix-loop helix (bHLH) leucine zipper transcription factors there are three isoforms that are produced from two different genes. SREBP-1a and SREBP-1c are produced from the same gene (SREBF-1) on chromosome 17 through alternative splicing in the first exon, and therefore only differ in their NH2- terminal transactivation domains (Hua et al., 1995). SREBP-2 is produced by a different gene (SREBF-2) on chromosome 22 but shares 47% homology with the SREBP-1 protein (Miserez et al., 1997; Eberlé et al., 2004). SREBP precursor proteins contain three structural domains: a) an NH2-domain for DNA binding and dimerization, b) hydrophobic transmembrane spanning elements, and c) a COOH-terminal domain for regulation (Eberlé et al., 2004; Ettinger et al., 2004). Both the NH2-domain and the COOH-terminal components extend into the cytosol, and the transmembrane portion of 21 the protein anchors it in the ER membrane (Brown and Goldstein 1997). An overview of the SREBP axis is depicted in Figure 1. Figure 1. Possible ways that low oxygen may influence the SREBP axis via HIF-1α The influence of low oxygen on the SREBP axis may be mediate by the transcription factor HIF-1α. Directly, HIF-1α may bind to HREs in the promoters of lipogenic genes. Alternatively, HIF-1 may be indirectly involved in de novo fatty acid synthesis by exerting its effects on the regulation of SREBP transcription factors. (Figure adapted from Eberlé et al., 2004). SREBPs are synthesized as precursor proteins that are bound by the endoplasmic reticulum and stabilized by sterol levels within the cell. Here they associate with the SREBP cleavage activating protein (SCAP), and this complex is retained in the ER membrane by Insig proteins. When sterol levels are low or insulin is present, SCAP is released from Insig, and is able to transport SREBP to the Golgi apparatus. Here it undergoes two cleavage reactions, the first by a site-1 protease to cleave the ER luminal component, and the second by a site-2 protease, which releases the NH2-domain. The NH2-domain becomes the active version of the protein containing the bHLH-LZ domain. This component is then be translocated to the nucleus (nSREBP) where it dimerizes to 22 activate the transcription of its target genes, which contain sterol regulatory elements (SRE) or E-box sequences in their promoter regions. 1.5.2 Androgens and lipogenesis Androgens have been known to play an important role in the normal and cancerous development of the prostate for many years. The survival of prostate cells relies on the androgen receptor, which, upon nuclear localization in the presence of androgens, activates the transcription of its target genes involved in cell growth (Debes and Tindall 2004). As a result, androgen deprivation therapy has been a common method of treatment for metastatic prostate cancer; however, it does not prevent the progression towards androgen-independence (Shaw et al. 2007). Interestingly, studies have demonstrated that even androgen-independent prostate cancers maintain androgenreceptor (AR) activity (Chen 2004). AR gene amplification (Visakorpi et al. 1995), AR mutations (Taplin et al. 1995), or the activation of the AR by non-androgen ligands (Culig et al. 1994; Lee et al. 2003) may explain the active androgen signaling that occurs in refractory prostate cancer. These alterations are not commonly detected in patients with refractory disease (Chen et al. 2004). Alternatively, AR activity may persist following androgen ablation therapy due to the actual presence of androgens. Mohler et al. (2004) detected levels of dihydrotestosterone sufficient to activate the AR in tissues of recurrent prostate cancer. Androgen-independence is associated with a decrease in median survival and poor medical prognosis (Petrylak et al. 2004; Shamash et al. 2005). 23 The molecular mechanisms underlying the survival advantage these cancer cells have likely involves androgen signaling. The interplay between hormonal regulation and metabolism has yet to be uncovered. Not only are they involved in cellular growth and survival, but androgens have also been shown to cause an accumulation of neutral lipids in the androgen-sensitive LNCaP cell line (Swinnen et al. 1996a). Swinnen et al. (1997) demonstrated that the synthetic androgen, R1881, was able to induce an upregulation of FAS mRNA and enzyme levels as well as an accumulation of lipids in LNCaP cells. The induction of fatty acid synthesis LNCaP cells in response to androgens is mediated by SREBP transcription factors (Swinnen et al. 1997). This was supported by Heemers et al. (2001), who discovered that androgens increase the abundance of nSREBPs in two androgen independent lines, LNCaP and MDA-PCa-2a. It has been proposed that this androgenmediated increase in fatty acid synthesis may occur in response to hypoxia (Park et al. 2006). 1.5.3 Hypoxia and fatty acid synthesis While androgens seem to induce the upregulation of the pathway of fatty acid synthesis, it has yet to be determined how this fits in with a cell’s overall metabolism. Hochachka et al. (2002) suggested that the fatty acid synthesis pathway might be upregulated in prostate cancer to maintain cellular redox balance when oxygen is lacking. During glycolysis and the TCA cycle, reducing equivalents are produced in the form of NADH and FADH2, which are shuttled to the inner membrane of the mitochondria. In the 24 mitochondria, the energy from their oxidation is used to pump protons into the intermembrane space, and the electrons are eventually transferred to oxygen, the final electron acceptor. There are two possible ways in which a cell can maintain redox balance under hypoxic conditions when reducing equivalents cannot be oxidized via mitochondrial pathways: 1) using LDH to catalyze the formation lactate, or 2) synthesizing fatty acids. Thus the pathway of fatty acid synthesis may be upregulated as a means to maintain redox balance within the cell during periods of hypoxia, when the respiratory chain is unable to do so. The process of lactate formation from pyruvate occurs in the cytoplasm and represents one mechanism by which a cell may maintain redox balance in the absence of oxygen. For every molecule of glucose entering glycolysis, 2 molecules of pyruvate are generated. Rather than forming acetyl-CoA, a process catalyzed by PDH, under anaerobic conditions, the two molecules of pyruvate can be reduced to lactate by LDH. This process oxidizes the 2 NADHs that are generated in glycolysis during the conversion of glyceraldehyde phosphate into 1,3-diphosphoglycerate. Therefore by oxidizing the NADHs produced in glycolysis, the process of lactate production serves as a way which the cell can maintain redox balance when its mitochondrial pathways are compromised. Alternatively, the pathway of fatty acid synthesis may serve to maintain redox balance in the hypoxic cell. In addition to the 2 NADHs formed in glycolysis, many reducing equivalents are produced during the TCA as well. The formation of acetyl-CoA from pyruvate, α-ketoglutarate from isocitrate, succinate from α-ketoglutarate, and 25 oxaloacetate from malate all produce NADH. Additionally, FADH2 is produced during the oxidation of succinate into fumarate. Thus, per molecule of glucose that enters the glycolytic pathway and the TCA cycle, 10 NADH and 2 FADH2 are produced. In the absence of oxygen, this results in a major redox imbalance, for, without the final electron acceptor in the electron transport chain, the electrons from these carriers transport will have nowhere to go and the cell will maintain in a reduced state. For every seven molecules of glucose 6-phosphate converted into ribulose 5-phosphate via the PPP, a sufficient amount of NADPH is formed to produce 1 molecule of palmitate. Recall, 14 NADPH are required for the formation of palmitate via the pathway de novo fatty acid synthesis. It therefore seems unlikely that the LDH is responsible for maintaining redox balance in the cell alone, for it only oxidizes 2 NADHs per molecule of lactate produced. The pathway of fatty acid synthesis may play a larger role, for the reducing power of 14 NADHs is required for the formation of one palmitate. This pathway requires much more reducing power than the process of lactate production, and may serve to maintain the cell in a more favorable oxidized state when oxygen is limiting (Hochachka et al. 2002). The precise molecular mechanisms that drive the upregulation of the de novo fatty acid synthesis pathway in cancer cells are not known. The relationship between hypoxia and androgen signaling pathways may be of importance. The ability of the AR to respond to such low levels of androgens following androgen ablation therapy may in part be controlled by the HIF-1 mediated hypoxia signaling pathway. Park et al. (2006) showed that hypoxia increased AR-ARE binding, expression of AR controlled genes, and 26 translocation of AR to the nucleus. This suggests that, in order to remain redox balance in the cell, that hypoxia signaling may indirectly lead to the activation of the fatty acid synthesis pathway through an AR signaling mechanism. However, whether there is a direct relationship between hypoxia and fatty acid synthesis that is androgen-independent has yet to be determined. 1.6 Objectives My thesis focuses on elucidating the reasons for and molecular mechanisms that enable prostate cancer cells to survive and progress under hypoxic conditions. This involves a precise characterization of cellular metabolism and the influence of hypoxia. While cultured cells are commonly used as models to study cancer, metabolic differences between cell lines and how they behave in vitro compared to in vivo must also be considered. The objectives of this thesis are outlined below. Objective 1: Determine the origin of the metabolic phenotype of prostate cancer cells. Cancer cells have an unusual metabolism, favoring glycolysis over oxidative phosphorylation for ATP production, despite reduced ATP yields and independent of oxygen levels. The reasons for this pattern remain unclear, but may be a result of mitochondrial dysfunction. Researchers often attribute the phenotype of aerobic glycolysis to all cancer cells without proper experimental evaluation. Thus, my first objective is to establish the metabolic phenotype of 3 human prostate cancer cell lines: LNCaP, DU145, and PC3. I hope to determine which energy pathway is predominate for meeting cellular ATP demands, and looking further into the foundations of their 27 metabolism. I hypothesize that each of these cell lines will exhibit a similar metabolic phenotype in terms of the enzymes of energy metabolism and relative reliance on glycolysis versus oxidative phosphorylation for energy. Objective 2: Determine the influence of passage and selection on the metabolic phenotype of prostate cancer cells. It is generally accepted that cells cultured for many generations in vitro can evolve to become different from the original cells. Although LNCaP cells are perhaps the most common cell line used in studies of prostate cancer, however very little is known about the metabolic phenotype of the LNCaP line and its numerous derived lines. As well, these cells are commonly used to study tumour properties in vivo through xenograft approaches. Thus, my second objective is to explore the influence of growth context (passage number, in vitro versus in vivo growth) on the metabolic phenotype of LNCaP-derived lines. I hypothesize that the cell line will show changes in metabolic phenotype in relation to both passage number and growth context. Objective 3: Determine the relationship between hypoxia and fatty acid synthesis. Many cancers, including prostate cancer, have unusually high rates of fatty acid synthesis. This ability is associated with and contributes to tumour progression. It may serve to supply phospholipids to membranes or maintain redox balance in the cell during hypoxia. Whether this pathway is also responsive to hypoxia is unclear. Thus, my third objective is to explore the influence of oxygen levels on the expression of genes in the SREBP axis and fatty acid synthesis pathway, and to determine whether or not hypoxia influences the pathway at a transcriptional level. Furthermore, I set out to 28 quantify TG production in prostate cancer cells following different low oxygen treatments to determine if the previously described upregulation in FAS mRNA and enzyme levels follows through to the accumulation of lipids in these cells. I hypothesize that the pathways of fatty acid synthesis – from the SREBP axis to TG biosynthesis – is neither hypoxia sensitive nor involved in hypoxic redox balance. 29 Chapter 2: Hypoxia and the metabolic phenotype of prostate cancer cells 2.1 Introduction Otto Warburg was the first to reveal that, even when normoxic, many cancers rely on glycolysis rather than oxidative phosphorylation as a primary means of ATP synthesis (Warburg 1930). This preferential use of glycolytic metabolism may arise from growth and selection in an hypoxic microenvironment, and may lead to a more aggressive, less responsive cancer (Vaupel et al. 2001; Ghafar et al. 2003; Acs et al. 2004). The underlying explanations for aerobic glycolysis and its precise relationship with hypoxia, however, are not completely understood. The ability to survive when oxygen is limiting is controlled in part by hypoxia-inducible factor (HIF), the transcription factor of an oxygen-sensitive pathway that regulates genes involved in anaerobic metabolism, angiogenesis, growth factor signaling and metastasis (Semenza et al. 1996; Coffey et al. 2005; Carmeliet et al. 1998). If, as suggested, the glycolytic phenotype is due to growth in hypoxia, it is unclear why this phenotype persists following vascularization (reviewed by Costello and Franklin 2005). It is also possible that the glycolytic phenotype is a compensatory response to a reduction in mitochondrial content or function (Warburg 1930). Glycolysis serves many roles in anabolic metabolism (e.g., ribose and NADPH synthesis), but the main role of glycolysis in cancer cells is thought to be ATP production. The NADH produced in glycolysis is normally oxidized by mitochondria via 30 redox shuttles, but under hypoxic conditions, the NADH must be oxidized by other routes. When mitochondrial metabolism is insufficient, most mammalian cells produce lactate to oxidize NADH. However it has been suggested that cancer cells may also rely on fatty acid synthesis to balance redox (Hochachka et al. 2002). Transhydrogenation reactions convert cytoplasmic NADH to NADPH, which is used by fatty acid synthase (FAS). Though prostate and many other cancers accumulate high intracellular levels of lipid through de novo fatty acid synthesis (Medes et al. 1953; Swinnen et al. 1996b; Moreau et al. 2006; Ookhtens et al. 1984), this capacity is more often linked to the need to support membrane biosynthesis in the rapidly dividing cells (reviewed by Hochachka et al. 2002; Swinnen et al. 2003). The role of fatty acid synthesis in cancer cells remains unestablished, though it is clearly important. Many cancer cells show an up-regulation of FAS mRNA and protein, as well as a greater expression of other members of the pathway of de novo fatty acid synthesis (Shurbaji et al. 1996; Swinnen et al. 2002; Welsh et al. 2001; Rossi et al. 2003). When the expression of acetyl CoA carboxylase (ACC) or FAS is blocked, prostate cancer cells show reduced proliferation rates and ultimately apoptotic death, suggesting that these enzymes may be potential targets for anti-cancer therapy (Pizer et al. 1996; Brusselmans et al. 2005). It is not yet clear if these enzymes of lipogenesis, like those of glycolysis, are responsive to hypoxia. The profile of enzymes that control lipid homeostasis (e.g., ACC1, FAS) is regulated in large part by sterol regulatory element binding protein (SREBP) transcription factors (Eberlé et al. 2004). 31 In the present study, we assess how the enzymes of intermediary metabolism (mitochondrial, glycolytic, and lipogenic) and their genetic regulators differ among prostate cancer lines (LNCaP, DU145, and PC3). We also reconcile the relationship between the metabolic profile and line-specific responses to hypoxia. Focusing on LNCaP and derived lines, we assess how passage/clonal selection affects the metabolic phenotype both in vitro (in culture) and in vivo (in xenografts). Collectively these studies determine the relationship between aerobic glycolysis, tumour hypoxia, and lipid metabolism in prostate cancer cells with the goal of gaining a better understanding of the origins of the aerobic glycolytic phenotype of prostate and other cancer cells. 2.2 Methods 2.2.1 Cell culture and treatments LNCaP, PC3, and DU145 prostate cancer cell lines were obt ained from the American Type Culture Collection (ATCC, Manassas, VA). LNCaP was derived in 1977 from a needle aspirate biopsy of a supraclavicular lymph node from a 50-year-old white male with stage D prostatic cancer (Horoszewicz et al. 1980). LNCaP cells express a mutated form of the androgen receptor, which leads to some alterations in androgenic responses (Veldscholte et al. 1992). However, these cells produce the human prostatic secretory markers prostate specific antigen (PSA) and prostatic acid phosphatase (PAP) both in vitro and when xenografted into nude mice (Chung et al. 1992). LNCaP cells are responsive to androgens in terms of growth 32 however they exhibit aberrant responses to antiandrogens (Wilding et al. 1989). The PC3 line was isolated from a bone metastasis of a 62-year-old Caucasian diagnosed as having undifferentiated grade IV adenocarcinoma of the prostate. PC3 will grow in soft agar, in suspension culture and will form tumours in nude mice. It does not respond to androgens or various growth factors (Kaign et al. 1979; Kaign et al. 1980). DU145 cells were derived in 1975 from a brain metastasis of prostatic cancer in a 69-year-old white male. The original metastasis was identified as moderately differentiated with foci of poorly differentiated cells. DU145 cells grow very rapidly from low densities. They are neither hormone dependant nor hormone sensitive in terms of growth (Kaign et al. 1979; Mickey et al. 1980). LNCaP-luc were a gift from Dr. Mark Day (University of Michigan). They were derived from LNCaP cells that had been transfected with luciferase constructs and clonally selected. High passage LNCaP cells (HP-LNCaP) were derived by continuous in vitro culture of LNCaP cells through approximately 50 passages. To mitigate potential effects of differences in culture media, we grew all cells in Dulbucco’s Modified Eagle Medium (DMEM: high glucose with glutamine, Gibco, Burlington, ON) supplemented with 10% fetal bovine serum (FBS, Gibco, Burlington, ON) and 1% penicillinstreptomycin (Gibco, Burlington, ON), with 5% CO2 and 95% humidity at 37˚C. Acidic medium was obtained using the standard DMEM mixture replacing 24 mM NaHCO3 with a mixture of 0.94 mM NaHCO3 and 22 mM NaCl. 33 Hypoxia treatments (2% O2) were performed either in a modular incubator chamber (Billups-Rothenberg Inc., San Diego, CA) flushed with 2% O2, 5% CO2 and balance nitrogen, or in an incubator with 5% CO2 and 2% O2 at 37˚C. Anoxia treatments (0% O2) were performed in a chamber flushed with 5% CO2 and balance nitrogen. For treatments with azide, a chemical anoxia mimetic, a final concentration of 5 mM was added to the plates. For sodium dichloroacetate (DCA) studies, cells were treated with 0.5 mM of the drug. For 2,4-dinitrophenol (DNP) studies, cells were exposed to a final concentration of 0.1 µM of DNP prior to measurements. 2.2.2 Oxygen consumption and lactate production measurements Respiration was measured in cell suspensions using Clarke-type electrodes fitted into water-jacketed vessels (Gilson, Middleton, WI). Cells were trypsinized, centrifuged (3 min at 200 g) and resuspended in media that was air-saturated at 37oC. To assess the impact of oxygen concentration on lactate production, cells were exposed to control (21% O2, 5% CO2, balance N2), hypoxia (2% O2, 5% CO2, balance N2), anoxia (5% CO2, balance N2), or azide (5 mM) for 12 hours. Cells were collected from the supernatant and the plate, and aliquots were centrifuged (12,000 g for 1 min). The supernatant was analyzed for lactate concentration using the hydrazine-sink method (see Moyes et al. 1997). In brief, media and lactate standards were incubated in 96-well plates in the presence of NAD+ (2 mM), lactate dehydrogenase (1 U/ml) and a glycinehydrazine buffer (pH 9.2). Lactate production rates were expressed relative to the cellular protein collected from the medium and adherent cells. 34 2.2.3 Enzyme assays Cells were trypisinized and then centrifuged (3 min at 200 g). Pellets were washed with phosphate-buffered saline (PBS, 0.731 M NaCl, 0.037 mM KCl, 0.022 mM Na2HPO4⋅7H2O, 0.087 mM K2HPO4, pH 7.4), flash frozen in liquid nitrogen and stored at -80ºC prior to enzyme analyses. The cell pellets were resuspended in enzyme extraction buffer (20 mM HEPES, pH 7.4, 0.1% Triton X-100, 1 mM EDTA) prior to spectrophotometric assays. The activities of mitochondrial cytochrome oxidase (COX) and citrate synthase (CS) were determined as previously described (Moscow et al. 1988). For lactate dehydrogenase (LDH), pyruvate kinase (PK), and glyceraldehyde 3-phosphate dehydrogenase (G3PDH) activity, the absorbance of NADH (340 nm) was measured over 3 minutes. The assay buffers were as follows: LDH (50 mM HEPES pH 7.4, 0.2 mM NADH, and 2 mM pyruvate), PK (50 mM HEPES pH 7.4, 0.1 M KCl, 10 mM MgCl2, 0.2 mM NADH, 5 mM phosphophenolpyruvate, 5 mM ADP pH 6.8, 10 µM fructose-1, 6-bisphosphate, and 10 U/ml LDH), and G3PDH (40 mM bicine, 0.8 M sodium acetate, 0.8 mM EDTA, 25 mM sodium arsenate, 0.5 mM NAD+, and 1 mM glyceraldehyde 3phosphate). Hexokinase (HK) and phosphoglucoisomerase (PGI) assays were linked to a glucose 6-phosphate dehydrogenase (G6PDH) catalyzed reaction. The buffers for these assays were as follows: HK (50 mM HEPES pH 7.4, 5 mM MgCl2, 2 mM NAD+, 0.5 mM NADP+, 1 mM ATP, 5 mM dithiothreitol, 5 mM glucose, 10 U/ml glucose 6phopshate dehydrogenase), and phosphoglucoisomerase (50 mM Tris pH 8.1, 0.5 mM NADP+, 5 mM dithiothreitol, 0.5 mM fructose 6-phosphate, and 10 U/ml glucose 635 phopshate dehydrogenase. All enzyme analyses were normalized to the concentration of protein in the samples. 2.2.4 RNA extraction and real-time PCR Cells were homogenized in buffer RLT using a 21-gauge needle and RNA was extracted using the RNeasy extraction kit (Qiagen, Mississauga, ON). Complimentary DNA was synthesized using AMV RT (Promega, Madison, WI), oligo (dT) primers, and random hexamers as per manufacturer’s instructions. Real-time PCR was performed using 50 ng of cDNA, 0.58 µM of the appropriate primers (Table 1), 12.5 µl of SYBR green (Qiagen, Mississauga, ON) and 3.5 µl of water. An Applied Biosystems 7500 realtime PCR system (ABI, Foster City, CA) was used under the following conditions: a 95ºC denaturation phase for 15 minutes followed by 40 cycles consisting of 15 seconds at 95ºC, 30 seconds at the optimal annealing temperature and 36 seconds at 72ºC. All primers were human-specific and were tested on mouse tissue to ensure no amplification would occur due to residual mouse tissue from xenografts. Primers were designed to flank intron-exon boundaries whenever possible to avoid amplification of genomic DNA. All expression levels are relative to the expression of the housekeeping gene TATAbinding protein (TBP). 36 Table 1. Real-time PCR human specific primers (5’-3’) Gene (Accession No.) Forward primer Reverse Primer TBP (NM003194) cagtgacccagcagcatcact aggccaagccctgagcgtaa HIF-1α1 (NM001530) ctagccgaggaagaactatgaacat ctgaggttggttactgttggtatca VEGF65 (NM001025366) ccctgatgagatcgagtacatctt agcaaggcccacagggattt VEGF212 (NM001025367) ccctgatgagatcgagtacatctt gcctcggcttgtcacattt SREBP-1a (NM004176) aggcggctttggagcag agcatgtcttgtcacattt SREBP-1c (NM001005291) gccatggattgcacttt caagagaggagctcaatg SREBP-2 (NM004599) cccctgacttccctgctgca gcgcgagtgtggccggatc SCAP (NM012235) tgctcaccgtggggatgt cactgctgatgacacaggaggt FAS (NM004104) caagcaggcacacacgatgg ggtctcggctcagggcctcc ACC1 (NM001093) ctgacgaggactctgttgc ggtggagtcccgacatgct HKII (NM000189) acggagctcaaccatgaccaa ccatctggagtggacctca LDHa (NM005566) tggcctgtgccatcagtatct gccgtgataatgaccagcttg PKm (NM002654, NM182470, caccgcaagctgtttgaa tgccagactccgtcagaact ctggctgctgtctacaaggct cctcctcactctggcctcc PGC-1α (NM013261) caggtatgacagctacgaggaa tgcctctgcctctcccttt NRF-2α (NM002040) ttccagcatcagtgcaatct ctgaaatcctcggcgctct COXIV2 (XM008055) cctcctggagcagcctctc tcagcaaagctctccttgaactt COXI3 (NM536845) ttcgccgaccgttgactattctct aagattattacaaatgcatgggc CS (NM004077, NM198324) gcctgtacctcaccatccca tttgccaacttccttctgca p53 ctgctcagatagcgatggtctg ttgtagtggatggtggtacagtca SCO2 cttcactcactgccctgaca cggtcagacccaacagctt NM182471) ALDOa (NM000034, NM184041, NM184043) 1 Kim et al. (2005); 2 Stump et al. (2003); 3 Masayesva et al. (2006) 37 2.2.5 Intracellular ATP levels After growing cells to 80% confluency, the medium was replaced and cells were exposed to control, acidic (pH 6.2), hypoxic, or acidic and hypoxic conditions for 72 hours. Cellular ATP levels were determined in acid extracts of cells. After treatment, the supernatant was collected and pooled with trypsinized cells. After removing 10% of the cells for protein determination, the remaining cells were sedimented (5 min at 200 g) and the pellets were acidified (0.5 ml of 3% perchloric acid). After centrifugation, 400 µl of the supernatant was neutralized with 50 µl saturated Tris base, 50 µl 2M KCl, and 150 µl 2 M KOH with trace amounts of phenol red as a pH indicator. Extracts were analyzed for ATP using a luciferin-luciferase assay mixture (Sigma) on an LMax luminometer (Molecular Devices, Sunnyvale, CA). The intracellular ATP levels were then normalized to the protein concentration in each sample. 2.2.6 Cardiolipin content (NAO staining) Mitochondrial content was determined by staining the cells with nonyl acridine orange (NAO) (AnaSpec, San Jose, CA), a dye that quantifies mitochondrial mass by binding to cardiolipin in mitochondria, regardless of their energetic state (Dement et al. 2007). In brief, cells were grown in clear medium, and were treated with 100 nM NAO for 30 min. Following treatment, cells were washed, trypsinized with clear trypsin, centrifuged for 5 minutes at 500g, and resuspended in PBS. 38 2.2.7 Xenografts in SCID mice For sub-renal capsule grafting of LNCaP cells, 1-5 x 105 cells were embedded in 50 µl rat tail collagen as described previously (Hayward et al. 1999). After an overnight incubation at 37oC, the collagen gels were grafted under the kidney capsule of testosterone-supplemented, castrated adult male severe combined immunodeficient (SCID) mice (Harlan, Indianapolis, IN). LNCaP-luc tumours were generated by intrafemoral injections of twenty five thousand cells into adult male SCID mice. Tumours formed from outgrowths from the injection sites in the femur, into the surrounding leg muscle. After 28 days, all mice were sacrificed and tumours harvested and snap-frozen in liquid nitrogen. 2.2.8 Triglyceride extraction and quantification Lipids were extracted from prostate cancer cells using a modification of the Folch method (Folch et al. 1957). Briefly, cell pellets were dissolved in chloroform: methanol (2:1) and were centrifuged for 10 minutes at 3000 g. The resulting mixture was then filtered, and 0.25% KCl was added to remove the water-soluble compounds. Following separation of the two phases and removal of the aqueous phase by vacuum, samples were evaporated under nitrogen gas at 60ºC and resuspended in isopropanol. The resulting lipids were then quantified using the TRIGS kit (Randox, Muissisauga, ON). This kit uses a colorimetric method to quantify lipids following their enzymatic hydrolysis with lipases. 39 2.2.9 Statistical analyses Analysis of variance (ANOVA) tests were used to determine statistical significance. First, each treatment was tested for both normality using the Shapiro-Wilk test and for equal variance using the O’Brien test. If the results from both of these tests were not statistically significant (p<0.05) then a one-way ANOVA was performed followed by a Tukey HSD test. If the data were not normal or equally distributed, then the non-parametric Wilcoxon test was used. For dichloroacetate studies, a dependent Student’s t-test was used to determine if the effects of the drug were significant following treatment. All tests were performed using JMP statistical software. For our experiments, any significantly different values have a p value of less than 0.05. 2.3 Results 2.3.1 The metabolic phenotype differs between cell lines To determine metabolic differences between prostate cancer cell lines, we evaluated rates of oxygen consumption and lactate production, and levels of ATP. We also explored how hypoxia and low pH influenced their respective metabolic patterns. The metabolic phenotype of LNCaP cells differed from that of DU145 and PC3 cells; LNCaP cells had a significantly greater oxygen consumption rate (Figure 2A), as well as a significantly lower rate of lactate production (Figure 2B). The relative importance of OXPHOS and glycolysis can be estimated from these data, assuming 1 nmol O2 consumed equates to 5 nmol ATP produced, and 1 nmol lactate produced 40 equates to 1 nmol ATP produced. With these assumptions, OXPHOS contributed 88% of ATP demands in LNCaP cells, but only 56% in PC3 and 47% in DU145 cells. Figure 2. Metabolism of LNCaP, PC3, and DU145 cells Basal metabolic measurements for prostate cancer cells in terms of A) O2 consumption and B) lactate production. Bars are means (+SEM) with different letters denoting significantly different values between cell lines according to ANOVA and Tukey tests (n=5). The three cell lines also differed in their response to oxygen supply and OXPHOS inhibition (Figure 3). LNCaP cells were most affected, increasing their lactate production rate nearly 3-fold under hypoxia and about 4-fold with either anoxia or azide treatment. The PC3 cells also showed an increase in lactate production with these treatments, though the maximal stimulation was only about 2-fold. DU145 cells significantly increased their production of lactate following treatment with anoxia and azide only. The greater sensitivity of LNCaP cells to OXPHOS limitations was also reflected in ATP levels (Figure 4). In addition to low oxygen treatment, I included an acidic treatment. In cells exposed to hypoxia, here is both reduced oxygen availability and an acidosis that arises from the Pasteur effect (elevated rates of lactate production). LNCaP cells had 4-fold 41 higher ATP levels than DU145 and PC3 cells under normoxic conditions, and responded much more dramatically to low oxygen treatments (Figure 4). When exposed to hypoxia, ATP levels declined by 50% in LNCaP cells, but were not affected in either PC3 or DU145 cells. Figure 3. Lactate production. Cells were exposed to normoxia, hypoxia, anoxia, or azide for 12 hours. Bars are means (+SEM) with different letters denoting significantly different values within each cell line according to ANOVA and Tukey tests (n=5). 42 Figure 4. ATP levels following exposure to low pH and hypoxia Cells were exposed to low pH (6.2), hypoxia (2% O2), or the combination of low pH and hypoxia for 72 hours. Bars are means (+SEM) with different letters denoting significantly different values within each cell line according to ANOVA and Tukey tests (n=5). The ability of these cells to respond to dichloroacetate (DCA) was also assessed. This inhibitor of pyruvate dehydrogenase kinase stimulates pyruvate dehydrogenase (PDH), consequently glucose oxidation (Bonnet et al. 2007). DCA increased the oxygen consumption rate in LNCaP cells, but had no effect on DU145 or PC3 respiration rates (Figure 5A). Moreover, DCA did not significantly influence the lactate production rates in any of the cell lines evaluated (Figure 5B). Collectively, these studies suggest that LNCaP cells have normal mitochondrial metabolism but both the PC3 and DU145 cells suffer some degree of mitochondrial impairment that accompanies glycolytic stimulation. 43 Figure 5. Metabolism of LNCaP, DU145, and PC3 cells following treatment with dichloroacetate (DCA) A) O2 consumption, and B) lactate production. Bars represent means (+SEM) and are scaled to the control for each cell lines. * Indicates significant difference according to a Student’s t-test (n=6). 2.3.2 DU145 and PC3 cells have reduced mitochondrial enzyme activity but not mitochondrial gene expression Next, the relative activities of selected marker enzymes of glycolysis and oxidative metabolism were assessed (Figure 6). Although there were no consistent enzymatic differences in the glycolytic pathways in the three cell lines, DU145 and PC3 cells possessed less than half the activities of the mitochondrial enzymes COX and CS. 44 Figure 6. Glycolytic and mitochondrial enzyme activities in DU145 and PC3 cells Bars are means (+SEM) with different letters denoting significantly different values for each enzyme assayed according to ANOVA and Tukey tests (n=6). All enzyme levels are expressed relative to LNCaP means: PK 4.3 ± 0.12, LDH 2.9 ± 0.2, PGI 2.7 ± 0.1, G3PDH 1.2 ± 0.03, HK 0.1 ± 0.007, COX 0.013 ± 0.001, CS 0.386 ± 0.015 enzyme units (nmoles/min/mg protein). Transcript abundance was then explored to determine if there were differences in the mRNA levels of metabolic genes and their regulators (Figure 7). There were pronounced differences in the expression of genes linked to the hypoxic response (Figure 7A). PC3 cells showed elevated mRNA levels of a broad suite of hypoxia-related genes including HIF-1α (30-fold), two VEGF isoforms (30-fold), and each glycolytic gene we studied (5- to 10-fold). DU145 had intermediate transcript abundance, showing similar elevations in HIF-1α and VEGF transcripts, but without the elevations in the expression of glycolytic enzymes. There were also differences in the transcript levels of genes linked to mitochondrial metabolism (Figure 7B). Despite lower mitochondrial flux (Figure 2) and lower mitochondrial enzyme activities (Figure 6), both DU145 and PC3 cells showed an apparent stimulation of multiple mitochondrial enzymes (Figure 7B). DU145 cells 45 possessed more abundant transcripts for COXIV, COXI, CS, and the COX assembly factor SCO2, whereas PC3 cells had high NRF-2 and SCO2 transcript levels. Although there were remarkable line-specific differences in both glycolytic and mitochondrial gene expression, there were only modest differences in the expression of genes linked to fatty acid metabolism (Figure 7C). The two glycolytic cell lines had a significantly greater expression of the SREBP-1a, SREBP-2, and SCAP but lower expression of SREBP-1c, the isoform linked to lipogenesis. There were no significant differences cell lines in FAS expression, but the expression of ACC1 was significantly greater in the DU145 and PC3 cells. 46 Figure 7. mRNA levels in LNCaP, DU145, and PC3 cells A) Hypoxia related mRNAs, and B) mRNAs for mitochondrial genes and transcriptional regulators. All transcript levels are displayed in relation to LNCaP mRNA levels. Bars are means (+SEM) with different letters denoting significantly different values between cell lines according to non-parametric Wilcoxon tests (n=6). See Supplementary Table 1 for raw cycle thresholds relative to TBP. To confirm our hypothesis that the glycolytic cell lines DU145 and PC3 suffered mitochondrial impairment, we tested the ability of DNP, an oxidative uncoupler, to stimulate mitochondrial respiration. We discovered that DNP was able to increase oxygen 47 consumption in the LNCaP cells by 112%. DNP increased the rate of cellular respiration less drastically in the PC3 cells by 42% (Figure 8). No significant increase in oxygen consumption resulted in the DU145 cells in the presence of DNP (Figure 8). Figure 8. Oxygen consumption of LNCaP, DU145 and PC3 cells following exposure to dinitrophenol (DNP) Bars represent mean oxygen consumption (+SEM) in the presence of 0.1 uM DNP. *Indicates significance according to a Student’s t-test (n=5). We used NAO, a fluorescent ligand of the mitochondrial phospholipid cardiolipin to assess if the differences in mitochondrial enzyme activities were simply differences in mitochondrial content (Figure 9). None of the cell lines showed differences in cardiolipin content, suggesting LNCaP cells had the same number of mitochondria, but higher mitochondrial enzyme specific activities. Given the lower respiration rates and enzyme activities (yet similar mitochondrial inner membrane contents), this suggests that the depolarization is these lines was due not to uncoupling but rather less proton pumping. 48 Figure 9. NAO fluorescence in LNCaP, DU145, PC3, and LNCaP-derived cell lines measured using FACS Median fluorescence levels are displayed in relation to the maximum value for each run. Bars are means (+SEM) (n=6). Results represent the median value taken from 5 separate experiments 2.3.3 LNCaP cells transition to a glycolytic phenotype with increasing passage and clonal selection We studied two lines of LNCaP cells that had been subjected to repeated passage number (HP-LNCaP) or additional clonal selection (LNCaP-luc). We also used these cells to assess the plasticity of the metabolic phenotype. In both lines, prolonged passage under normoxia reduced the rates of oxygen consumption (Figure 10A) and increased the rate of lactate production (Figure 10B). The high passage lines achieved a metabolic phenotype similar in most respects to the PC3 and DU145 cells. Both lines showed a significant “hypoxic-response” in terms of elevations in expression of HIF-1α and VEGF, as well as selected glycolytic genes (Figure 11A). HIF-1α and PKm mRNA levels were dramatically higher in LNCaP-luc cells but less so in HP-LNCaP cells (Figure 11A). There was no uniform pattern seen in mitochondrial gene expression with passage. HP-LNCaP cells had a significantly higher expression of PGC-1α, NRF-2 and 49 COX1; LNCaP-luc cells had elevated expression of NRF-2, COXIV and COXI (Figure 11B). There were also differences seen in the SREBP axis (Figure 11C); LNCaP-luc cells showed dramatic declines in SREBP-1c, FAS and ACC1, but marked elevations in SCAP. HP-LNCaP cells had increased expression of SREBP-1a, SCAP, and ACC1 compared to the parent line (Figure 11C). Though passage altered the expression of several mitochondrial genes in HP-LNCaP cells, the LNCaP-luc cells were more similar to the low passage parental line. The LNCaP derived lines showed different patterns in terms of mitochondrial enzyme properties. LNCaP-luc cells showed approximately 50% reductions in both CS and COX (Figure 10C), which is similar to what was seen with PC3 and DU145 (Figure 10). In contrast, HP-LNCaP cells possessed CS and COX activities that were near that of the parental line. 50 Figure 10. Metabolism of HP-LNCaP and LNCaP-luc cells A) O2 consumption, and B) lactate production. Bars are means (+SEM) with different letters denoting significantly different values within each cell line according to ANOVA and Tukey tests (n=6). C) Oxidative enzyme activity. Bars are means (+SEM) with different letters denoting significantly different values for each enzyme assayed according to ANOVA and Tukey tests (n=5). All enzyme levels are displayed relative to LNCaP means: CS 0.33 ± 0.04, COX 0.02 ± 0.004 enzyme units (nmol/min/mg protein). 51 Figure 11. Transcript levels in HPLNCaP and LNCaP-luc cells A) mRNA levels of hypoxia response genes, B) mRNA levels of mitochondrial genes and transcriptional regulators, and C) SREBP axis genes. All transcript levels displayed relative to LNCaP transcript levels. Bars are means (+SEM) with different letters denoting significantly different values between cell lines according to non-parametric Wilcoxon tests (n=6). See Supplementary Table 2 for raw cycle thresholds relative to TBP. 52 2.3.4 Metabolic gene expression of LNCaP cells in vivo To investigate whether mRNA levels differ between cells grown in vitro and in vivo, we analyzed expression profiles of HP-LNCaP and LNCaP-luc cells grown as xenografts in SCID mice. HP-LNCaP xenografts had significantly greater mRNA levels of HIF-1α and VEGF65 than cells grown in vivo; however, the only notable change in the glycolytic genes was a significant decrease in ALDOa transcript abundance in vivo (Figure 12A). In comparison to cells grown in vitro, HP-LNCaP xenografts showed an increase in the levels of PGC-1α (7-fold), COXIV (3-fold) and COXI (5-fold) mRNA levels (Figure 12B). In terms of lipogenesis, xenografts displayed a significantly lower abundance of SREBP-1c and ACC1 transcripts, with a 5-fold increase in SCAP mRNA levels (Figure 12C). 53 Figure 12. Transcript levels in HPLNCaP cells and xenografts A) mRNA levels of hypoxia response genes, B) mRNA levels of mitochondrial genes and transcriptional regulators, and C) mRNA levels of SREBP axis genes. Bars represent means (+SEM) mRNA levels displayed relative to mRNA levels in HP-LNCaP cells. * Indicates significant difference according to nonparametric Wilcoxon tests (n=6). See Supplementary Table 3 for raw cycle thresholds relative to TBP. 54 LNCaP-luc cells were grown as xenografts in kidney and leg muscle (Figure 13). There were few notable differences in these cells when grown in the different contexts. There was some evidence of a hypoxic response in both LNCaP-luc xenografts in vivo, with elevations in one VEGF isoform (muscle only) and selected glycolytic enzymes (HKII, PKm) (Figure 13A). Both kidney and muscle xenografts showed an increase in COXI (Figure 13B). 55 Figure 13. Transcript levels in LNCaP-luc cells and xenografts A) mRNA levels of hypoxia related genes, and B) mRNA levels in mitochondrial genes and transcriptional regulators. Bars represent mean (+SEM) mRNA levels displayed relative to transcript levels in LNCaP-luc cells. * Indicates significant difference according to non-parametric Wilcoxon tests (n=6). See Supplementary Table 4 for raw cycle thresholds relative to TBP. 56 2.3.5 SREBP axis gene expression is not hypoxia sensitive Cells were exposed to hypoxia, anoxia and azide for 12 hours to determine the sensitivity of the SREBP axis to low oxygen using real-time PCR (Figure 14). In each cell line, the levels of VEGF mRNA (a HIF-1 target) significantly increased following treatment with anoxia. Anoxic treatment of LNCaP and PC3 cells (though not DU145 cells) also increased the abundance of HKII transcripts, another HIF-1 target. Less of a response was seen with hypoxia, and azide had no effect. In contrast, anoxia had no effect on the mRNA levels of FAS, ACC1, or SCAP in any cell line (Figures 14 C, D, G). PC3 cells, but not the other lines, showed a significant increase in the levels of SREBP-1a and SREBP-1c mRNA (Figures 14 E, F). 57 Figure 14. mRNA levels in LNCaP, DU145 and PC3 cells following exposure to hypoxia, anoxia, or azide mRNA levels of the hypoxia response genes VEGF (A) and HKII (B), the SREBP downstream targets FAS (C) and ACC1 (D), the transcription factors SREBP-1a (E) and SREBP-1c (F), and the SREBP cleavage activating protein (G). Bars represent means (+SEM) mRNA levels displayed relative to control transcript levels. * Indicates significant difference within each cell line according to non-parametric Wilcoxon tests (n=5). See Supplementary Table 5 for raw cycle thresholds relative to TBP. 58 2.3.6 Fatty acid levels are not influenced by low oxygen in these prostate cancer models Cells were exposed to normoxia, hypoxia, and anoxia for a 48-hour period to determine the influence of low oxygen on their steady-state triglyceride levels (Figure 15). No significant differences were noted between the control samples and the low oxygen treatments for any of the cell lines (Figure 15). Figure 15. Triglyceride content (ug TG/mg protein) of LNCaP, DU145, and PC3 cells following exposure to normoxia, hypoxia, and anoxia. Bars represents means (+SEM) of all cell lines relative to the control and * indicates significance according to non-parametric Wilcoxon tests (n=6). 2.4 Discussion Although there is a common perception that cancer cells support their energetic demands through aerobic glycolysis, some cancer cells rely heavily on OXPHOS [15]. In this study we investigated the most widely used of prostate cancer cell lines: LNCaP, DU145, and PC3. The three classical prostate cancer cell lines show dramatic differences in their metabolic phenotype, manifested as differences in aerobic glycolysis and 59 oxidative metabolism. LNCaP cells are highly oxidative in contrast to both DU145 and PC3 lines. That is, LNCaP cells have higher rates of oxygen consumption and lower rates of lactate production when in comparison to the other lines. Such differences in the relative importance of oxidative metabolism would be expected to influence the efficacy of drugs with metabolic targets. For example, DCA has been proven successful at reversing the glycolytic phenotype of non-small-cell lung cancer by simultaneously increasing the oxidation of glucose in the mitochondria, and decreasing the rates of lactate production and fatty acid oxidation [28]. Though LNCaP cells did increase their rate of respiration when treated with DCA, the other two cell lines were unresponsive to the treatment. Thus, our studies suggest that the small molecule DCA exerts its greatest effects on metabolism in cells with an oxidative metabolic poise. 2.4.1 Metabolic enzyme activities and gene expression In the cancer lines we studied, there was a general maintenance in enzyme stoichiometries within the glycolytic pathway and a general similarity between the lines. Despite the similarities in enzyme activites, there were intriguing differences in other aspects of the glycolytic phenotype. There was a loss of stoichiometry in the relationships between transcript abundance and enzyme activities; PC3 cells showed higher mRNA levels for all glycolytic enzymes studied. This is likely attributed to differential posttranscriptional regulation of specific mRNAs encoded by glycolytic genes. As well, both PC3 and DU145 cells showed circa 10-fold higher HIF-1a mRNA levels. HIF-1a levels are normally regulated posttranslationally (Huang et al. 1996), and hypoxia generally 60 doesn’t affect HIF-1a transcription (but see Zhong et al. 1998). Nonetheless, both PC3 and DU145 cells showed parallel elevations in mRNA of both HIF-1a and VEGF isoforms (HIF-1 targets, Semenza et al. 1996) (Figure 6A). Despite this apparent “hypoxic response” in DU145 and PC3, only PC3 cells showed elevated levels of mRNAs encoded by glycolytic genes (Figure 6A). It was also noteworthy that, despite similar glycolytic enzyme levels, the cells demonstrated differences in glycolytic rate. The glycolytic phenotype of PC3 and DU145 cells is most likely due to mitochondrial insufficiency, due either to lower mitochondrial content or mitochondrial dysfunction. In this study, the two glycolytic lines had a 50-65% reduction in the activities of two mitochondrial enzymes (COX and CS) compared to LNCaP cells. This pattern is consistent with previous studies in other cancer lines (Miralpeix et al. 1990; Matoba et al. 2006). However, the two glycolytic lines show no reduction in levels of mRNAs encoding mitochondrial enzymes. In fact, relative to LNCaP cells, DU145 cells show 5-fold greater expression of CS and COX subunits. In both glycolytic lines, the mRNA levels of important regulators of mitochondrial gene transcription (PGC-1α and NRF-2), are dramatically elevated. With an elevation in the mRNA levels of stimulators of mitochondrial biogenesis, the most parsimonious explanation for depressed mitochondrial enzyme levels is likely a disruption of mitochondrial biogenesis, rather than a regulated decrease in the content of otherwise normal mitochondria. Each of the cell lines possesses similar cardiolipin levels, suggesting that the content of mitochondria is comparable between lines. Thus, the reduced respiration rates and lower mitochondrial 61 enzyme activities are consistent with less effective mitochondria, rather than fewer mitochondria. The PC3 and DU145 cells compensate for the energetic shortfalls by stimulating glycolysis, likely achieved not through elevated glycolytic enzyme levels but through the normal allosteric and covalent regulators of glycolysis. Increased glycolytic flux is likely a response to this dysfunction, and achieved not through elevated glycolytic enzyme levels but through the normal allosteric and covalent regulators of glycolysis. The exact origins of the mitochondrial defects in the PC3 and DU145 lines remain unclear. Although the PC3 and DU145 cells possessed lower mitochondrial enzyme levels, they showed an apparent stimulation of genes associated with mitochondrial enzymes and their regulators. This would appear to represent a futile effort to stimulate mitochondrial biogenesis, perhaps in response to energetic shortfalls. The resulting state is fairly characterized as a mitochondrial lesion, where defects in one or more critical enzymes lead to an inability to sustain mitochondrial biogenesis. In other situations, mitochondrial lesions are attributed to defects in COX (Leary et al. 2004), including defects in processing of the heme and copper groups that are essential for the holoenzyme (Capaldi 1990). Matoba et al. (2006) proposed that a loss of p53 activity might reduce COX levels by inhibiting the expression of the SCO2 gene, which encodes a protein that participates in copper delivery to the mitochondria. Though we have demonstrated DU145 and PC3 cells have reduced COX enzyme activities, and these lines have previously been characterized to lack functional p53 (Carroll et al. 1993), their SCO2 expression is no different from that of the LNCaP cells. Thus, the reductions in 62 mitochondrial enzymes in PC3 and DU145 cells cannot be explained by reduced transcription of (i) the respiratory transcriptional regulators of biogenesis (PGC-1, NRF2), (ii) the genes encoding the oxidative enzymes or (iii) the SCO2 assembly factor. 2.4.2 The effects of passage and selection While we have established that aerobic glycolysis is an important characteristic of prostate cancer cells, the evolution of this phenotype has not been sufficiently described. Somatic evolution during carcinogenesis usually involves the combination of genetic events such as proto-oncogene gain-of-function, loss of tumour suppressor function, and environmental selection (Vogelstein and Kinzer 2004; Smalley et al. 2005). In order for a particular phenotype to persist evolutionarily, it must confer a selective advantage. If the glycolytic phenotype serves to supply ATP when oxidative metabolism is lacking, it is peculiar that when oxygen is abundant that the phenotype is maintained (Costello and Franklin 2005). We have demonstrated that with prolonged passage in normoxia, LNCaP cells evolve to become more glycolytic as demonstrated by their decreased rate of oxygen consumption and increased rate of lactate production. Additionally, when LNCaP cells are clonally selected, an even more dramatic transformation occurs. Bordeau-Heller and Oberley (2007) demonstrated that following prolonged culture in hypoxic conditions that DU145 cells significantly reduced their rate of oxygen consumption and increased HIF1α protein levels. Interestingly, in LNCaP cells cultured under normoxia, a similar metabolic transition to aerobic glycolysis occurred. The exact mechanism by which this metabolic transformation occurs remains unclear. Alternatively, it is possible that a loss 63 of p53 activity occurs in LNCaP cells leading to selection for a more resistant cancer that is able to withstand reduced oxygen levels and acidity, and resist apoptotic signals. Based on the collective results, it appears that the aerobic glycolytic phenotype displayed in select prostate lines and with passage is a response to mitochondrial shortfalls, the origin of which remain unknown. 2.4.3 In vivo and in vitro differences in gene expression Cell culture models are commonly used in cancer biology, however, relatively little is known about how metabolic gene expression in cultured cells relates to gene expression in vivo. In vitro, there is a tight relationship between gene expression, growth factor signaling, proliferation and treatment efficacy (Rice et al 1986; Sutherland 1988; Moscow and Cowen 1988). In vivo oncogenesis is much more complex for it requires the development of a new vascular network to allow individual cells to be perfused with oxygen and nutrients from the circulation. The microcirculation and degree of vascularization of a particular tumour influences the degree of hypoxia and acidosis in its microenvironment (Kallinowski et al. 1989). Therefore gene expression in vivo may be governed by the interplay between the endogenous metabolic phenotype of a cell and the environment in which it is found. To explore this question, we studied two derived lines of LNCaP cells to assess how expression patterns were affected by growth in a more complex tumour environment. While HP-LNCaP tumour xenografts were from the kidney; LNCaP-luc cells were grown as xenografts in both kidney (highly perfused) and leg muscle (less vascularized). 64 Though there were differences between LNCaP derived lines, there were no parallels between the xenografts of the high passage and luciferase-transfected cells. HPLNCaP xenografts had a moderate increase in expression of HIF-1α and VEGF65, and a much greater stimulation of mitochondrial gene expression. Contrarily, the expression patterns of glycolytic and mitochondrial genes were nearly indistinguishable in LNCaPluc cells grown in culture versus in xenografts. These results are consistent with the findings of Kallinowski et al. (1989), who demonstrated that the balance between glycolysis and oxidative phosphorylation in xenografts is determined independently of oxygen and glucose delivery. We observed that, while the expression of both VEGF isoforms significantly differed between the muscle and leg LNCaP-luc xenografts, no differences were observed in any of the other glycolytic genes, which are also hypoxia responsive (Semenza et al. 1996). On the SREBP axis, muscle LNCaP-luc xenografts had a slightly higher expression of both SREBP-2 and FAS compared to both cultured cells and kidney xenografts. Conversely, SREBP-1c and ACC1 transcript levels were significantly lower in the HP-LNCaP xenografts. These studies suggest that individual cells are selected for a response according to their genotype rather than the surrounding tissue in which they are found. Furthermore, while the microenvironment is of importance in tumours growing in patients, it is not solely responsible (in the models examined here) for the responses seen in vivo. 65 2.4.4 SREBP axis In addition to the Warburg effect, many cancer cells have been shown to upregulate the de novo fatty acid synthesis pathway. The relationship between hypoxia and lipid metabolism has yet to be completely resolved. Glycolytic pyruvate can be either converted to lactate in the cytosol, or imported into mitochondria to form citrate, which is exported to the cytosol and cleaved to produce the acetyl-CoA used in fatty acid synthesis (reviewed by Swinnen et al. 2006). Both lactate production and fatty acid synthesis require reducing equivalents and thus may both serve to maintain redox balance in cancer cells when oxygen is limiting. Whether the SREBP axis is induced to serve this purpose, or merely to provide membrane phospholipids during proliferation is unknown. Our gene expression studies examining the sensitivity of the SREBP axis to low oxygen suggest that oxygen does not influence lipogenic gene transcription. Other regulatory cascades have been shown to affect lipid metabolic enzymes. Growth factors such as epidermal growth factor (EGF) and keratinocyte growth factor (KGF, also known as fibroblast growth factor 7, FGF-7) can stimulate lipogenic gene transcription. Insulin can also stimulate lipid metabolic enzymes via the PI3K cascade (Swinnen et al. 2000; Chang et al. 2005). Though hypoxia may not induce the expression of the genes associated with fatty acid synthesis (ACC1, FAS), or affect the transcription of the regulators of these genes (SREBP, SCAP) this does not preclude a role for fat synthesis in hypoxic energy metabolism. 66 While many studies have characterized lipogenic gene expression in cancer cells, few have actually quantified the triglycerides the cells produce. Since our gene expression results suggest that the relationship between hypoxia and fatty acid synthesis do not occur on a transcriptional level, we proceeded to quantify the triglycerides following treatment. We found that exposure to low oxygen had no significant impact on the production of triglycerides. Furthermore, we found no differences in baseline triglyceride production between the cells lines. Therefore we conclude that de novo fatty acid synthesis is not related to low oxygen, and furthermore, that the metabolic phenotype of a cell in terms of glycolytic and oxidative balance does not dictate its degree of fatty acid production. Collectively, our results illustrate the plasticity of the metabolic phenotype and highlight the importance of considering how a cell’s endogenous metabolism can influence its ability to survive and progress in hypoxic conditions. These data support the model that a loss of mitochondrial function is responsible for aerobic glycolysis in these prostate cancer cells. Further insight into the relationship between hypoxia and fatty acid synthesis is required to determine whether or not this pathway is involved in the cell’s response to hypoxia. 67 Chapter 3: General Discussion 3.1 The metabolic phenotype of prostate cancer cells Cells require energy in the form of ATP to carry out vital anabolic processes involved in growth and repair. Such ATP is produced during the metabolic processes of glycolysis, the TCA cycle, and oxidative phosphorylation. Glycolysis occurs in the cytoplasm, and is functional even in the absence of oxygen; however, it only yields two ATP and two NADHs per glucose molecule. In contrast, oxidative phosphorylation occurs in the mitochondrial electron transport chain, requires oxygen, and produces as many as 38-39 ATP per molecule of glucose. Due to its high efficiency in terms of ATP produced per glucose, it is evident that during aerobic conditions this pathway would be preferred. When oxygen levels are reduced, cells produce most of their energy using glycolysis, since aerobic pathways cannot be used. Under such circumstances, pyruvate is converted to lactate by LDH in the cytoplasm, which is eventually shuttled out of the cell. For example, glycolytic metabolism is used in white muscle during burst exercise, when the cell requires ATP at a higher rate than it can get from mitochondrial pathways. Similarly, many cancer cells have been shown to have an unusual metabolic phenotype where they derive most of their cellular energy from glycolysis, even in the presence of oxygen. This is referred to aerobic glycolysis, and while its occurrence may be explained in many ways, it is still widely debated and largely misunderstood. 68 The first objective of my thesis was to determine the metabolic phenotype of prostate cancer cells. I chose to examine three prostate cancer cell lines in particular: LNCaP, DU145, and PC3 cells. These cells are widely used models for prostate cancer, but how they differ metabolically has yet to be investigated. It is often generalized that all cancer cells exhibit the phenotype of aerobic glycolysis; however, following examination, it seems that some cancer cells do not. For example, certain types of lung cancer cells (Weinhouse 1956), bone sarcomas (Zu and Guppy 2004), and uterine cancer cells (Kallinowski et al. 1989) are documented as being predominantly oxidative. Therefore, I set out initially to describe these prostate cancer cell lines metabolically, and to determine whether they predominantly use glycolytic or oxidative metabolism for ATP production. I demonstrated that LNCaP cells are much more oxidative than the DU145 and PC3 cells. Comparatively, LNCaP cells had a greater rate of oxygen consumption and lower rate of lactate production rate than the other cell types. Furthermore, when exposed to acidity and hypoxia in their environment, LNCaP cells responded much more dramatically in terms of their ATP levels, whereas the DU145 and PC3 cells were already seemingly hypoxic. When I investigated the activities of the mitochondrial enzymes CS and COX, I discovered that these were reduced significantly in the DU145 and PC3 cells, while their mRNA levels were at par with those of the LNCaP cells. This was the first clue that respiratory impairment may be responsible for the aerobic glycolytic phenotype of the glycolytic lines. Taken alone, this could be due to: 1) defects in mitochondrial biogenesis, or 2) mitochondrial dysfunction. Following quantification of mitochondrial 69 content with cardiolipin staining, I discovered no differences between the cell lines, suggesting that mitochondrial dysfunction was likely the cause of the glycolytic phenotype observed in the DU145 and PC3 cells. When I examined this further using DCA and DNP, I discovered that while respiration could be stimulated in the LNCaP cells, this was not the case with the glycolytic lines. Therefore, mitochondrial dysfunction seems to play a role in the glycolytic phenotype of the DU145 and PC3 cells, which supports Warburg’s hypothesis that aerobic glycolysis results due to respiratory chain deficiencies. While mitochondrial dysfunction clearly plays a role in aerobic glycolysis in the DU145 and PC3 cells, the mechanistic basis of this dysfunction remains unknown. There are some major molecular differences between these prostate cancer cell lines that I believe to be of critical importance. Firstly, LNCaP cells express the androgen receptor and are an excellent model for studying androgen-dependent earlier stages of prostate cancer. Contrarily, DU145 and PC3 cells are androgen-independent cells and represent a more advanced stage of the disease. LNCaP cells secrete PSA, and PC3 and DU145 cells do not. In addition, LNCaP cells have functional p53, whereas the glycolytic lines do not. Thus, the genetics of these cancer models is almost sufficient to explain their metabolic differences, as the androgen receptor and p53 are both part of many complex signaling pathways within the cell. Furthermore, these results emphasize the importance of studying multiple cell types during cancer research, because different cells of a tumour may have metabolic differences that might influence the efficacy of treatment. This holds 70 true for all types of cancers because the mutations the cells have incurred will most definitely influence treatment efficacy. It is therefore of extreme importance to not generalize results found in one cell type to the over phenotype of the cancer type. 3.2 The influence of passage and selection on prostate cancer cells and xenografts Somatic evolution during carcinogenesis involves a series of mutations in protooncogenes and tumour suppressor genes, which ultimately lead to a survival advantage for the cell. Additionally, environmental selection plays a role in the integration if these genetic alterations into the overall phenotype of the cell. While the metabolic phenotype differs between prostate cancer cell lines, little is known about how this phenotype evolves with passage and clonal selection. The LNCaP line is commonly used in studies examining the early, androgen-dependent stages of prostate cancer. Since aerobic glycolysis is associated with increased aggressiveness and therapeutic resistance, it is quite possible that over time LNCaP cells might evolve a glycolytic phenotype. I investigated the plasticity of the metabolic phenotype using the LNCaP-derived lines, HP-LNCaP and LNCaP-luc. In terms of oxygen consumption and lactate production, I found the LNCaP-derived lines to be more glycolytic than the parent line. Higher levels of HIF-1α and VEGF mRNA were seen in the LNCaP-luc and HP-LNCaP cells, as well as an increase in expression of certain glycolytic genes. CS enzyme levels were reduced by 60% in the clonally selected line; however, no significant changes were noted in oxidative enzyme levels in the HP-LNCaP cells. Mitochondrial content in the 71 LNCaP-derived lines was not significantly different that in any of the other lines evaluated, ruling out problems with the mitochondrial biogenesis. Therefore, mitochondrial dysfunction may explain why, under normoxic conditions, the LNCaP cells evolved a glycolytic phenotype. This suggests that the phenotype of aerobic glycolysis can be selected for with time in culture and clonal selection from a more oxidative phenotype, and illustrates the importance of aerobic glycolysis in cancer development and progression. Additionally, we cannot overlook the fact that the passage history of most cell lines used in research is somewhat of a mystery, which makes it difficult to determine whether results are significant or merely due to culture artifacts. The ability of the LNCaP cells to become more glycolytic with passage and selection in culture is extremely interesting for it may represent prostate cancer progression to androgen-independence. This is interesting because the derived lines became more metabolically similar to the DU145 and PC3 cells lines than they are to their parent line. While LNCaP cells are androgen sensitive, DU145 and PC3 cells represent models for androgen-independent prostate cancer. Therefore it is quite possible that the metabolic transformation I observed was coordinated with progression to androgen independence. Thus, genetic alterations resulting in the emergence of androgen independence, such as activation of the Akt pathway, or loss of p53 function may be sufficient to explain the metabolic change that occurred in the LNCaP cells. Overall, clonal selection seemed to have a greater effect on metabolism than did passage in culture; however, both resulted in the aerobic glycolytic phenotype. Interestingly 72 however, these two lines were chosen purely for opportunistic reasons and a replication of the same experiment with alternative available lines would most likely result in derived lines with novel properties. In addition to cell culture models, xenograft models are commonly used in cancer research for they are more representative of cancer as it occurs in vivo. Little is known about how gene expression differs between culture and xenograft models. Xenografts are much more complex because the degree of vascularization dictates the cell’s ability to access oxygen and nutrients from the circulation. In contrast, these same constraints do not exist in cell culture models. It has even been argued that in cell culture systems oxygen levels are in fact well above normal levels in the body, and that this hyperoxia might have its own consequences for metabolism and/or selection. I therefore investigated metabolic gene expression in the LNCaP-derived cell lines as well as in their xenograft counterparts in the kidney and muscle to explore the plasticity of the response of a given cell line. While I noted a greater hypoxia response (in terms of HIF-1α and VEGF expression) in the HP-LNCaP xenografts when compared to the cells, PGC-1α, COXIV and COXI mRNA levels were also significantly increased. This may in part be due to intermittent hypoxia exposure, where the cells of the tumour are exposed to periods of hypoxia followed by oxygenation, and attempt to compensate by increasing the expression of the transcriptional regulators of oxidative metabolism. In the LNCaPluc cells, some glycolytic genes had increased mRNA levels in vivo; however, HIF-1α mRNA levels were actually lower than they were in the LNCaP-luc cells. I therefore 73 concluded from this that there are few parallels between cell culture and xenograft models of prostate cancer, and each of these models is likely to differ from that of a human tumour. Similarly, gene expression would likely differ between different tumours, because the environment in which the tumour is found plays a significant role in the signaling pathways that occur at a cellular level. 3.3 The influence of hypoxia on fatty acid synthesis Fatty acid synthase, the final enzyme in the pathway of de novo fatty acid synthesis is upregulated at the mRNA and protein level in prostate cancer cells, and the reasons for this remain debated (Shurbaji et al. 1992). This pathway ends with the production of the fatty acid palmitate which is subsequently used in the formation of membrane phospholipids or TGs for storage. During periods of hypoxia, this pathway may be upregulated in order to maintain redox balance to compensate for the reduction in respiratory chain activity (Hochachka et al. 2002). Much more redox power is required from the pathway of fatty acid synthesis in comparison to lactate production, so perhaps it represents the means by which the cell oxidizes the NADHs produced from glycolysis and the TCA cycle. I set out to determine the relationship between hypoxia and fatty acid synthesis, more specifically to determine if the upregulation in this pathway is directly a result of oxygen deprivation. Firstly, I evaluated whether hypoxia, anoxia, or the chemical hypoxia mimetic azide influence the mRNA levels of genes in the SREBP axis. I found no significant upregulation at the mRNA level, suggesting that the pathway of de novo fatty acid 74 synthesis is not hypoxia-sensitive. However, in the PC3 cells, there was an upregulation of SREBP-1a and SREBP-1c transcripts after 12 hours of treatment, which suggested that my treatment times were perhaps not long enough to see a response. Given the half-life of most mRNA (at least those lacking regulatory sequences in the upstream and downstream untranslated region) is around 4h. Thus it is likely that any response seen after 12 h is not a primary response to low oxygen but rather a secondary response to cellular changes made during hypoxia. However, when I quantified the levels of TGs in the cells following 48 hours of hypoxic or anoxic exposure, I reached a similar conclusion; low oxygen had no influence on the production of TGs in any of the cell lines. In addition, no significant differences were found in the quantity of TGs between cell lines under normoxia despite their very different metabolic phenotypes. Therefore, while fatty acid synthesis is an important part of the metabolism of a cell, it is not directly involved in the hypoxia response or aerobic glycolysis. The results from my thesis can be summarized briefly. 1) LNCaP cells are oxidative, whereas DU145 and PC3 cells exhibit aerobic glycolysis. 2) Mitochondrial dysfunction plays a role in the glycolytic phenotype of DU145 and PC3 cells. 3) The phenotype of aerobic glycolysis can be selected for with passage in culture and clonal selection. 4) Gene expression between culture and xenograft models is highly unpredictable. 5) There is no direct relationship between hypoxia and fatty acid synthesis in prostate cancer cells. 75 These results bring about endless questions that require experimental investigation. While I have shown that mitochondrial dysfunction is involved in the aerobic glycolytic phenotype of DU145 and PC3 cells, it is still unknown whether mitochondrial dysfunction is the cause of aerobic glycolysis, or whether it occurs as a consequence or adaptation to this altered metabolism. Perhaps these results can all be explained by the fact that LNCaP cells are androgen-sensitive and DU145 and PC3 cells are not. The differences in cell lines I observed underscore the importance of using these important cell models of cancer complimentarily and with caution when translating the conclusions to treatment of prostate (or other) cancers. Prostate cancer is a complex disease, for initially it requires hormones to grow and survive, but eventually advances to a more aggressive androgen-independent cancer. With this progression to androgenindependence, a patient’s chances of surviving are dramatically reduced (Petrylak et al. 2004; Shamash et al. 2005). Though it would be worthwhile to study the androgen dependence of metabolic patterns of these models, such studies were beyond the scope of my thesis. An immense number of signaling pathways are involved in integrating environmental signals with the cell’s metabolism and these play a role in progression to an androgen-independent metastatic cancer. These pathways must be delineated and the detailed relationships between the HIF-1, p53, Akt, and AR pathways must be fully understood in order to fully understand aerobic glycolysis. Nonetheless, studies evaluating the metabolic properties of cancer cells are of the utmost importance, and must be considered when targeting aspects of metabolism for cancer treatment. 76 Literature Cited Acs, G., Xu, X., Chu, C., Acs, P., and Verma, A. (2004). Prognostic significance of erythropoietin expression in human endometrial carcinoma. Cancer. 100, 2376-2386. Akakura, N., Kobayashi, M., Horiuchi, I., Suzuki, A., Wang, J., Chen, J., Niizeki, H., Kawamura, K.-I., Hosokawa, M. and Asaka, M. (2001). Constitutive Expression of Hypoxia-inducible Factor-1 Renders Pancreatic Cancer Cells Resistant to Apoptosis Induced by Hypoxia and Nutrient Deprivation. Cancer Res. 61, 6548-6554. Bacus, S.S., Altomare, D.A., Lyass, L., Chin, D.M., Farrell, M.P., Gurova, K., Gudkov, A., and Testa, J.R. (2002). AKT2 is frequently upregulated in HER-2/neupositive breast cancers and may contribute to tumor aggressiveness by enhancing cell survival. Oncogene. 21, 3532-3540. Bellacosa, A., de Feo, D., Godwin, A.K., Bell, D.W., Cheng, J.Q., Altomare, D.A., Wan, M., Dubeau, L., Scambia, G., Masciullo, V., Ferrandina, G., Benedetti Panici, P., Mancuso, S., Neri, G., and Testa, J.R. (1995). Molecular alterations of the AKT2 oncogene in ovarian and breast carcinomas. 64, 280-285. Bensaad, K., Tsuruta, A., Selak, M.A., Calvo Vidal, M.N., Nakano, K., Bartrons, R., Gottlieb, E., and Vousden, K.H. (2006). TIGAR, a p53-inducible regulator of glycolysis and apoptosis. Cell. 126, 107-120. Beutner, G., Ruck, A., Riede, B., and Brdiczka, D. (1998). Complexes between porin, hexokinase, mitochondrial creatine kinase and adenylate translocator display properties of the permeability transition pore: Implication for regulation of permeability transition by the kinases. BBA. 1368, 7-18. Bonnet, S., Archer, SL., Allalunis-Turner, J., Haromy, A., Beaulieu, C., Thompson, R., Lee, C.T., Lopaschuk, G.D., Puttagunta, L., Bonnet, S., Harry, G., Hashimoto, K., Porter, C.J., Andrade, M.A., Thebaud, B., and Michelakis, E.D. (2007). A mitochondrial-K+ axis is suppressed in cancer and its normalization promotes apoptosis and inhibits cancer growth. Cancer Cell. 11, 37-51. Bourdeau-Heller, J., and Oberley, T.D. (2007). Prostate Carcinoma Cells Selected by Long-term Exposure to Reduced Oxygen Tension Show Remarkable Biochemical Plasticity Via Modulation of Superoxide, HIF-1a Levels, and Energy Metabolism. J Cell Physiol. 212, 744-752 Brown, M.S., and Goldstein, J.L. (1997). The SREBP pathway: Regulation of cholesterol metabolism by proteolysis of a membrane-bound transcription factor. Cell. 77 89, 331-340. Brusselmans, K., De Schrijver, E.D., Verhoeven, G., and Swinnen, J.V. (2005). RNA interference –mediated silencing of the acetyl-CoA-carboxylase-a gene induces growth inhibition and apoptosis of prostate cancer cells. Cancer Res. 65, 67196725. Cantley, L.C. (2002). The phosphoinositide 3-kinase pathway. Science. 296, 1655–1657. Capaldi, R.A. (1990). Structure and assembly of cytochrome c oxidase. Arch Biochem Biophys. 280, 252-262. Carmeliet, P., Dor, Y., Herbert, J.-M., Fukumura, D., Brusselmans, K., Dewerchin, M., Neeman, M., Bono, F., Abramovitch, R., Maxwell, P., Koch, C.J., Ratcliffe, P., Moons, L., Jain, R.K., Collen, D., and Keshet, E. (1998). Role of HIF1α in hypoxia-mediated apoptosis, cell proliferation and tumour angiogenesis. Nature 1998; 394: 485-490. Carroll, A.G., Voeller, H.J., Sugars, L., and Gelmann, E.P. (1993). P53 oncogene mutations in three human prostate cancer cell lines. Prostate. 23, 123-134. Chang, Y., Wang, J., Lu, X., Thewke, D.P., and Mason, R.J. (2005) KGF induces lipogenic genes through a PI3K and JNK/SREBP-1 pathway in H292cells. J Lipid Res. 46, 2624-2635. Chen, C.D., Welsbie, D.S., Tran, C., Baek, S.H., Chen, R., Vessella, R., Rosenfeld, M.G., and Sawyers, C.L. (2004). Molecular determinants of resistance to antiandrogen therapy. Nat Med. 10, 33–39. Chung, L.W.K, Li, W., Gleave, M.E., Hsieh, J.T., Wu, H.-C., Sikes, R.A., Zhau, H.E., Bandyk, M.G., Logothetis, C.J., Rubin, J.S., and von Eschenbach A.C. (1992) Human prostate cancer model: roles of growth factors and extracellular matrices. J Cell Biochem. Suppl, 99-105. Clarke, A.E., West, K., Streicher, S., and Dennis, P.A. (2002). Constitutive and inducile Akt activity promotes resistance to chemotherapy, trastuzamab, and tamoxifen in breast cancer cells. Mol Cancer Ther. 1, 707-717. Coffey, R.N.T., Morrissey, C., Taylor, C.T., Fitzpatrick, J.M., and Watson, R.W.G. (2005). Resistance to caspase-dependent, hypoxia-induced apoptosis is not hypoxia-inducible factor-1 alpha mediated in prostate carcinoma cells. Cancer. 103, 78 1363-1374. Costello, L., and Franklin, R. (2005). Why do tumour cells glycolyse? From glycolysis through citrate to lipogenesis. Mol Cell Biochem. 280, 1-8. Culig, Z., Hobisch, A., Cronauer, M.V., Radmayr, C., Trapman, J., Hittmair, A., Bartsch, G., and Klocker, H. (1994). Androgen receptor activation in prostatic tumor cell lines by insulinlike growth factor-I, keratinocyte growth factor, and epidermal growth factor. Cancer Res. 54,5474–5478. Dachs, G.U., and Tozer, G.M. (2000). Hypoxia modulated gene expression: angiogenesis, metastasis and therapeutic exploitation. 36, 1649-1660. Debes, J.D., and Tindall, D.J. (2004). Mechanisms of androgen-refractory prostate cancer. NEJM. 351, 1488-1490. Dement, G.A., Maloney, S.C., and Reeves, R. (2007). Nuclear HMGA1 nonhistone chromatin proteins directly influence mitochondrial transcription, maintenance, and function. Exp Cell Res. 2007. 313, 77-87. Eberlé, D., Hegarty, B., Bossard, P., Ferré, P., and Foufelle, F. (2004). SREBP transcription factors: master regulators of lipid homeostasis. Biochimie. 86, 839848. Ebert, B.L., Firth, J.D., and Ratcliffe, P.J. (1995). Hypoxia and mitochondrial inhibitors regulate expression of glucose transporter-1 via distinct cis-acting sequences. J Biol Chem. 270, 29083–29089. Elstrom, R.L., Bauer, D.E., Buzzai, M., Karnauskas, R., Harris, M.H., Plas, D.R., Zhuang, H., Cinalli, R.M., Alavi, A., Rudin, C.M., and Thompson, C.B. (2004). Akt stimulates aerobic glycoysis in cancer cells. Cancer Res. 64, 3892-3899. Epstein, A.C., Gleadle, J.M., McNeill, L.A., Hewitson, K.S., O’Rourke, J., Mole, D.R., Mukherji, M., Metzen, E., Wilson, M.I., Dhanda, A., Tian, Y.M., Masson, N., Hamilton, D.L., Jaakkola, P., Barstead, R., Hodgkin, J., Maxwell, P.H., Pugh, C.W., Schofield, C.J., and Ratcliffe, P.J. (2001). C. elegans EGL-9 and mammalian homologs define a family of dioxygenases that regulate HIF by prolyl hydroxylation. Cell. 107, 1-3. Ettinger, S.L., Sobel, R., Whitmore, T.G., Akbari, M., Bradley, D.R., Gleave, M.E., and Nelson, C.C. (2004). Dysregulation of sterol response element-binding proteins and downstream effectors in prostate cancer during progression to androgen 79 independence. Cancer Res. 64, 2212-2221. Feilchenfeldt, J., Brundler, M.A., Soravia, C., Totsch, M., and Meier, C.A. (2004). Peroxisome proliferators-activated receptors (PPARs) and associated transcription factors in colon cancer: Reduced expression of PPARγ-coactivator 1 (PGC1). Cancer Lett. 203, 25-33. Firth, J. D., Ebert, B. L., Pugh, C. W., and Ratcliffe, P. J. (1994). Oxygenregulated control elements in the phosphoglycerate kinase 1 and lactate dehydrogenase A genes: similarities with the erythropoietin 3’enhancer. PNAS. 91, 6496-6500. Firth, J. D., Ebert, B. L., and Ratcliffe, P. J. (1995). Hypoxic regulation of lactate dehydrogenase A: interaction between hypoxia-inducible factor 1 and cAMP response elements. J Biol Chem. 270, 21021-21027. Folch, J., Lees, M., and Sloane Stanley, G.H. (1957). A simple method for the isolation and purification of total lipids from animal tissues. J Biol Chem. 226, 497-509. Gillies, R.J., and Gatenby, R.A. (2007). Adaptive landscapes and emergent phenotypes: why do cancers have high glycolysis? J Bioenerg Biomembr. 39, 251-257. Goffart, S., and Wiesner, R.J. (2003). Regulation and co-ordination of nuclear gene expression during mitochondrial biogenesis. Exp Physiol. 88. 33-40. Gottlob, K., Majewski, N., Kennedy, S., Kandel, E., Robey, R.B., and Hay, N. (2001). Inhibition of early apoptotic events by Akt/PKB is dependent on the first committed step of glycolysis and mitochondrial hexokinase. Genes Dev. 15, 1406-1418. Ghafar, M.A., Anastasiadis, A.G., Chen, M.-W., Burchardt, M., Olsson, L.E., Hui Xie, Benson, M.C. and Buttyan, R. (2003). Acute hypoxia increases the aggressive characteristics and survival properties of prostate cancer cells. Prostate. 54, 58-67. Graeber, T.G., Osmanian, C., Jacks, T., Housman, D.E., Koch, C.J., Lowe, S.W., and Giaccia, A.J. (1996). Hypoxia-mediated selection of cells with diminished apoptotic potential in solid tumours. Nature. 379, 88-91. Green, D.R., and Chipuk, J.E. (2006). P53 and metabolism: Inside the TIGAR. Cell. 126, 30-32. Greijer, A.E., and van der Wall, E. (2004). The role of hypoxia inducible factor 1 (HIF-1) in hypoxias induced apoptosis. JCP. 57, 1009-1014. 80 Guppy, M. (2002). The hypoxic core: a possible answer to the cancer paradox. Biochem Biophys Res Commun. 299, 676–80. Hardman, W., Gansler, T., Schaffel, S., and Henninger, R. (1995). OA-519 immunostaining portends poor prognosis in ovarian cancer. Mod Pathol. 8, 90A. Hayward, S.W., Haughney, P.C., Lopes, E.S., Danielpour, D., and Cunha, G.R. (1999) The rat prostatic epithelial cell line NRP-152 can differentiate in vivo in response to its stromal environment. Prostate. 39, 205-212. Heemers, H., Maes, B., Foufelle, F., Heyns, W., Verhoeven, G., and Swinnen, J.V. (2001) Androgens stimulate lipogenic gene expression in prostate cancer cells by activation of the sterol regulatory element-binding protein cleavage activating protein/sterol regulatory element-binding protein pathway. Molec Endo. 15, 1817-1828. Hennessey, B.T., Smith, D.L., Ram, P.T., Lu, Y., Mills, G.B. (2005). Exploiting the PI3K/AKT pathway for cancer drug discovery. Nat Rev Drug Discov. 4, 988-1004. Hochachka, P.W., Rupert, J.L., Goldenberg, L., Gleave, M., and Kozlowski, P. (2002). Going malignant: the hypoxia-cancer connection in the prostate. BioEssays. 24, 749-757. Hoeben, A., Landuyt, B., Highley, M.S., Wildiers, H., Van oosterom, A.T., and De Bruijn, E.A. (2004). Vascular endothelial growth factor and angiogenesis. Pharmacol Rev. 56, 549-580. Hollstein, M., Hergenhahn, M., Yang, Q., Bartsch, H., Wang, Z.-Q., and Hainaut, P. (1999). New approaches to understanding p53 gene tumor mutation spectra. Mutat. Res. 431, 199–209. Hood, D.A. (2001). Contractile activity-induced mitochondrial biogenesis in skeletal muscle. J Appl Physiol. 90, 1137-1157. Horoszewicz, J.S., Leong, S.S., Chu, T.M., Wajsman, Z.L., Friedman, M., Papsidero, L., Kim, U., Chai, L.S., Kakati, S., Arya, S.K. and Sandberg, A.A. (1980). The LNCaP cell line--a new model for studies on human prostatic carcinoma. Prog Clin Biol Res. 37, 115-132. Hua, X., Goldstein, J.L., Brown, M.S., and Hobbs, H.H. (1995). Structure of 81 the human gene encoding sterol regulatory element binding protein-1 (SREBPF1) and localization of SREBPF1 and SREBPF2 to chromosomes 17p11.2 and 22q13. Genomics. 25, 667-673. Huang, L.E., Arany, Z., Livingston, D.M., and Bunn, H.F. (1996). Activation of hypoxia-inducible transcription factor depends primarily upon redox-sensitive stabilization of its alpha subunit. J Biol Chem. 271, 32253-32259. Isaacs, W.B., Carter, B.S., and Ewing, C.M. (1991). Wild-type p53 suppresses growth of human prostate cancer cells containing mutant p53 alleles. Cancer Res. 51, 4716-4720. Ivan, M., Kondo, K., Yang, H., Kim, W., Valiando, J., Ohh, M., Salic, A., Asara, J.M. Lane, W.S., and Kaelin, W.G. Jr. (2001). HIFalpha targeted for VHLmediated destruction by proline hydroxylation: implications for O2 sensing. Science. 292, 464-468. Jiang, W.G., Douglas-Jones, A., and Mansei, R.E. (2003). Expression of peroxisome-proliferator activated receptor-gamma (PPARγ) and the PPARγ co-activator, PGC-1, in human breast cancer correlates with clinical outcomes. Int J Cancer. 106, 752757. Kaighn, M.E., Narayan, K.S., Ohnuki, Y., Lechner, J.F., and Jones, L.W. (1979). Establishment and characterization of a human prostatic carcinoma cell line (PC3). Invest Urol. 17, 16-23. Kaighn, M.E., Lechner, J.F., Babcock, M.S., Marnell, M., Ohnuki, Y., and Narayan, K.S. (1980). The Pasadena cell lines. Prog Clin Biol Res. 37, 85-109. Kallinowski, F., Schaefer, C., Tyler, G., and Vaupel, P. (1989). In vivo targets of recombinant human tumour necrosis factor-alpha: blood flow, oxygen consumption and growth of isotransplanted rat tumours. Br J Cancer. 60, 555-560. Kennedy, S.G., Kandel, E.S., Cross, T.K., and Hay, N. (1999). Akt/protein kinase B inhibits cells death by preventing the release of cytochrome c from mitochondria. MCB. 19, 5800-5810. Kim, J. –Y., and Park, J. –H. (2003). ROS-dependent caspase-9 activation in hypoxic cell death. FEBS Letters. 549, 94-98. Kim, K., Yoshida, D., and Teramoto, A. (2005). Expression of hypoxiainducible factor 1α and vascular endothelial growth factor in pituitary adenomas. Endocr 82 Pathol. 16, 115-121. Klingenspor, M., Dickopp, A., Heldmaier, G., and Klaus, S. (1996). Short photoperiod reduces leptin gene expression in white and brown adipose tissue og Djungarian hamster. FEBS Lett. 399. 290-294. Kuhajda, F.P., Jenner, K., Wood, F.D., Hennigar, R.A., Jacobs, L.B., Dick, J.D., and Pasternack, G.R. (1994). Fatty acid synthesis: a potential selective target for antineoplastic therapy. PNAS. 91, 6379-6383. Kuhajda, F. (2000). Fatty-acid synthase and human cancer: new perspectives on its role in tumor biology. Nutrition.16, 202-208. Leary, S.C., Kaufman, B.A., Pellecchia, G., Guercin, G.-H., Mattman, A., Jaksch, M., and Shobridge, E.A. (2004). Human SCO1 and SCO2 have independent, cooperative function in copper delivery to cytochrome c oxidase. Human Mol Gen. 13, 1839-1848. Lee, S.O., Lou, W., Hou, M., Onate, S.A., and Gao, A.C. (2003). Interleukin-4 enhances prostate-specific antigen expression by activation of the androgen receptor and Akt pathway. Oncogene. 22, 7981–7988. Lenka, N., Vijayasarathy, C., Mullick, J., and Avadhani, N.G. (1998). Structural organization and transcription regulation of nuclear genes encoding the mammalian cytochrome c oxidase complex. Prog Nucl Acid Res Mol Bio. 61, 309-344. Lin, K., Sherrington, P.D., Dennis, M., Matrai, Z., Cawley, J.C., and Pettitt, A.R. (2002). Relationship between p53 dysfunction, CD38 expression, and IgV(H) mutation in chronic lymphocytic leukemia. Blood. 100, 1404-1409. Masayesva, B.G., Mambo, E., Taylor, R.J., Goloubeva, O.G., Zhou, S., Cohen, Y., Minhas, K., Koch, W., Sciubba, J., Alberg, A.J., Sidransky, D., and Califano, J. (2006). Mitochondrial DNA content increase in response to cigarette smoking. Cancer Epidemiol Biomarkers Prev. 15, 19-24. Matoba, S., Kang, J. -G., Patino, W.D., Wragg, A., Boehm, M., Gavrilova, O., Hurley, P.J., Bunz, F., and Hwang, P.M. (2006). P53 regulated mitochondrial respiration. Science. 312, 1650-1653. Maxwell, P.H., Dachs, G.U., Gleadle, J.M., Nicholls, L.G., Harris, A.L., Stratford, I.J., Hankinson, O., Pugh, C.W., and Ratcliffe, P.J. (1997). Hypoxiainducible factor-1 modulates gene expression in solid tumors and influences both 83 angiogenesis and tumor growth. PNAS. 94, 8104–8109. Medes, G., Thomas, A., and Weinhouse, S. (1953). Metabolism of neoplastic tissue. IV. A study of lipid synthesis in neoplastic tissue slices in vitro. Cancer Res. 13, 27-29. Mickey, D.D., Stone, K.R., Wunderli, H., Mickey, G.H., and Paulson, D.F. (1980). Characterization of a human prostate adenocarcinoma cell line (DU 145) as a monolayer culture and as a solid tumor in athymic mice. Prog Clin Biol Res. 37, 67-84. Miralpeix, M., Azcon-Bieto, J., Bartrons, R., and Argiles, J.M. (1990). The impairment of respiration by glycolysis in the Lewis lung carcinoma. Cancer Lett. 50, 173-178. Miserez, A.R., Cao, G., Probst, L.C., and Hobbs, H.H. (1997). Structure of the human gene encoding sterol regulatory element binding protein 2 (SREBPF2). Genomics. 40, 31-40. Mohler, J.L., Gregory, C.W., Ford, O.H. 3rd, Kim, D., Weaver, C.M., Petrusz, P., Wilson, E.M., and French, F.S. (2004). The androgen axis in recurrent prostate cancer. Clin Cancer Res. 10, 440–448. Moreau, K., Dizin, E., Ray, H., Luquain, C., Lefai, E., Foufelle, F., Billaud, M., Lenoir, G.M., and Venezia, N.D. (2006). BRCA1 Affects lipid synthesis through its interaction with acetyl-CoA carboxylase. J Biol Chem. 281, 3172-3181. Moreno-Sanchez, R., Rodriguez-Enriquez, S., Marin-Hernandez, A., and Saavedra, E. (2007). Energy metabolism in tumour cells. FEBS Lett. 274, 1393-1418. Moscow, J.A., and Cowen, K.H. (1988). Multidrug resistance. J Natl Cancer Inst. 80, 14-20. Moyes, C.D., Mathieu-Costello, O.A., Tsuchiya, N., Filburn ,C., and Hansford, R.G. (1997). Mitochondrial biogenesis during cellular proliferation. Am J Physiol Cell Physiol. 272, C1345-C1351. Neufeld, G., Cohen, T., Gengrinovitch, S., and Poltorak, Z. (1999). Vascular endothelial growth factor (VEGF) and its receptors. FASEB J. 13, 9-22. Ookhtens, M., Kanna, R., Lyon, I., and Baker, N. (1984). Liver and adipose tissue contributions to newly formed fatty acids in an ascites tumour. Am J Physiol Regul Integr Comp Physiol. 247, 146-153. 84 Park, S.Y., Kim, Y.J., Gao, A.C., Onate, S.A., Hidalgo, A.A., Ip, C., Park, E.M., Yoon, S.Y., and Park, S.M. (2006). Hypoxia increases androgen receptor activity in prostate cancer cells. Cancer Res. 66, 5121-5129. Pelicano, H., Xu, R.-H., Du, M., Feng, L., Sasaki, R., Carew, J.S., Hu, Y., Ramdas, L., Hu, L., Keating, M.J., Zhang, W., Plunkett, W., and Huang, P. (2006). Mitochondrial respiration defects in cancer cells cause activation of Akt survival pathway through a redox-mediated mechanism. J Cell Biol. 175, 913-923. Petrylak, D.P., Tangen, C.M., Hussain, M.H., Lara, P.N., Jones, J.A., Taplin, M.E., Burch, P.A., Berry, D., Moinpour, C., Kohli, M., Benson, M.C., Small, E.J., Raghavan, D., and Crawford, E.D. (2004). Docetaxel and estramustine compared with mitoxantrone and prednisone for advanced refractory prostate cancer. N Eng J Med. 351, 1513-1520. Pizer, E.S., Lax, S.F., Kuhajda, F.P., Pasternack, G.R., and Kurman, R.J. (1998). Fatty acid synthase expression in endometrial carcinoma: correlation with cell proliferation and hormone receptors. Cancer. 83, 528-537. Puigserver, P., Wu, Z., Park, C.W., Graves, R., Wright, M., and Spiegelman, B.M. (1998). A cold-inducible coactivator of nuclear recptors linked to adaptive thermogenesis. Cell. 92, 829-839. Rashid, A., Pizer, E.S., Moga, M., Milgraum, L.Z., Zahurak, M., Pasternack, G.R., Kuhajda, and F.P., Hamilton, S.R. (1997). Elevated expression of fatty acid synthase and fatty acid synthetic activity in colorectal neoplasia. Amer J Pathol. 150, 201-208. Rice, G.C., Hoy, C., and Schimke, R.T. (1986). Transient hypoxia enhances the frequency of dihydrofolate reductase gene amplification in Chinese hamster ovary cells. PNAS. 83, 5978-5982. Robey, R.B., and Hay, N. (2005). Mitochondrial hexokinases: guardians of the mitochondria. Cell Cycle. 4, 654-658. Rodriguez-Enriquez, S., Kim, I., Currin, R.T., and Lemasters, J.J. (2006). Tracker dyes to probe mitochondrial autophagy (mitophagy) in rat hepatocytes. Autophagy. 2, 39-46. Rossi, S., Graner, E., Febbo, P., Weinstein, L., Bhattacharya, N., Onody, T., Bubley, G., Balk, S., and Loda, M. (2003). Fatty acid synthase expression defines 85 distinct molecular signatures in prostate cancer. Mol Cancer Res. 1, 707-715. Robey, R.B., and Hay, N. (2005). Mitochondrial hexokinases, novel mediators of the antiapoptotic effects of growth factors and Akt. Oncogene. 25, 4683-4696. Saikumar, P., Dong, Z., Patel, Y., Hall, K., Hopfer, U., Weinberg, J.M., Venkatachalam, M.A. (1998). Role of hypoxia-induced Bax translocation and cytochrome c release in reoxygenation injury. Oncogene. 17, 3401-3415. Scarpulla, R.C. (1997). Nuclear control of respiratory chain expression in mammalian cells. J Bioenerg Biomembr. 29, 109-119. Seagroves, T.N., Ryan, H.E., Lu, H., Wouters, B.G., Knapp, M., Thibault, P., Laderoute, K., and Johnson, R.S. (2001). Transcription factor HIF-1 is a necessary mediator of the Pasteur effect in mammalian cells. Mol Cell Biol. 21, 3436-3444. Semenza, G.L., and Wang, G.L. (1992). A nuclear factor induced by hypoxia via de novo protein synthesis binds to the human erythropoietin gene enhancer at a site required for transcriptional activation. Mol Cell Biol. 12, 5447–5454. Semenza, G.L. (1994). Regulation of erythropoietin production. New insights into molecular mechanisms of oxygen homeostasis. Hematol Oncol Clin North Am. 8, 863–884. Semenza, G. L., Roth, P. H., Fang, H.-M., and Wang, G. L. (1994). Transcriptional regulation of genes encoding glycolytic enzymes by hypoxia-inducible factor 1. J Biol Chem. 269, 23757-23763. Semenza, G.L., Jiang, B.-H., Leung ,S.W., Passantino, R., Concordet, J.-P., Maire, P., and Giallongo, A. (1996). Hypoxia response elements in the aldolase a, enolase 1, and lactate dehydrogenase a gene promoters contain essential binding sites for hypoxia-inducible factor 1. J Biol Chem. 271, 32529-32537. Semenza, G.L. (2000). Hypoxia, clonal selection, and the role of HIF-1 in tumour progression. Crit Rev Biochem Mol Biol. 35, 71-103. Semenza, G.L. (2007). Hypoxia-inducible factor 1 pathway. Science Signaling. 2007, cm8. Shamash, J., Dancey, G., Barlow, C., Wilson, P., Ansell, W., and Oliver, R.T. (2005). Chlorambucil and lomustine (CL56) in absolute hormone refractory prostate cancer: re-introduction of endocrine sensitivity an unexpected finding. Br J Cancer. 92. 86 36-40. Shaw, G.L., Wilson, P., Cuzick, J., Prowse, D.M., Goldenberg, S.L., Spry, N.A., and Oliver, T. (2007). International study into the use of intermittent hormone therapy in the treatment of carcinoma of the prostate: a meta-analysis of 1446 patients. BJU. 99, 1056-1065. Shurbaji, M.S., Kuhajda, F.P., Pasternack, G.R., and Thurmond, T.S. (1992). Expression of oncogenic antigen 519 (OA-519) in prostate cancer is a potential prognostic indicator. Amer J Clin Pathol. 97, 686-691. Smalley, K.S.M., Brafford, P.A., and Heryln, M. (2005). Selective evolutionary pressure from the tissue microenvironment drives tumour progression. Semin Cancer Biol. 15, 451-459. Stambolic, V., Suzuki, A., de la Pompa, J.L., Brothers, J.M., Mirtsos, C., Sasaki, T., Ruland, J., Penninger, J.M., Siderovski, D.P., and Mak, T.W. (1998). Negative regulation of PKB/Akt—dependent cell survival by the tumor suppressor PTEN. Cell. 95, 29-39. Stump, C.S., Short, K.R., Bigelow, M.L., Schimke, J.M., and Nair, S. (2003). Effect of insulin on human skeletal muscle mitochondrial ATP production, protein synthesis, and mRNA transcripts. PNAS. 100: 7996-8001. Sutherland, R.M. (1988). Cell and environment interactions in tumour microregions: the multicell spheroid model. Science. 240, 177-184. Swinnen, J.V., Veldhoven, P.P., Esquenet, M., Heyns, W., and Verhoeven, G. (1996). Androgens markedly stimulate the accumulation of neutral lipids in the human prostatic adenocarcinoma cell line LNCaP. Endocrinology. 137, 4468-4474. Swinnen, J.V., Ulrix, W., Heyns, W., and Verhoeven, G. (1997). Coordinate regulation of lipogenic gene expression by androgens: Evidence for a cascade mechanism involving sterol regulatory element binding proteins. 94, 12975-12980. Swinnen, J.V., Heemerss, H., Deboel, L., Foufelle, F., Heyns, W., and Verhoeven, G. (2000a). Stimulation of tumour-associated fatty acid synthase expression by growth factor activation of the sterol regulatory element-binding protein pathway. Oncogene. 19, 5173-5181. Swinnen, J.V., Vanderhoydonc, F., Elgamal, A.A., Eelen, M., Vercaeren, I., Joniau, S., Van Poppel, H., Baert, L.,Goosens, K., Heyns, W., and Verhoeven, G. (2000b). Selective activation of the fatty acid synthesis pathway in human prostate 87 cancer. Int J Cancer. 88, 176-179. Swinnen, J.V., Roskams, T., Joniau, S., Van Poppel, H., Oyen, R., Baert, L., Heyns, W., and Verhoeven, G. (2002). Overexpression of fatty acid synthase is an early and common event in the development of prostate cancer. Int J Cancer. 98, 19-22. Swinnen, J.V., Van Veldhoven, P.P., Timmermans, L., De Schrijver, E., Brusselmans, K., Vanderhoydonc, F., Van de Sande, T., Heemerss, H., Heyns, W., and Verhoeven, G. (2003). Fatty acid synthase drives the synthesis of phospholipids partitioning into detergent-resistant membrane microdomains. Biochem Biophys Res Commun. 302, 898-903. Swinnen, J., Brusselmans, K., and Verhoeven, G. (2006). Increased lipogenesis in cancer cells: new players, novel targets. Curr Opin Clin Nutr Metab Care. 9, 358-365. Taplin, M.E., Bubley,G.J., Shuster, T.D., Frantz, M.E., Spooner, A.E., Ogata, G.K., Keer, H.N., and Balk, S.P. (1995). Mutation of the androgen-receptor gene in metastatic androgen-independent prostate cancer. N Engl J Med. 332,1393–1398. Taplin, M.E., Rajeshkumar, B., Halabi, S., Werner, C.P., Woda, B.A., Picus, J., Stadler, W., Hayes, D.F., Kantoff, P.W., Vogelzang, N.J. and Small, E.J. (2003). Androgen receptor mutations in androgen-independent prostate cancer: Cancer and Leukemia Group B Study 9663. J Clin Oncol. 21, 2673–26788. Takahashi, Y., Bucana, C.D., Cleary, K.R., and Ellis, L.M. (1998). P53, vessel count, and vascular endothelial growth factor expression in human colon cancer. Int J Cancer. 79, 34-38. Vaupel, P., Kelleher, D.K., and Hockel, M. (2001). Oxygen status of malignant tumours: pathogenesis of hypoxia and significance for tumour therapy. Semin Oncol 2. Suppl 8, 29-35. Veldscholte, J., Berrevoets, C.A., Brinkmann, A.O., Grootegoed, J.A., and Mulder, E. (1992). Anti-androgens and the mutated androgen receptor of LNCaP cells: differential effects on binding affinity, heat-shock protein interaction, and transcription activation. Biochemistry. 31, 2393-2399. Visakorpi, T., Hyytinen, E., Koivisto, P., Tanner, M., Keinanen, R., Palmberg, C., Palotie, A., Tammela, T., Isola, J., and Kallioniemi, O.P. (1995). In vivo amplification of the androgen receptor gene and progression of human prostate cancer. Nat Genet. 9, 401–406. 88 Vivanco, I., and Sawyers, C.L. (2002). The phosphatidylinositol 3-Kinase AKT pathway in human cancer. Nature Rev Cancer. 2, 489-501. Vogelstein, B., Lane, D. and Levine, A.J. (2000). Surfing the p53 network. Nature. 408, 307–310. Vogelstein, B., and Kinzer, W. (2004). Cancer genes and the pathways they control. Nat Med. 10, 789-799. Wallace, D.C. (1999). Mitochondrial diseases in man and mouse. Science. 283, 1482–1488. Warburg, O., Wind, F., Negelein, E., and den Stoffwechsel, U. (1926). Von Tumouren im Korper. Klin Woch. 5, 829-832. Warburg, O. (1930). The Metabolism of Tumours. Constable Press, London. Wei, M.C., Zong, W.- X., Cheng, E. H.- Y., Lindsten, T., Panoutsakopoulou, V., Ross, A.J., Roth, K.A., MacGregor, G.R., Thompson, C.B., and Korsmeyer, S.J. (2001). Proapoptotic BAX and BAK: A requisite gateway to mitochondrial dysfunction and death. 292, 727-730. Weinhouse, S. (1956). On respiratory impairment in cancer cells. Science. 124, 267-269. Welsh, J.B., Sapinoso, L.M., Su, A.I., Kern, S.G., Wang-Rodriquez, J., Moskaluk, C.A., Frierson, H.F., and Hampton, G.M. (2001). Analysis of gene expression identifies candidate markers and pharmacological targets in prostate cancer. Cancer Res. 61, 5974-5978. Wilding, G., Zugmeier, G., Knabbe, C., Flanders, K., and Gelmann, E. (1989). Differential effects of transforming growth factor-ß on human prostate cancer cells in vitro. Mol Cell Endocrinol. 62, 79-87. Wu, Z., Puigserver, P., Andersson, U., Zhang, C., Adelmant, G., Mootha, V., Troy, A., Cinti, S., Lowell, B., Scarpulla, R.C., and Spiegelman, B.M. (1999). Mechanisms controlling mitochondrial biogenesis and respiration through the thermogenic coactivator PGC-1. Cell. 98, 115-124. Xu, R. H., Pelicano, Y., Zhou, J.S., Carew, L., Feng, K.N. and Bhalla, M.J. Keating, and P. Huang. (2005). Inhibition of glycolysis in cancer cells: a novel strategy to overcome drug resistance associated with mitochondrial respiratory defect and 89 hypoxia. Cancer Res. 65, 613–621. Yoon, J.C., Puigserver, P., Chen, G., Donovan, J., Wu, Z., Rhee, J., Adelmant, G., Stafford, J., Kahn, C.R., Granner, D.K., Newgard, C.B., Spiegelman, B.M. (2001). Control of hepatic gluconeogenesis through the transcriptional coactivator PGC-1. Nature. 413, 131-138. Young, C.D., and Anderson, S.M. (2008). Sugar and fat- that’s where it’s at: metabolic changes in tumors. Br Cancer Res. 10, 202-211. Zhang, G.Y., Ahmed, N., Riley, C., Oliva, K., Barker, G., Quinn, M.A., and Rice, G.E. (2005). Enhanced expression of peroxisome proliferator-activated receptor gamma in epithelial ovarian carcinoma. BJC. 92, 113-119. Zhong, H., Agani, F., Baccala, A.A., Laughner, E., Rioseco-Camacho, N., Isaacs, W.B., Simons, J.W., and Semenza, G.L. (1998). Increased expression of hypoxia inducible factor-1a in rat and human prostate cancer. Cancer Res. 58, 52805284. Zu, X., and Guppy, M. (2004). Cancer metabolism: facts, fantasy and fiction. Biochem Biophys Res Commun. 313, 459-465. 90 Appendix 1 Supplementary Figure 1. Integration of Cellular Pathways Involved in Aerobic Glycolysis in Cancer Cells. Some cancer cells depend primarily on glycolysis for cellular ATP production. This may be due to 1) selection under hypoxic conditions, 2) mitochondrial dysfunction, 3) activation of Akt, or 4) inactivation of p53. Under hypoxic conditions, HIF-1 stimulates the transcription of its targets involved in glucose uptake and glycolysis. Similarly, oxidative impairment might lead to a cell with an increased glycolytic rate. Activation of Akt stimulate glycolysis without affecting cellular respiration which may also explain aerobic glycolysis. Lastly, inactivation of p53 may be responsible for aerobic glycolysis via the proteins TIGAR and SCO2. TIGAR is involved in shunting glucose-6-phosphate to the pentose phosphate pathway. SCO2 is involved in complex IV holoenzyme formation. These proteins are expressed in a p53 dependent manner. Figure obtained from Young and Anderson (2008). 91 Supplementary Table 1. Raw cycle thresholds of real-Time PCR data comparing LNCaP, DU145, and PC3 cells (Figure 7) SREBP1a SREBP-2 SREBP1c SCAP FAS Acc1 HKII HIF1a VEGF65 VEGF212 ALDOa PKm LDHa PGC-1a NRF-2 COXIV CS COXI LNCaP mean sem DU145 mean sem PC3 mean sem 1.87 5.96 0.16 1.03 2.66 19.42 0.17 1.35 3.78 13.71 0.25 0.65 12.26 4.82 24.23 3.00 1.14 6.17 1.19 1.04 323.33 1.40 178.88 0.22 1.78 87.43 60.52 888.16 0.95 2.36 0.36 13.22 3.92 20.08 0.28 3.41 0.10 1.20 1.17 137.57 0.12 54.54 0.09 18.88 61.40 547.94 0.42 2.74 34.55 197.68 0.03 0.37 0.07 4.39 17.60 252.93 14.85 162.73 120.64 2429.45 92 0.29 1.67 0.07 1.99 18.22 1.71 2.51 20.61 1.91 0.14 3.53 0.18 0.26 8.29 0.14 24.82 113.91 8.04 2.29 10.37 0.42 1.06 3.09 0.23 99.61 1100.59 431.44 0.57 18.65 6.97 38.80 754.65 251.21 0.24 1.36 0.49 0.89 8.30 0.42 42.22 70.03 10.42 31.43 63.20 1.98 93.35 1558.66 92.26 Supplementary Table 2. Raw cycle thresholds of real-Time PCR data comparing LNCaP and derived lines (Figure 11) SREBP1a SREBP-2 SREBP1c SCAP FAS Acc1 HKII HIF1a VEGF65 VEGF212 ALDOa PKm LDHa PGC-1a NRF-2 COXIV CS COXI LNCaP mean sem HPLNCaP mean 1.87 5.96 0.16 1.03 2.97 8.95 12.26 4.82 24.23 3.00 1.14 6.17 1.19 1.04 323.33 1.40 178.88 0.22 1.78 87.43 60.52 888.16 sem LNCaPluc mean sem 0.34 1.38 1.83 5.71 0.51 1.16 0.95 11.86 1.51 0.21 0.36 9.11 0.68 12.26 3.92 16.24 0.59 4.74 0.28 4.27 0.47 1.71 0.10 1.64 0.25 2.07 1.17 16.59 0.69 118.92 0.12 3.49 0.68 2.42 0.09 4.52 1.01 1.40 61.40 612.38 82.28 871.26 0.42 2.68 0.26 18.38 34.55 310.29 37.93 584.80 0.03 0.53 0.07 0.12 0.07 3.22 0.24 24.26 17.60 112.28 4.66 153.80 14.85 69.10 1.63 71.72 120.64 4350.15 1010.16 1400.55 93 0.06 0.67 0.62 0.15 0.16 9.00 0.14 0.12 57.57 1.60 44.85 0.02 1.95 12.35 3.29 57.59 Supplementary Table 3. Raw cycle thresholds of real-Time PCR data comparing HP-LNCaPs and xenografts (Figure 12) HPHP LNCaP xenograft mean sem mean sem SREBP1a 2.97 0.34 2.16 0.21 SREBP-2 8.95 1.38 16.32 2.66 SREBP11.86 1.51 5.87 0.51 1c SCAP 9.11 0.68 44.13 6.75 FAS 16.24 0.59 9.80 2.13 Acc1 4.27 0.47 2.32 0.29 HKII 1.64 0.25 2.34 0.86 HIF1a 16.59 0.69 28.89 4.09 VEGF65 3.49 0.68 10.59 2.90 VEGF212 4.52 1.01 9.09 2.16 ALDOa 612.38 82.28 150.02 32.40 PKm 2.68 0.26 1.41 0.57 LDHa 310.29 37.93 127.78 64.81 PGC-1a 0.53 0.07 3.85 1.89 NRF-2 3.22 0.24 4.94 1.06 COXIV 112.28 4.66 353.53 120.23 CS 69.10 1.63 49.35 11.33 COXI 4350.15 1010.16 17001.49 5153.78 94 Supplementary Table 4. Raw cycle thresholds of real-Time PCR data comparing LNCaP-luc cells and xenografts (Figure 13) LNCaP-luc kidney LNCaP-luc LNCaP-luc leg mean sem mean sem mean sem SREBP1a 1.83 0.51 1.30 0.10 1.73 0.23 SREBP-2 5.71 1.16 5.69 0.32 9.14 0.01 SREBP1c 0.21 0.06 0.11 0.02 0.17 0.02 SCAP 12.26 0.67 14.15 1.00 13.63 1.17 FAS 4.74 0.62 4.29 0.34 7.78 0.78 Acc1 1.71 0.15 1.24 0.15 1.22 0.14 HKII 2.07 0.16 3.88 0.45 3.78 0.65 HIF1a 118.92 9.00 63.85 9.21 50.90 3.02 VEGF65 2.42 0.14 2.71 0.22 4.58 0.66 VEGF212 1.40 0.12 1.24 0.14 2.02 0.26 ALDOa 871.26 57.57 775.26 37.67 1131.93 263.94 PKm 18.38 1.60 28.90 2.05 33.90 3.23 LDHa 584.80 44.85 395.42 27.78 355.50 21.23 PGC-1a 0.12 0.02 0.25 0.05 0.06 0.01 NRF-2 24.26 1.95 18.81 1.79 16.47 0.83 COXIV 153.80 12.35 158.32 10.29 97.70 5.65 CS 71.72 3.29 40.03 2.17 45.11 2.37 COXI 1400.55 57.59 3023.87 436.86 6261.51 1530.01 95 Supplementary Table 5. Raw cycle thresholds of real-Time PCR data comparing LNCaP, DU145, and PC3 cells following low oxygen treatment (Figure 14) LNCaP control hypoxia anoxia azide DU145 control hypoxia anoxia azide PC3 control hypoxia anoxia azide SREBP VEGF 1a mean 1.12 1.74 sem 0.11 0.07 mean 1.36 1.38 sem 0.09 0.09 mean 3.62 1.83 sem 0.35 0.08 mean 2.01 0.58 sem 0.25 0.03 SREBP VEGF 1a mean 8.14 1.14 sem 0.57 0.05 mean 24.56 0.99 sem 2.31 0.10 mean 21.26 0.94 sem 5.01 0.08 mean 14.06 0.34 sem 5.22 0.04 SREBP VEGF 1a mean 3.29 1.05 sem 0.40 0.08 mean 14.47 3.01 sem 0.89 0.38 mean 19.43 2.19 sem 3.02 0.08 mean 5.28 0.35 sem 0.66 0.03 SREBP1c SCAP FAS ACC1 HKII 2.22 6.05 12.70 3.78 0.92 0.19 0.36 1.82 0.15 0.05 1.26 4.82 6.36 2.28 1.45 0.09 0.13 0.42 0.10 0.11 1.34 5.52 5.77 2.02 3.45 0.02 0.46 0.87 0.11 0.28 0.53 6.26 4.79 2.21 0.93 0.09 1.13 0.91 0.44 0.26 SREBP1c SCAP FAS ACC1 HKII 1.81 5.86 10.57 1.78 1.55 0.42 0.47 1.44 0.12 0.16 2.75 5.26 9.90 1.58 2.00 0.32 0.33 1.38 0.12 0.14 2.12 4.38 7.72 1.21 2.80 0.41 0.37 0.92 0.11 0.27 1.55 3.90 3.96 1.31 1.66 0.93 0.08 0.30 0.08 0.12 SREBP1c SCAP FAS ACC1 HKII 0.11 6.91 2.24 0.79 1.55 0.01 0.47 0.27 0.04 0.11 0.29 7.29 3.04 0.80 10.83 0.06 0.85 0.15 0.05 1.04 0.35 6.22 2.69 0.68 12.47 0.06 1.05 0.27 0.08 1.58 0.08 6.63 1.17 0.69 3.15 0.02 0.41 0.23 0.03 0.59 96