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Cancer Diagnostics The Old and the New Course LMP1506S,Thursday,March 7,2002 Eleftherios P. Diamandis, M.D., Ph.D., FRCP(C) UNIVERSITY OF TORONTO Laboratory Medicine and Pathology Compositional analysis of cells, fluids, tissues (proteins, metabolites, DNA, RNA) Information invaluable for patient diagnosis, monitoring, selection of therapy, prognosis, classification Timeline of Molecular Pathology Lakhani and Ashworth Nature Reviews Cancer 2001;1:151-157 Today’s Laboratory Physician / Pathologist Misconception: Pathologists are those who perform autopsies and work in isolation by looking down a microscope all day. Reality: Participate in teams with surgeons, oncologists, radiologists; information provided forms basis for diagnosis and management and for performing new clinical trials(by identifying patient groups). The Current Pathologist and Cancer Tumor Classification Essential for cancer prognosis and selection of treatment: -Carcinoma vs sarcoma vs lymphoma -Primary vs metastatic cancer -Breast carcinoma (ductal vs lobular vs tubular vs mucinous ) -Tumor grade (degree of differentiation) -Tumor stage (size, lymph node involvement plus imaging information) -Surgical margins The Current Pathologist Cancer Prognosis • Pathologically classified classes of tumors (by stage, grade, histological type) behave differently. • Different responses to therapy: ER, PR (+) breast cancers Tamoxifen HER2/NEU expression Herceptin BCR/ABL translocation Gleevac Classical Grading System for Breast Cancer Classical Staging System for Cancer The Current Laboratory Physician / Scientist / Clinical Pathologist • Tumor marker analysis in serum - screening - diagnosis - prognosis - therapy response - monitoring for relapse PSA,CEA,AFP,hCG,CA125,CA15.3 The Problems Morphology: • Subjective analysis - variation between observers • The morphology of the tumor does not always reveal the underlying biology; patients with same tumor type can experience different course of the disease • Immunohistochemistry targets single molecules; biology depends on many The Problems Tumor Markers: • No true tumor marker exists (with notable exceptions) • Generally single tumor markers not good for screening/diagnosis (poor sensitivity and specificity) • Very limited role for predicting therapeutic response/prognosis • Useful as aids for monitoring response to therapy Conclusions We need: • better (more objective) and more biologically-relevant tumor classification schemes for prognosis, selection of therapy • better tumor markers for population screening and early diagnosis for cancer prevention Paradigm Shift (2000 and Beyond) Traditional Method: Study one molecule at a time. New Method: Multiparametric analysis (thousands of molecules at a time). Cancer: Does every cancer have a unique fingerprint? (genomic/proteomic?). The New Laboratory Physician / Scientist / Pathologist Changes seen are driven by recent biological / technological advances: - Human Genome Project - Bioinformatics - Array Analysis - Mass Spectrometry _______________________________________ -Automated DNA Sequencing /PCR: - DNA Arrays - Protein Arrays - Tissue Arrays - Laser Capture Microdissection - SNPs - Comparative Genomic Hybridization Technological Advances Microarrays What is a microarray? A microarray is a compact device that contains a large number of well-defined immobilized capture molecules (e.g. synthetic oligos, PCR products, proteins, antibodies) assembled in an addressable format. You can expose an unknown (test) substance on it and then examine where the molecule was captured. You can then derive information on identity and amount of captured molecule. AACC 2001 Principles of DNA Microarrays(Printing oligos by photolithography) Fodor et al.Science 1991;251:767-773) Microarray Technology Manufacture or Purchase Microarray Hybridize Detect Data Analysis AACC 2001 Applications of Microarrays • Simultaneous study of gene expression patterns of genes • Single nucleotide polymorphism (SNP) detection • Sequences by hybridization / genotyping / mutation detection • Study protein expression (multianalyte assay) • Protein-protein interactions Provides: Massive parallel information AACC 2001 Microarray Advantages • Small volume deposition (nL) • Minimal wasted reagents • Access many genes / proteins simultaneously • Can be automated • Quantitative AACC 2001 If Microarrays Are So Good Why Didn’t We Use Them Before?? • • • • Not all genes were available No SNPs known No suitable bioinformatics New proteins now becoming available Microarrays and associated technologies should be regarded as by-products of the Human Genome Initiative and bioinformatics Limitations of Microarrays • New technology • Technical problems (background;reproducibility) • Need to better define human genes (many ESTs) • Manual • Expensive AACC 2001 International Genomics Consortium (IGC) • New initiative • Aims to generate expression data by microarrays • Claims to analyze for all genes 10,000 tumor specimens within 1 year! • All patients will have detailed follow-up information Molecular Signatures/Portraits of Tumors Differential Gene Expression (Budding vs Non-Budding Yeast) Tissue Expression of KLK6 by Microarray Highest Expression brain,spinal cord,then salivary gland,spleen,kidney MedianX10 Cell Line or Tissue Tissue Expression Profiles • Many proprietary databases - created by microarray analysis • Can search as follows: * which genes are expressed in which tissues (tissue specific expression) * unique genes expressed only in one tissue * quantitative relationships between levels of expression * expression is normal vs diseased tissue Limitations: - RNA data; not protein - great variability in results AACC 2001 Lung Tumor: Up-Regulated Lung Tumor: Down-Regulated Whole Genome Biology With Microarrays Cell cycle in yeast Study of all yeast genes simultaneously! Red;High expression Blue:Low expression Lockhart and Winzeler Nature 2000;405:827-836 Microarray Imaging of Tissue Sections Clinical Care Diagnosis Prognosis Prediction of therapeutic response Monitoring Research Understanding Disease Pathogenesis Comparative Genomic Hybridization • A method of comparing differences in DNA copy number between tests (e.g. tumor) and reference samples • Can use paraffin-embedded tissues • Good method for identifying gene amplifications or deletions by scanning the whole genome. Comparative Genomic Hybridization Cot1DNA blocks repeats) Label with Cy-3 Label with Cy-5 Nature Reviews Cancer 2001;1:151-157 Laser Capture Microdissection An inverted microscope with a low intensity laser that allows the precise capture of single or defined cell groups from frozen or paraffin-embedded histological sections Allows working with well-defined clinical material. Tumor Heterogeneity(Prostate Cancer) Tumor Cells, Red Rubin MA J Pathol 2001;195;80-86 Benign Glands,Blue Laser Capture Microdissection LCM uses a laser beam and a special thermoplastic polymer transfer cup(A).The cap is set on the surface of the tissue and a laser pulse is sent through the transparent cap,expanding the thermoplastic polymer. The selected cells are now adherent to the transfer cap and can be lifted off the tissue and placed directly onto an eppendorf tube for extraction(B). Rubin MA,J Pathol 2001;195:80-86 Tissue Microarrays • Printing on a slide tiny amounts of tissue • Array many patients in one slide (e.g. 500) • Process all at once (e.g. immunohistochemistry) • Works with archival tissue (paraffin blocks) AACC 2001 Gene Expression Analysis of Tumors cDNA Microarray Lakhani and Ashworth Nature Reviews Cancer 2001;1:151-157 Tissue Microarray Alizadeh et al J Pathol 2001;195:41-52 Histochemical staining of microarray tissue cores of ovarian serous adenocarcinoma. -tjc Identical microscopic fields showing variable staining intensity of various tissue cores for HK6 (right) • H&E • HK6 Histochemical staining of a microarray tissue core of ovarian clear cell adenocarcinoma. -tjcIdentical microscopic fields showing strong cytoplasmic positivity for HK6 within carcinoma (and endothelium, lower right) • H&E • HK6 Histochemical staining of a microarray tissue core of ovarian serous adenocarcinoma. -tjcNote: Cytoplasmic positivity for HK6 in carcinoma, endothelium and stromal cells. • H&E • HK6 Molecular Profiling of Prostate Cancer Rubin MA, J Pathol 2001;195:80-86 Single Nucleotide Polymorphisms (SNP) • DNA variation at one base pair level; found at a frequency of 1 SNP per 1,000 - 2,000 bases • Currently, a map of 1.42 x 106 SNPs have been described in humans (Nature 2001; 409:928-933) by the International SNP map working group) • Identification: Mainly a by-product of human genome sequencing at a depth of x10 and overlapping clones • 60,000 SNPs fall within exons; the rest are in introns AACC 2001 Why Are SNPs Useful? • Human genetic diversity depends on SNPs between individuals (these are our genetic differences!) • Specific combinations of alleles (called “The Haplotype”) seem to play a major role in our genetic diversity • How does this genotype affect the phenotype Disease predisposition? Continued:…….. Why are SNPs useful………………..continued: Diagnostic Application Determine somebody’s haplotype (sets of SNPs) and assess disease risk. Be careful: These disease-related haplotypes are not as yet known! AACC 2001 Genotyping: SNP Microarray Immobilized allele specific oligo probes Hybridize with labeled PCR product Assay multiple SNPs on a single array TTAGCTAGTCTGGACATTAGCCATGCGGAT GACCTGTAATCG TTAGCTAGTCTGGACATTAGCCATGCGGAT GACCTATAATCG High- Throughput Proteomic Analysis By Mass Spectrometry Haab et al Genome Biology 2000;1:1-22 Applications of Protein Microarrays Screening for Small molecule targets Post-translational modifications Protein-protein interactions Protein-DNA interactions Enzyme assays Epitope mapping Cytokine Specific Microarray ELISA IL-1 IL-6 IL-10 marker protein cytokine Detection system BIOTINYLATED MAB ANTIGEN CAPTURE MAB VEGF MIX Recently Published Examples Rationale For Improved Subclassification of Cancer by Microarray Analysis • Classically classified tumors are clinically very heterogeneous - some respond very well to chemotherapy; some do not. Hypothesis The phenotypic diversity of cancer might be accompanied by a corresponding diversity in gene expression patterns that can be captured by using cDNA microarrays Then Systematic investigation of gene expression patterns in human tumors might provide the basis of an improved taxonomy of cancer. Molecular portraits of cancer Molecular signatures Molecular Portraits of Cancer Breast Cancer Perou et al Nature 2000;406:747-752 Green:Gene underexpression Black:Equal Expression Red:Overexpression Left Panel:Cell Lines Right Panel:Breast Tumors Figure Represents 1753 Genes Differential Diagnosis of Childhood Malignancies Ewing Sarcoma:Yellow Rhabdomyosarcoma:Red Burkitt Lymphoma:Blue Neuroblastoma:green Khan et al.Nature Medicine 2001;7:673-679 Differential Diagnosis of Childhood Malignancies (small round blue-cell tumors,SRBCT) EWS=Ewing Sarcoma NB=Neuroblastoma RMS=Rhabdomyosarcoma BL=Burkitt Lymphoma Note the relatively small number of genes necessary for complete discrimination Khan et al.Nature Medicine 2001;7:673-679 Aggressive vs Non-Aggressive Breast Cancer Cell Lines Can accurately predict aggressiveness with a set of only 24 genes Zajchowski et al Cancer Res 2001;61:5168-78 Selected Applications of Microarrays Alizadeh et al. Nature 2000;403:503-511 • Identified two very distinct forms of large B-cell Lymphoma • The two forms had different clinical outcomes (overall survival). Conclusion Molecular classification of tumors on the basis of gene expression can identify previously undetected and clinically significant subtypes of cancer. Novel Classification of Lymphoma Alizadeh et al Nature 2000;403:503-511 GI Tumors with KIT Mutations A:IHC with KIT antibody(negative) B:IHC with KIT antibody(positive) C:Multidimensional scaling plot Orange Dots:KIT mutation-positive Gastrointestinal Stromal Tumors Blue Dots:Spindle Cell Carcinomas Allander et al.Cancer Res 2001;61:8624-8628 Gene Expression Profile of GI Stromal Tumors with KIT Mutations KIT (-) KIT(+) KIT gene Allander et al.Cancer Res 2001;61:8624-8628 Applications (continued) Vant’t Veer L. et al. Nature 2002:415-586 Examine lymph node negative breast cancer patients and identified specific signatures for: * Poor prognosis * BRCA carriers The “poor prognosis” signature consisted of genes regulating cell cycle invasion, metastasis and angiogenesis. Conclusion • This gene expression profile will outperform all currentlyused clinical parameters in predicting disease outcome • This may be a good strategy to select node-negative patients who would benefit from adjuvant therapy. Prognostic Signature of Breast Cancer Patients above line No Distant Metastasis Patients Below Line Distant metastasis Van’t Veer et al.Nature 2002;415:530-536 ER(+)vs ER(-) Signatures in Breast Cancer Sporadic vs BRCA1 Signatures in Breast Cancer Patients above line:ER(+) Patients below line:ER(-) Patients above line:BRCA1-positive Patients below line:BRCA1-negative Van’t Veer et al.Nature 2002;415:530-536 Molecular Signatures for Selecting Treatment Options Van’t Veer et al.Nature 2002;415:530-536 Strategies to Discover New Cancer Markers Human Genome Establish tissue expression of all human genes by microarray technology Identify “tissue-specific” genes Compare “normal” vs “cancer” Select highly overexpressed genes Evaluate in detail Many potential pitfalls An Example of Genome Mining Approach to Discovery Circulating Markers for Ovarian Carcinoma. Welsh JB, et al., PNAS 2001; 98: 1176 - 1181 AACC 2001 Method 49 arrays on a 7x7 Matrix ARRAYS ON ARRAYS Hybridize 49 different samples in one shot (some normal; some malignant) 6,000 genes per array A.Tumor Classification B.Expression of genes RED:Overexpression GREEN:Underexpression Genes Overexpressed in Ovarian Cancer From:Welsh et al PNAS 2001;98:1176-1181 Genes Overexpressed in Ovarian Cancer(RT-PCR Verification) CD 24 HE4 LU rRNA From:Welsh et al PNAS 2001:98:1176-1181 Mass Spectrometry for Proteomic Pattern Generation • Serum analysis by SELDI-TOF mass spectrometry after extraction of lower molecular weight proteins • Data analyzed by a “pattern recognition” algorithm Serum Fingerprint by Mass Spectrometry Results _________________________________________________ Classification by Proteomic Pattern Cancer Unaffected New Cluster ________________________________________________ Unaffected Women No evidence of ovarian cysts 2/24 22/24 0/24 Benign ovarian cysts <2.5cm 1/19 18/19 0/19 Benign ovarian cysts >2.5cm 0/6 6/6 0/6 Benign gynecological 0/7 0/7 7/7 inflammatory disorder __________________________________________________________ Women with Ovarian Cancer Stage I 18/18 0/18 0/18 Stage II, III, IV 32/32 0/32 0/32 __________________________________________________________ Petricoin III EF, et al. Lancet 2002;359:572-577 The Future?? Cancer Patient Surgery/Biopsy Cancerous Tissue Array Analysis Tumor Fingerprint Individualized Treatment The Future?? General Population - Imaging - Multiparametric/ miniature testing of serum on a protein array - Mass spectrometric serum/urine proteomic pattern generation Screen-positive patients Prevention; Effective Therapy The Future? Asymptomatic individuals Whole genome SNP analysis Predisposition to certain disease Prevention (drugs; lifestyle) Surveillance The Future? • • • • • • • Miniature ingestible or intravenous diagnostic devices will provide “images” or “information” related to body function. Wristwatch devices for biomonitoring Telemedicine-Videoconferencing Electronic medical record New, highly effective therapies “Electronic” behavioural modification Gene therapy. NONE OF THE ABOVE Young and Wilson, Clin Cancer Res 2002;8:11-16