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REVIEWS MONITORING OF STORED AND AVAILABLE FUEL BY THE CNS: IMPLICATIONS FOR OBESITY Randy J. Seeley and Stephen C. Woods Adult mammals do a masterful job of matching caloric intake to caloric expenditure. To accomplish this, the central nervous system (CNS) must be able to monitor the status of peripheral energy stores and ongoing fuel availability. Recent observations support the hypothesis that ongoing fuel availability can be monitored directly in the CNS by mechanisms that extend beyond the sensing of glucose (the primary neuronal fuel). Questions remain as to how signals from stored and available fuel are integrated, and it will be vital to answer these key neuroscience questions to develop biological therapies to curb the growing human and monetary costs of obesity. Department of Psychiatry and Obesity Research Center, University of Cincinnati, Cincinnati, Ohio 45267-0559, USA. Correspondence to R.J.S. e-mail: [email protected] doi:10.1038/nrnXXX Eating encompasses a complex series of behaviours that are influenced by various environmental and biological factors. The history of biology and neuroscience includes numerous attempts to understand the neural underpinnings of eating, and these attempts have taken on an unfortunate urgency over the last decade owing to the exponential increase in obesity in both the developed and developing world. The Surgeon General of the United States estimates that more than 300,000 deaths in the United States each year can be attributed to the effects of obesity (compared with the estimated 400,000 deaths that are attributable to tobacco)1. It is particularly troubling that children are not being spared by this epidemic — 15.5% of children aged from 12 to 19 are now considered to be obese, a rise of 50% in just the last 10 years2. The human and monetary costs of obesity will continue to rise unless effective preventive and/or therapeutic strategies can be developed. Although our growing waistlines might indicate otherwise, the system that matches caloric intake to caloric expenditure is remarkably accurate. A typical male human consumes approximately 900,000 calories per year. To gain just one extra pound per year requires him to eat approximately 4000 calories more than are burned in that year (or just 11 calories per day). So, a gain of one pound per year reflects an error of less than half of one percent. In fact, the average yearly increase of NATURE REVIEWS | NEUROSCIENCE weight in the U.S. population is less than one pound per adult. However, it should be stressed that this statistic does not take into account the considerable variability between individuals, and environmental and genetic factors both contribute to susceptibility to weight gain. There are two stories to tell about how the body weight-regulatory system relates to the crisis of obesity. The first focuses on the small, cumulative inaccuracies of the system, which result in gradual weight gain in some individuals. Considerable controversy surrounds this topic, with disagreements about the dietary and environmental contributions that have brought us to this situation. Clearly, something about our lives has changed over the last 50 years that has resulted in the increasing prevalence of obesity, and identifying these factors and understanding how they alter the regulatory system is an area of intense investigation3–5. Although such work is vital, this topic is outside the scope of this review. The second story concerns how, under most circumstances, the biological system that matches caloric intake to caloric expenditure achieves its remarkable degree of accuracy. In this article, we will focus on this accuracy and review some of the advances over the past decade that have shed light on how this system maintains energy balance. We suggest that to achieve such accurate regulation, the system integrates signals from both stored fuel and currently available fuel6. VOLUME 4 | NOVEMBER 2003 | 1 REVIEWS Understanding how such signals are generated and how they are integrated are important neuroscience questions whose answers will provide new opportunities for interventions to treat obesity. The history of obesity research LIMBIC A term that refers to a system of cortical and subcortical structures that are important for processing memory and emotional information. Prominent structures include the hippocampus and amygdala. Research on the neural control of energy balance began in earnest with the observation that lesions of specific nuclei in the hypothalamus could produce either profound increases or decreases in food intake and body weight, depending on the exact location of the lesion7,8. These observations focused an enormous amount of research attention on how specific hypothalamic nuclei control ingestive behaviour. Recent work has clearly shown that ingestive behaviour is influenced by a distributed neural network, which includes caudal brainstem, LIMBIC and cortical structures9,10, yet most research continues to focus on critical hypothalamic circuits. Over the last 50 years, there has been considerable debate about what these CNS circuits actually monitor to maintain energy balance. Two main philosophical positions emerged and competed for the research spotlight. One of these is based on the hypothesis that the hypothalamus monitors the storage and metabolism of fat (lipostatic theory), and the other is based on the hypothesis that the hypothalamus monitors the storage and use of carbohydrate (glucostatic theory). The lipostatic hypothesis was first postulated by G. Kennedy in the 1950s (REF. 11), and it posited that the function of energy homeostasis (food intake and energy expenditure) is to regulate total body fat in response to feedback signals from fat depots to the brain. Glucostatic hypotheses were first championed by Carlson in the early twentieth century, but were articulated and popularized by J. Mayer in the 1950s (REF. 12). They were based on the observation that neurons use glucose as their primary fuel, and that fluctuations in glucose availability or usage are monitored and linked to the control of food intake. By eating when glucose availability or usage is low, energy intake can keep up with energy expenditure and thereby maintain energy balance. Scientific debate has focused on which of these positions offers more insight into the process of energy homeostasis and which will yield better therapeutic strategies to treat obesity. In fact, each has significant problems in explaining the richness of ingestive behaviour and the dynamic regulation of energy balance. We suggest that the important question is not which of these positions is correct, but rather how the signals from these two disparate systems are integrated to control ingestive behaviour. At the heart of this issue is a set of classic neuroscience questions that provide a unique opportunity for the neuroscience community to make vital contributions to stem the tide of obesity and reduce the resulting financial and human toll. BLOOD–BRAIN BARRIER A barrier that is formed by endothelial tight junctions that limit the entry of leukocytes, immunoglobulins, cytokines and complement proteins into the central nervous system. 2 Lipostatic regulation Adiposity signals. The central challenge of Kennedy’s lipostatic hypothesis is to understand how the CNS can monitor the collective status of adipocytes that are dispersed throughout the body. Although direct neural | NOVEMBER 2003 | VOLUME 4 signals are a possibility, several lines of research point to a key role for humoral signals13. To be an ‘adiposity’ signal, a circulating compound must meet several criteria. First, it must circulate in proportion to the total amount of stored fat. Second, it should interact with the brain directly, presumably by crossing the BLOOD–BRAIN BARRIER to act on specific receptors in regions of the CNS that are involved in the regulation of food intake and energy expenditure. Finally, changes in its level or activity should produce predictable changes in energy balance by altering food intake and energy expenditure14,15. The discovery of the hormone leptin by positional cloning of the obesity (ob) locus in 1994 made the concept of a circulating adiposity signal a reality16, and it irrevocably changed the landscape for understanding the regulation of energy balance. Leptin is made primarily in white fat (although some is made by the stomach as well)17, and it circulates in direct proportion to total adiposity, with increasing levels seen as energy stores in the form of adipose tissue increase18,19. It should be noted that leptin secretion is more dynamic than was first appreciated, and it seems to be linked to energy flux within adipocytes20,21. As a result, during periods of negative energy balance, levels of leptin fall considerably faster than the rate at which adipose tissue is consumed. Leptin receptors are found in numerous peripheral tissues, as well as in several regions of the brain, with the highest concentrations being found in the arcuate nucleus of the hypothalamus22. Leptin can interact with these CNS neurons because it crosses the blood–brain barrier through what seems to be a saturable transport process19,23,24. On the basis of these observations, the prediction is that increased CNS leptin signalling would be interpreted as if body fat had suddenly increased, and the brain would respond by decreasing food intake with consequent weight loss. Conversely, decreased CNS leptin signalling would elicit increased food intake and weight gain. Soon after the identification of leptin, these predictions were confirmed25–29. Although leptin has received the lion’s share of experimental attention, other hormones have also been hypothesized to function as adiposity signals. Before leptin was discovered, compelling evidence implicated insulin as an adiposity signal30. Insulin is produced by pancreatic β-cells rather than by adipocytes. Like leptin, insulin is secreted in response to changes in energy flux within β-cells31. However, insulin secretion in response to local energy is in turn influenced by the amount of stored fat, with the consequence that insulin secretion is directly proportional to stored fat32,33. Lean animals (including humans) have lower plasma levels of insulin than do obese animals. So, although insulin levels fluctuate broadly as nutrients are ingested and absorbed, both the basal level of insulin and the total area under the 24-hour insulin curve are accurate indicators of body adiposity32,33. Like leptin, insulin penetrates the blood–brain barrier34, and insulin receptors are found in the CNS and concentrated in the arcuate nucleus35,36. Therefore, insulin fulfills the first two criteria for an adiposity signal. www.nature.com/reviews/neuro involved in the control of food intake and body weight [Au: please explain* and edit title to one line only please] REVIEWS Box 1 | List of peptides and neurotransmitters hypothesized to be Anabolic agouti-related protein | beacon | β-endorphin | corticosterone | dopamine | dynorphin | endocannibinoids | ghrelin | interleukin-1 receptor antagonist | melanin-concentrating hormone | noradrenaline | neuropeptide Y | orexins/hypocretins Catabolic α-melanocyte-stimulating hormone | amylin | brain-derived neurotrophic factor | ciliary neurotrophic factor | cocaine- and amphetamine-related transcript* | corticotropin-releasing hormone | galanin-like peptide | glucagon-like peptide 1 | glucagon-like peptide 2 | histamine | insulin | interleukin-1 | interleukin-2 | leptin | neurotensin | oxytocin | oxyntomodulin | prolactin-releasing peptide | serotonin | tumor necrosis factor-α | urocortin | urocortin II | urocortin III ANTISENSE OLIGONUCLEOTIDES Single-stranded RNA molecules that are complementary to a portion of a messenger RNA (mRNA). They bind to the mRNA and arrest translation by physical blockade of ribosomal machinery and/or by activation of endogenous RNases. HYPERPHAGIA Increased feeding. Assessing whether insulin signalling in the CNS influences overall energy balance is more complicated than in the case of leptin, because circulating insulin is the main mediator of glucose uptake into muscle and adipose tissue. When insulin is administered systemically, plasma glucose levels decline rapidly, thereby compromising glucose availability to the CNS. The resulting hypoglycaemia in turn elicits increased caloric intake37. Furthermore, targeted disruption of either insulin or the insulin receptor causes animals to die before reaching adulthood. These factors have made it difficult to build a compelling argument for the role of insulin as an adiposity signal. Nevertheless, the function of insulin signalling in the CNS has been revealed by administering insulin directly into the CNS and by disrupting insulin receptors locally in the brain. When insulin is administered into the brain’s ventricular system in either baboons or rats, it elicits a dose-dependent reduction of food intake and body weight38–40 that is not secondary to incapacitation or illness41. Targeted disruption of the insulin receptor in all neurons in mice results in higher food intakes, more body fat and increased susceptibility to diet-induced weight gain42. Moreover, ventricular administration of insulin receptor ANTISENSE OLIGONUCLEOTIDES produces 43 HYPERPHAGIA and weight gain . In the past few years, compounds known as insulin mimetics have been identified that penetrate cell membranes and mimic insulin’s actions by interacting directly with the intracellular β-subunit of the insulin receptor44. These compounds are lipid soluble, and they cross the blood–brain barrier at a higher rate than insulin itself. Administration of an insulin mimetic, either systemically or directly into the brain, potently reduces food intake and body weight, and when it is mixed directly with the diet it reduces weight gain on a high-fat diet45. All of these findings indicate that insulin fulfils the third criterion for an adiposity signal, thereby completing the parallel with the actions of leptin. Although insulin and leptin each convey a signal that is proportional to body fat stores, there are important differences between them. For example, leptin provides a relatively stable signal, having a half-life of around 45 minutes in the plasma46. Insulin secretion, on the other hand, changes with meals, exercise, stress and most other behaviours, and its half-life is between 2 and 3 NATURE REVIEWS | NEUROSCIENCE minutes. However, the magnitude of each of these rapid fluctuations of insulin is directly proportional to the size of the adipose mass. So, insulin provides the brain with information about ongoing glucose availability and use, as well as about body fat. Another difference is that leptin is a better correlate of subcutaneous fat47,48, whereas insulin correlates better with visceral fat49–51. Because visceral fat poses a much greater risk than subcutaneous fat for developing the metabolic complications that are associated with obesity, plasma insulin is more predictive of these metabolic disorders than is plasma leptin. On average, males have more visceral fat, whereas females have more subcutaneous fat, so males have a greatly increased risk of developing hypertension, type 2 diabetes, cardiovascular disease and many cancers49. Our recent observation that females rats are more sensitive to leptin than to insulin, and that the converse is true of male rats52, is consistent with these findings and implies that therapeutic approaches to the treatment of obesity might differ in males and females. Catabolic and anabolic effector pathways. Since the identification of leptin, there has been a considerable research effort to identify the neural circuits that mediate the effects of adiposity signals in the CNS to limit food intake and elevate energy expenditure53. The success of these efforts has been impressive, and dozens of neurotransmitter systems with actions in the hypothalamus and other brain regions have been identified that influence food intake and/or body weight (BOX 1). An important challenge is to organize this expanding list into functional circuits to identify opportunities to intervene and produce significant and sustained weight loss. One first-order approach is to partition the roster of neurotransmitters that are linked to the control of energy balance into two functionally opposite categories54. The first includes neurotransmitters whose main action is to decrease food intake, increase energy expenditure and consequently induce negative energy balance. These transmitters are integral components of catabolic effector circuits, and they are thought to be stimulated by increased levels of adiposity signals such as leptin and insulin. The second category includes neurotransmitters that increase food intake, decrease energy expenditure and induce positive energy balance. They are components of anabolic effector circuits, and they are predicted to be inhibited by adiposity signals. This organization implies a strict negative feedback model that can respond robustly to changes in the amount of stored fat and thereby maintain a relatively constant level of total adipose mass (FIG. 1). For example, when recent food intake has not provided sufficient calories to match ongoing energy expenditure (as occurs when one is dieting), calories are liberated from adipose tissue to fill the gap. As adipose tissue is consumed, levels of both leptin and insulin decline, resulting in suppressed CNS catabolic activity and enhanced anabolic activity. Together, these changes result in an increased drive to decrease energy expenditure and to consume extra calories when they become available, thereby returning the adipose mass to its previous level. The model is VOLUME 4 | NOVEMBER 2003 | 3 REVIEWS Energy balance Positive Negative Low insulin & leptin High insulin & leptin + – Anabolic Catabolic Increased food intake and weight gain + – Catabolic Anabolic Decreased food intake and weight loss Figure 1 | The relationship between energy balance, adiposity signals and the activity of anabolic and catabolic effector pathways. During periods of negative energy balance, the levels of adiposity signals (insulin and leptin) fall. As a result, the balance of activity between anabolic and catabolic pathways is altered to favour increased anabolic activity. Increased anabolic activity results in increased food intake and decreased energy expenditure. This combination results in the accretion of stored fuel in the form of adipose tissue. During periods of positive energy balance, the levels of adiposity signals rise, tipping the balance towards catabolic activity, which leads to decreased food intake and weight loss. symmetrical, in that consumption of calories beyond expenditure would result in elevated leptin and insulin, and consequent loss of any gained body fat. However, although it is clear that animals, including humans, respond to positive energy balance, it is less clear that this response is mediated by increasing levels of adiposity signals. Several lines of evidence indicate that these signals are more important for signalling energy deficit than surfeit55,56. INVERSE AGONIST A ligand that reduces the proportion of receptors that are in an active configuration, thereby producing the opposite effects to an agonist. 4 The CNS melanocortin system. Although the catabolic/anabolic dichotomy depicted in FIG. 1 provides useful predictions about how the CNS control system is influenced by levels of adiposity signals, it does not identify the components of the CNS circuits that are the primary targets for the actions of leptin and insulin. One logical path to identify the most crucial circuits is to focus on neurotransmitter systems that have the highest levels of leptin and insulin receptor expression. These are located in the hypothalamic arcuate nucleus (FIG. 2). Two distinct neuronal populations, each of which expresses leptin and insulin receptors, have been identified in the arcuate. Considerable attention has been focused on neurons that express the large precursor molecule pro-opiomelanocortin (POMC). POMC has many post-translational products, two families of which are important in the control of energy homeostasis — the endorphins and the melanocortins57. Melanocortin peptides include adrenocorticotropic hormone (ACTH) and α-melanocyte stimulating hormone (α-MSH). α-MSH exerts a net catabolic action in the CNS. POMC-expressing neurons are found largely in the arcuate nucleus, and leptin and insulin both decrease POMC gene expression there58–60. Administration of exogenous α-MSH or synthetic analogues also potently suppresses food intake and produces weight loss61–63. This is consistent with the hypothesis that the melanocortins predominate and that arcuate POMC neurons are primarily catabolic. | NOVEMBER 2003 | VOLUME 4 Five melanocortin (MC) receptor subtypes have been identified. The MC3 and MC4 receptors are strongly expressed in the CNS, particularly in the hypothalamus64–66. Global disruption of the MC4 receptor results in mice that show increased food intake and body weight67, implying that MC4 receptor signalling provides crucial inhibitory tone that restrains food intake and weight gain, as would be predicted for an important catabolic effector system. The general hypothesis is that an important aspect of the ability of leptin and insulin to reduce food intake when administered to the CNS is stimulation of arcuate POMC neurons, leading to release of α-MSH and increased MC4 signalling in several hypothalamic nuclei. Consistent with this, leptin increases electrical activity in arcuate POMC neurons68, and the catabolic actions of both leptin and insulin are ameliorated by pretreatment with low doses of an antagonist for the MC4 receptor69–71. Melanocortins are so-named because circulating α-MSH regulates skin and hair pigmentation by stimulating MC1 receptors72. Pigmentation is also regulated by a second hormone called agouti signalling protein (ASP), which is a competitive antagonist/INVERSE AGONIST at MC1 receptors73. So, the control of pigmentation is determined by the relative activity of an endogenous agonist and an endogenous antagonist, and this unusual control system also exists in the CNS. Agouti-related peptide (AGRP), a CNS neurotransmitter that is expressed only in the arcuate, was identified on the basis of its sequence homology with ASP74. AGRP is a competitive antagonist/inverse agonist at CNS MC4 receptors, so its actions oppose those of α-MSH75. Consistent with an important role as an anabolic effector,AGRP expression is increased in fasting and leptin-deficient mice76. AGRP is made exclusively in a population of arcuate neurons that co-express neuropeptide Y (NPY), another transmitter that stimulates food intake and weight gain77,78 (FIG. 2). Administration of AGRP into the CNS increases food intake, a response that starts within a few hours and persists for as long as six days79,80. The basis for this unusually long-term stimulation of food intake remains unclear, but it is not mediated by continued MC4 receptor occupation79. It should be noted, however, that in contrast to the marked effects of either AGRP administration or genetic overexpression in eliciting food intake and weight gain, genetic disruption of AGRP results in little or no change in these parameters81. To summarize, the arcuate melanocortin system is quite complex, with both catabolic and anabolic transmitters that have opposing actions at the same MC4 (and to a lesser extent, MC3) receptors. Both the POMC and the AGRP/NPY neurons in the arcuate are important targets of leptin and insulin. The arcuate therefore provides an anatomical and functional basis for the lipostatic regulation that was hypothesized by Kennedy. As implied by the transmitters and hormones listed in BOX 1, many other signals are involved in the complex calculations that are involved in adipose-store regulation, and unravelling their interactions and circuitry presents an enormous challenge to establish an understanding of the regulation of energy balance. Nonetheless, it is now well www.nature.com/reviews/neuro REVIEWS Target Neuron Food intake NPY/ AGRP Energy expenditure POMC Third ventrical – + Leptin Insulin Insulin/leptin receptor MC4 receptor MC3 receptor NPY Y1/5 receptor Pancreas Adipose tissue Figure 2 | Actions of leptin and insulin on distinct neuronal populations in the arcuate nucleus of the hypothalamus. Leptin and insulin inhibit activity of neuropeptide Y/agoutirelated peptide (NPY/AGRP) neurons while stimulating activity of pro-opiomelanocortin (POMC) neurons. NPY and AGRP (a melanocortin receptor antagonist) can potently increase food intake and result in accumulation of increased stored calories. POMC is a precursor for several biologically active peptides, including α-melanocyte stimulating hormone (αMSH). αMSH acts as a melanocortin receptor agonist. Through these disparate actions on distinct cell types in the arcuate nucleus, adiposity signals can influence the amount of NPY and melanocortin signalling in downstream target neurons. MC, melanocortin. accepted that Kennedy was correct in surmising that body fat is regulated by circulating signals. Glucostatic regulation In the wake of the discovery of leptin and the resulting flurry of work that focused on its actions, the glucostatic hypothesis was largely ignored. The original observation that provided the cornerstone of the this hypothesis was that plasma glucose fluctuates with nutrient consumption and nutrient depletion, and that when glucose levels are lowered by peripheral administration of insulin, robust feeding results82. An important advance in our understanding came when specific metabolic inhibitors of glucose metabolism became available. 2-deoxy-D-glucose (2DG) is a drug that inhibits the enzymatic pathways that enable cells to derive energy from glucose, and its systemic administration induces a rapid feeding response83,84. Several lines of evidence implicate the CNS as the site where 2DG’s metabolic actions activate the neural circuits that are involved in energy homeostasis. First, neurons depend almost entirely on glucose for energy under most circumstances. Second, 2DG and other glucose oxidation inhibitors are more potent at increasing food intake when they are administered directly into the CNS than when they are given NATURE REVIEWS | NEUROSCIENCE systemically83,84. Finally, discrete populations of neurons in the hypothalamus and the brainstem have increased or decreased firing rates when glucose is applied locally85,86. Despite evidence that the brain can respond to sudden depletions of glucose-derived energy, the primary tenet of the glucostatic hypothesis — that fluctuations of glucose-derived energy drive the initiation and cessation of most meals — has not been well supported. Most neurons are relatively buffered from fluctuations in circulating glucose, as it would be deleterious for them to run short on metabolic fuel. Decreases in circulating glucose are quickly detected by the liver and insulin-secreting β-cells, resulting in the immediate secretion of more glucose into the blood. Furthermore, the process by which glucose enters the brain from the blood is normally saturated such that the blood glucose would have to become unusually low before reductions of glucose in the interstitial space surrounding brain neurons would occur. Because of this, the increased feeding that is observed after experimentally induced hypoglycaemia or neuronal glucose deprivation is generally considered to represent an emergency response that is used as a last resort to counter an acute energy deficit. In fact, most meals occur when blood glucose is well within the normal range. From this perspective, fluctuations in glucose use by the CNS would contribute minimally to the normal adjustments in food intake that serve to maintain energy balance, and they would only be engaged in extreme situations. Fuel sensing in the CNS Several hypotheses about the control of energy balance have focused on total fuel sensing in cells as a signal, but much of the work has focused on peripheral cells such as hepatocytes87,88. In the last few years, there has been a renewed interest in how certain metabolic-sensing neurons detect and respond to their ongoing metabolic status, and how this in turn is related to the control of energy homeostasis (see REF. 89 for an example of early work on this topic). This work has challenged the idea that all neurons use glucose exclusively, and it raises the possibility that some neurons actually monitor and respond to a more global and integrated pool of intracellular fuel availability, and use the information to influence nutrient consumption and energy expenditure6. The first of these challenges came from a group of researchers at Johns Hopkins University. They were investigating a compound called C75 that potently inhibits fatty acid synthase (FAS). In lipogenic tissues such as white fat, FAS catalyzes the reductive synthesis of long-chain fatty acids from malonyl-CoA molecules that are generated when excess cellular fuel is available and converted to acetyl-CoA (see FIG. 3). FAS inhibitors were developed as potential inhibitors of tumour growth, but they produced unwanted weight loss in patients. Systemic administration of C75 and other FAS inhibitors potently decreases food intake and body weight in experimental animals, and normalizes blood glucose levels in leptin-deficient mice90,91; that is, C75 rescues animals from some of the symptoms of leptin deficiency. Because tissue levels of malonyl-CoA have VOLUME 4 | NOVEMBER 2003 | 5 REVIEWS C75 Acetyl-CoA ACC Malonyl-CoA FAS Fatty acid CPT1 Glucose Oxidation Figure 3 | A neuronal metabolic pathway that has been implicated in the control of energy balance. Fatty acid synthase (FAS) catalyses the reductive synthesis of long-chain fatty acids from malonyl-CoA molecules that result when excess cellular fuel is converted to acetyl-CoA. C75 is an inhibitor of FAS that also potently inhibits food intake in the CNS. Malonyl-CoA inhibits oxidation of fatty acids by inhibiting carnitine palmitoyltransferase-1 (CPT1), which transports fatty acids into the mitochondria. Hypothalamic infusion of oleic acid or inhibition of CPT1 results in decreased food intake and hepatic glucose production. [Au: please define ACC] been considered to constitute an important intracellular fuel ‘sensor’, it was originally hypothesized that the increase in intracellular malonyl-CoA caused by C75 was responsible for its catabolic action. Later work from our laboratory confirmed that C75’s ability to reduce food intake is mediated by direct actions within the CNS92, and showed that manipulations that reduce neuronal glucose uptake ameliorate the ability of C75 to inhibit food intake93. Although hypotheses that food intake is based on generalized energy sensors are not new87,94–97, the implications of these new observations are far reaching. Why should neurons, which derive essentially all of their energy from glucose, be able to synthesize large amounts of long-chain CoAs, and how does this process influence the ingestion or expenditure of calories throughout the entire organism? Current research is taking our understanding of the control of food intake into new realms. For example, Rossetti, Obici and their colleagues found that infusion of oleic acid into the third cerebral ventricle reduced food intake, as well as the output of glucose by the liver98. For a long-chain fatty acid such as oleic acid to be oxidized by a cell, it must first enter the mitochondrion with the help of the enzyme carnitine palmitoyltransferase-1 (CPT1) (FIG. 3). Rosetti’s group observed that several manipulations that inhibit CPT1 also reduce both food intake and hepatic glucose output99. So, manipulations of fat-producing pathways in the CNS (for example, by C75), as well as manipulations of fat oxidation in the CNS, cause marked changes in food intake. These observations have collectively revealed an enormous range of new possibilities for how neurons monitor fuels and their oxidation, and these possibilities extend beyond an exclusive focus on glucose. More importantly, they directly implicate cellular fuel-sensing mechanisms in the CNS in the organism’s overall regulation of energy homeostasis. Numerous questions have yet to be answered. First, there is no consensus about how neurons (and/or their associated glia) monitor 6 | NOVEMBER 2003 | VOLUME 4 their cellular fuel status. Rapid progress has been made on this problem for peripheral cell types such as muscle cells and pancreatic β-cells, but this has not been extended to the brain. However, the capacity to transfer these largely in vitro studies to in vivo tests of the regulation of energy balance is increasing, thereby facilitating the testing of specific hypotheses. Second, the specific populations of neurons that function as fuel sensors are not known, nor is it known how the firing rates of those neurons are influenced. However, the machinery for fuel sensing has been identified within the brain in discrete populations of neurons, and manipulations of the relevant enzymes alter the expression of neuropeptides that are tied to the actions of adiposity signals100,101. Third, it is not known how much access the CNS actually has to various species of fatty acids, and under what circumstances. Fourth, it is not known how the actions of the CNS fuel sensors are coordinated with the actions of fuel sensors in peripheral tissues such as the liver. However, the finding that the same manipulations alter both energy intake and glucose output by the liver in an integrated manner implies that the systems are linked43,102. To address these issues, we will need to draw on diverse areas of neuroscience that have not traditionally been involved in the study of obesity. A conjecture This review has presented the rapid progress that is being made in our understanding of how energy balance is regulated from both a lipostatic and glucostatic perspective. It is our strong belief, however, that neither of these two conceptualizations provides a complete picture of how ingestive behaviour is controlled, nor how energy balance is maintained. To that end, we would like to propose a conjecture about what we consider to be the two most important functions of the ingestion of calories. The first is to maintain adequate stores of fuel — it is of considerable survival value for animals to maintain adequate stored energy to carry them through periods of low food availability. Given that the majority of stored fuel in mammals is in the form of adipose tissue, most of what has been studied in the rubric of the lipostatic model is consistent with this function. We suggest that a second and equally important function for ingesting calories is to provide readily available fuel to meet current cellular functions. This assertion assumes that it is preferable for an animal not to have to dip into its fuel stores, and therefore to adopt a pattern of ingestion of calories that allows their continued and regulated absorption from the gastrointestinal tract to obviate the need to release stored fuel. Some might label this regulation as glucostatic, but that would be misleading as it relates to fuel sensors in the CNS and other tissues that read out fuel status, not just glucose availability. Although this conjecture might seem simple and even axiomatic, it does represent a departure from the previous debate between the lipostatic and glucostatic hypotheses. It follows that energy balance is not maintained because the animal relies solely on either lipostatic or glucostatic signals. Rather, energy balance is maintained because organisms can simultaneously monitor the amounts of www.nature.com/reviews/neuro REVIEWS a CNS Adiposity signals Adipose tissue Empty Full Empty Fuel Full Integrator Energy balance b c Adiposity signals Empty Adiposity signals Full Transcription Energy balance Empty Full Transcription Energy balance Figure 4 | Diagrams depicting how signals of stored and available fuel could be integrated. a | Adiposity signals act on a separate set of target neurons to those that receive signals from peripheral fuel sensors and those that contain neuronal fuel sensors. Output from each of these populations must act on common targets to regulate food intake and energy expenditure and maintain energy balance. CNS, central nervous system. b | Sensors that detect adiposity signals and neuronal fuel are in the same population of neurons. These influences are integrated by common intracellular signalling systems that can ultimately influence both neuronal firing rate and transcription of important effector molecules. c | Adiposity signals act through intracellular signalling cascades to alter neuronal metabolic status. Changes in metabolic status are sensed by neuronal fuel sensors that ultimately change neuronal firing and transcription to influence food intake and energy expenditure. stored and immediately available fuels at the intracellular level. So, from our perspective, there is no ‘debate’ between the lipostatic and glucostatic models. Rather, both mechanisms are necessarily ongoing at all times, and each is likely to influence the activity of the other. This perspective is not uniquely ours, but has also been proposed by other investigators6,96. However, it is our belief that most perspectives have favoured one or other NATURE REVIEWS | NEUROSCIENCE side of this equation, and the question of how the two mechanisms operate simultaneously has not really been addressed. Let’s take an example. In the absence of leptin, the brains of ob/ob mice [Au: homozygous mutants? Ob–/–] receive an inappropriately low adiposity signal, and this is interpreted as if there is inadequate stored fuel. From our conjecture, this gives the animal not one but two reasons to over-consume calories. First and most obvious, the animal eats to raise the level of stored fuel. Second, because it perceives fuel stores to be inadequate, the animal is overly responsive to maintain adequate fuel for immediate use, as it perceives that it cannot draw on energy stores to bridge any immediate fuel gaps. Consistent with this, rats and mice with genetic mutations of either leptin or its receptor not only have increased food consumption, but they also distribute that consumption much more evenly throughout the 24-hour period than do normal controls103. To turn this example around, an animal that perceives its current fuel needs as not being met must also be simultaneously more concerned about its fuel stores. After all, it must now draw on fuel stores to meet its ongoing energy demands, and it cannot begin to replenish stored energy until it can consume calories in excess of its ongoing demand. What these examples highlight are that the two sides of this conjecture — stored fuel and current fuel availability — are necessarily linked, making it difficult to study one side of the system without perturbing the other. If the organism uses separate signals for monitoring stored fuel and ongoing fuel availability, the key question is not which is more important, but rather how these distinct signals are integrated to influence food intake and energy expenditure, and thereby maintain energy balance. One possibility is that adiposity signals act on one population of neurons, whereas cellular fuel sensors exist in a separate population. It might be assumed that these populations reside entirely within the hypothalamus, although leptin and insulin receptors, as well as glucose responsive neurons, are also found within the caudal brainstem9,104,105. Consequently, it is possible that extrahypothalamic neurons contribute to these signals. In this case, the crucial question would be whether these two populations of neurons communicate through direct inputs on one another, or whether they have a common set of target neurons that integrate their inputs. A second model might posit that the same neurons that are direct targets of adiposity signals also have intracellular fuel sensors. The crucial question is: how are the inputs from membrane bound receptors and intracellular metabolic pathways integrated? There are several non-exclusive possibilities for this integration. One is that both adiposity signals and cellular fuel sensors influence membrane potentials directly (potentially through ATP-sensitive K+ channels), such that their influences are integrated into the ongoing firing patterns of these neurons. Consistent with this is the finding that glucose can influence the firing rate of neurons in the region of the arcuate nucleus where leptin can increase spike frequency106, and that both leptin and insulin act in part by VOLUME 4 | NOVEMBER 2003 | 7 REVIEWS stimulating ATP-sensitive K+ channels107,108 that are also sensitive to local fluctuations of glucose. A second possibility is that both adiposity signals and metabolizable fuels act on common intracellular signalling cascades to alter several specific proteins. This possibility is supported by preliminary findings that C75 alters the expression of some of the same genes as leptin and insulin101. An intriguing third possibility is that adiposity signals act by altering the sensitivity of the neuronal fuel sensors, and that these in turn impact on neuronal firing and/or protein production. This possibility is plausible, as both leptin and insulin have important metabolic effects on peripheral cell types, and recent data have indicated that leptin alters the levels of the putative cellular fuel sensor AMP kinase in both peripheral tissues and the hypothalamus109. 1. 2. 3. 4. 5. 6. 7. 8. 9. 10. 11. 12. 13. 14. 15. 16. 17. 18. 19. 20. 8 U.S. Department of Health and Human Services. 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VOLUME 4 | NOVEMBER 2003 | 9 ONLINE Online Links Obesity: http://www.els.net/els/FDA/default.asp?id=09A45CDB-819F-4049A346-5B55B4B37B7F Locuslink: AGRP: http://www.ncbi.nlm.nih.gov/LocusLink/LocRpt.cgi?l=181 ASP: http://www.ncbi.nlm.nih.gov/LocusLink/LocRpt.cgi?l=434 insulin: http://www.ncbi.nlm.nih.gov/LocusLink/LocRpt.cgi?l=3630 insulin receptor: http://www.ncbi.nlm.nih.gov/LocusLink/LocRpt.cgi?l=3643 leptin: http://www.ncbi.nlm.nih.gov/LocusLink/LocRpt.cgi?l=3952 MC1: http://www.ncbi.nlm.nih.gov/LocusLink/LocRpt.cgi?l=4157 MC3: http://www.ncbi.nlm.nih.gov/LocusLink/LocRpt.cgi?l=4159 MC4: http://www.ncbi.nlm.nih.gov/LocusLink/LocRpt.cgi?l=4160 NPY: http://www.ncbi.nlm.nih.gov/LocusLink/LocRpt.cgi?l=4157 ob: http://www.ncbi.nlm.nih.gov/LocusLink/LocRpt.cgi?l=16846 POMC: http://www.ncbi.nlm.nih.gov/LocusLink/LocRpt.cgi?l=5443 At a glance • Attempts to understand the neural underpinnings of eating have taken on an unfortunate urgency over the last decade owing to the exponential increase in obesity in both the developed and developing world. However, although our growing waistlines might indicate otherwise, the system that matches caloric intake to caloric expenditure is remarkably accurate. • Research on the neural control of energy balance began with the observation that lesions of specific nuclei in the hypothalamus produce profound increases or decreases in food intake and body weight. Recent work has shown that ingestive behaviour is influenced by a distributed neural network, which includes caudal brainstem, limbic and cortical structures. • Lipostatic theories propose that the hypothalamus monitors the storage and metabolism of fat, whereas glucostatic theories postulate that it monitors the storage and use of carbohydrate. Rather than choosing between these two theories, it might be more pertinent to ask how the signals from the two systems are integrated to control ingestive behaviour. • How does the central nervous system (CNS) monitor the collective status of adipocytes that are dispersed throughout the body? An ‘adiposity’ signal must circulate in proportion to the total amount of stored fat and should interact with the brain directly, and changes in its level or activity should alter food intake and energy expenditure. The hormones leptin and insulin both fulfil these criteria. • The primary tenet of the glucostatic hypothesis is that fluctuations of glucose-derived energy drive the initiation and cessation of most meals. However, most neurons are buffered from fluctuations in circulating glucose, and most meals occur when blood glucose is well within the normal range. So, fluctuations in glucose use by the CNS probably contribute minimally to normal adjustments in food uptake. • Recently, there has been a renewed interest in how metabolic-sensing neurons detect and respond to their ongoing metabolic status, and how this is related to energy homeostasis. This work challenges the idea that all neurons use glucose exclusively, and it raises the possibility that some neurons monitor and respond to a more global and integrated pool of intracellular fuel availability. • It is suggested that the ingestion of calories serves two functions — to maintain adequate stores of fuel and to provide readily available fuel to meet current cellular needs. This represents a departure from the debate between the lipostatic and glucostatic hypotheses, and it implies that energy balance is maintained by the simultaneous monitoring of stored and immediately available fuels. Biographies Randy Seeley is a professor of psychiatry at the University of Cincinnati College of Medicine. He received his Ph.D. from the department of psychology at the University of Pennsylvania in 1993 working under H. Grill and J. Kaplan. He then spent four years at the University of Washington working with S. Woods, D. Porte and M. Schwartz before moving to the University of Cincinnati. His work focuses on neuroendocrine regulation of energy balance and therapeutic strategies to treat obesity. He is the 2003 recipient of the Lilly Scientific Achievement Award from the North American Association for the Study of Obesity. Stephen Woods is Professor of Psychiatry and Director of the Obesity Research Center at the University of Cincinnati. He received his Ph.D. in physiology and biophysics as well as in psychology from the University of Washington, and was on the faculty of Columbia University and the University of Washington before joining University of Cincinnati. He initially investigated the control of insulin secretion by the brain and in the 1970s, along with D. Porte, he hypothesized that insulin is an adiposity signal to the brain. He has published hundreds of reports on the control of energy homeostasis and has been President of the Society for the Study of Ingestive Behavior and the International Congress for the Physiology of Food and Fluid Intake.