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Cancer Treatment from the DNA Perspective Peter J. O’Dwyer, MD University of Pennsylvania ECOG-ACRIN Cancer Research Group DNA Mutation DNA CA AG C T A A C T Normal gene CA AG C G A A C T Single base change CA A G G CG C T A A C T Additions C T CA A G A A C T Deletions Oncogenes Normal cell Cancer cell Mutated/damaged oncogene Normal genes regulate cell growth Oncogenes accelerate cell growth and division Tumor Suppressor Genes Act Like a Brake Pedal Tumor Suppressor Gene Proteins Growth factor Receptor Signaling enzymes Cell nucleus Transcription factors DNA Cell proliferation Genomics-Driven Trials • Assumption: Given a specific mutation, a particular growth or survival pathway will be activated, so therapy can be directed specifically to it • Disease-Specific – Breast Cancer – I-SPY – Lung Cancer – LUNG-MAP, ALCHEMIST – Colorectal Cancer – ASSIGN (in development) • “Disease-Agnostic” – MATCH MATCH – Preliminary Hypothesis Primary: That tumors that share common somatic genetic alterations in oncogenes will be variably responsive to therapies targeting the oncogenic pathway based on lineage specific factors. Secondary: That concomitant somatic genetic alterations will predict responsiveness or resistance. 6 MATCH TRIAL OVERVIEW • • • • Identify mutations/amplifications/translocations in patient tumor sample - eligibility determination Assign patient to relevant agent/regimen – single-arm Phase II design Need to sequence large numbers of tumors (3000pts) and need to have large numbers of targeted treatments Tumor biopsies & sequencing at progression to investigate resistance mechanisms – De-identified samples submitted to central labs – Whole-exome sequencing (research purposes) to detect non-ambiguous germline variants Alliance Spring Group Meeting / May 9, 2014 7 MATCH: SCHEMA Tumor Biopsy Statistical Considerations Within each drug-by-mutation category: Dual Primary Endpoints: Overall Response Rate 5% vs. 25% or Progression Free Survival 6 months 15% (median PFS 2.2 m) vs 35% (median PFS 4 m) One stage design 31 evaluable patients per arm ORR = proportion of patients with objective response (PR+CR) on initial course of study agent PFS6 = proportion of patients alive and progression free at 6 months from initiation of study agent 9 CLIA LAB NETWORK • Genetic platform: Ion Torrent PGM AmpliSeq custom panel; Oncomine under evaluation – About 200 genes – SNV, indel, CNV, targeted translocations • Immunohistochemical expression of PTEN • Validation within and across sites: same SOP • Possibly additional IHC and FISH, if needed • Lead laboratory: Frederick National Laboratory for Cancer Research (Williams) – Competitively chosen lab sites: • MD Anderson (Hamilton) • MGH (Iafrate) • Yale (Sklar) SUMMARY • In planning for a year, MATCH slated to open by end 2014. • Robust state-of-the-art platform finalized September 2014 • Agreements close to final with four companies for genotype-specific drugs • Strong CTEP-Intergroup collaboration in developing the trial • Broad community oncologist and advocate input refined design 11 NCI MATCH PARTICIPATION