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Are we making any progress in the molecular taxonomy of CRC? Marcello Maugeri-Saccà, MD, PhD Istituto Nazionale Tumori “Regina Elena” Various ways of classifying CRC: first-generation classifier Second-generation classifier: genome instability-based classification chromosomal instable Chromosomal gains and losses and structural rearrangements: LOH at APC, TP53, SMAD4, etc microsatellite instable Defective MMR due to MLH1methylation or germline mutations in MMR genes CpG island methylator phenotype Transcriptional silencing of tumor suppressor and DNA repair genes (MLH1, BRAF-mut.) Simons et al., Ann Oncol 2013 Third generation classifiers: Gene expression profiling-based classification A B C: mixed classification Cell of origin-based classification: salient characteristics of the six CRC subtypes and correlation with colon-crypt location and Wnt signaling two published gene expression data sets (core data sets, n = 445) Sadanandam et al., Nat Med 2013 Cell of origin-based classification: transit-amplifying subtype was a heterogeneous collection of samples with variable expression of stem cell and Wnt-target genes. Sadanandam et al., Nat Med 2013 CRC subtypes and treatment response Khambata-Ford dataset (n:110, cetux monotherapy) Prognosis-derived classification AMC-AJCCII-90 dataset, stage II De Sousa E Melo, Nat Med 2013 The prognosis-based classifiers are represented in cell lines and xenografts Prognosis-derived classification: subtype-specific molecular alterations and reproducibility in the clinical setting CCS1 (CIN 18q loss, 20q gain ) CCS2 (MSI/CIMP+/Braf-mut TMA-based miniclassifier using IHC for four gene products (FRMD6, ZEB1, HTR2B and CDX2) selected on the basis of validated reliable staining and high differential expression between CCS1 and CCS3 in multiple data sets CCS3 (heterogenous) Different published prognostic signatures show very limited overlap Gene sets specific for serrated- or FAP-associated adenomas (APC germline mutation/tumor development via the CIN pathway)showed association with CCS3 or CCS1-CIN tumors Third generation classifiers: Gene expression profiling-based classification - cell of origin+ genomic instability + prognosis 416 patients with stage II–III Marisa L, Plos Med 2013 Summary of the main characteristics of the six subtypes. Marisa L, Plos Med 2013 filtering biologically relevant mutations 1) MutSig: Frequency 2) Paradigm Shift: Data integration (mutations, gene expression profile, etc) 3) MEMo: Mutual exclusivity module analysis 1)MutSig: Frequency (False positive) threshold is chosen to control for the False Discovery Rate (FDR), and genes exceeding this threshold are reported as significantly mutated. Paradigm Shift: Data integration NFE2L2 /KEAP1 pathway MEMo: Mutual exclusivity module analysis The Cancer Genome Atlas (TCGA) Diversity and frequency of genetic changes leading to deregulation of signalling pathways in CRC Druggable vs Undruggable Module 1 Module 2 Module 3 Module 4 The origin of cancer heterogeneity Maugeri-Saccà M. Targeted Therapies in Oncology (in press) Biomarker frequencies of discordance between primary tumours and metastases Bedard et al., Nature 2013 Variable Clonal Repopulation Dynamics in CRC The progeny of single CRC cells was followed by carrying out clonal tracking experiments through lentiviral integration site mapping by Southern blotting Clonal behavior (proliferative potential and tumor re-generation potency is classified across multiple recipients Persistent clones Short-term clones - nongenetic mechanisms of heterogeneity - Oxa treatment altered repopulation dynamics Transient clones Resting clones Kreso et al., Science 2013 Fluctuating Clones Take-home message - Novel prognostic classifiers need validation and head-tohead comparisons Think beyond superstar pathways: back to the lab to set up novel strategies for targeting the untargetable - -Investigations of tumor heterogeneity in the clinical setting (e.g. single cell analisys) Prognosis-based classification and therapy efficacy Poor-prognosis CRC develops from serrated precursor lesions Common Cancer Stem Cell Gene Variants Predict Colon Cancer Recurrence Gerger et al., CCR 2011 Circulating Cancer Stem-Like Cells and Prognosis in Patients With Dukes’ Stage B and C Colorectal Cancer (Training Set) Iinuma et al., JCO 2011 Circulating Cancer Stem-Like Cells and Prognosis in Patients With Dukes’ Stage B and C Colorectal Cancer (Validation Set) CD133 expression and the prognosis of colorectal cancer Flowchart of selection of studies for inclusion in meta-analysis CD133 expression and 5-year OS rate CD133 expression and 5-year DFS rate Chen et al., Plos One 2013 CSCs and chemoresistance A-B-C: CSC-intrinsic mechanisms D: CSC-extrinsic mechanisms Maugeri-Saccà M .et al. Clin Cancer Res 2011 Drugging the undruggable Chan et al., Nature Reviews Drug Discovery 2011 The principle of high-throughput loss-of-function genetic screens for biomarkerdriven clinical trials Maugeri-Saccà M., et al. Current Pharmaceutical Design. In press Unresponsiveness of colon cancer to BRAF(V600E) inhibition through feedback activation of EGFR Prahallad et al., Nature 2012 CRC subtypes and treatment response Variable Clonal Repopulation Dynamics Influence Chemotherapy Response proportion of clone types generated by reinjecting Ctrl and OX-treated tumors Post-chemo enriched population