Integrative omics analyses broaden treatment targets in human cancer Journal Article


Authors: Sengupta, S.; Sun, S. Q.; Huang, K. L.; Oh, C.; Bailey, M. H.; Varghese, R.; Wyczalkowski, M. A.; Ning, J.; Tripathi, P.; McMichael, J. F.; Johnson, K. J.; Kandoth, C.; Welch, J.; Ma, C.; Wendl, M. C.; Payne, S. H.; Fenyö, D.; Townsend, R. R.; Dipersio, J. F.; Chen, F.; Ding, L.
Article Title: Integrative omics analyses broaden treatment targets in human cancer
Abstract: Background: Although large-scale, next-generation sequencing (NGS) studies of cancers hold promise for enabling precision oncology, challenges remain in integrating NGS with clinically validated biomarkers. Methods: To overcome such challenges, we utilized the Database of Evidence for Precision Oncology (DEPO) to link druggability to genomic, transcriptomic, and proteomic biomarkers. Using a pan-cancer cohort of 6570 tumors, we identified tumors with potentially druggable biomarkers consisting of drug-associated mutations, mRNA expression outliers, and protein/phosphoprotein expression outliers identified by DEPO. Results: Within the pan-cancer cohort of 6570 tumors, we found that 3% are druggable based on FDA-approved drug-mutation interactions in specific cancer types. However, mRNA/phosphoprotein/protein expression outliers and drug repurposing across cancer types suggest potential druggability in up to 16% of tumors. The percentage of potential drug-associated tumors can increase to 48% if we consider preclinical evidence. Further, our analyses showed co-occurring potentially druggable multi-omics alterations in 32% of tumors, indicating a role for individualized combinational therapy, with evidence supporting mTOR/PI3K/ESR1 co-inhibition and BRAF/AKT co-inhibition in 1.6 and 0.8% of tumors, respectively. We experimentally validated a subset of putative druggable mutations in BRAF identified by a protein structure-based computational tool. Finally, analysis of a large-scale drug screening dataset lent further evidence supporting repurposing of drugs across cancer types and the use of expression outliers for inferring druggability. Conclusions: Our results suggest that an integrated analysis platform can nominate multi-omics alterations as biomarkers of druggability and aid ongoing efforts to bring precision oncology to patients. © 2018 The Author(s).
Keywords: cancer genomics; precision medicine; multi-omics; cancer and druggability; proteogenomics
Journal Title: Genome Medicine
Volume: 10
ISSN: 1756-994X
Publisher: Biomed Central Ltd  
Date Published: 2018-07-27
Start Page: 60
Language: English
DOI: 10.1186/s13073-018-0564-z
PROVIDER: scopus
PMCID: PMC6064051
PUBMED: 30053901
DOI/URL:
Notes: Article -- Export Date: 4 September 2018 -- Source: Scopus
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  1. Cyriac Kandoth
    31 Kandoth