Back to Search Start Over

Machine Learning Detects Pan-cancer Ras Pathway Activation in The Cancer Genome Atlas.

Authors :
Way, Gregory P
Way, Gregory P
Sanchez-Vega, Francisco
La, Konnor
Armenia, Joshua
Chatila, Walid K
Luna, Augustin
Sander, Chris
Cherniack, Andrew D
Mina, Marco
Ciriello, Giovanni
Schultz, Nikolaus
Cancer Genome Atlas Research Network
Sanchez, Yolanda
Greene, Casey S
Way, Gregory P
Way, Gregory P
Sanchez-Vega, Francisco
La, Konnor
Armenia, Joshua
Chatila, Walid K
Luna, Augustin
Sander, Chris
Cherniack, Andrew D
Mina, Marco
Ciriello, Giovanni
Schultz, Nikolaus
Cancer Genome Atlas Research Network
Sanchez, Yolanda
Greene, Casey S
Source :
Cell reports; vol 23, iss 1, 172-180.e3; 2211-1247
Publication Year :
2018

Abstract

Precision oncology uses genomic evidence to match patients with treatment but often fails to identify all patients who may respond. The transcriptome of these "hidden responders" may reveal responsive molecular states. We describe and evaluate a machine-learning approach to classify aberrant pathway activity in tumors, which may aid in hidden responder identification. The algorithm integrates RNA-seq, copy number, and mutations from 33 different cancer types across The Cancer Genome Atlas (TCGA) PanCanAtlas project to predict aberrant molecular states in tumors. Applied to the Ras pathway, the method detects Ras activation across cancer types and identifies phenocopying variants. The model, trained on human tumors, can predict response to MEK inhibitors in wild-type Ras cell lines. We also present data that suggest that multiple hits in the Ras pathway confer increased Ras activity. The transcriptome is underused in precision oncology and, combined with machine learning, can aid in the identification of hidden responders.

Details

Database :
OAIster
Journal :
Cell reports; vol 23, iss 1, 172-180.e3; 2211-1247
Notes :
application/pdf, Cell reports vol 23, iss 1, 172-180.e3 2211-1247
Publication Type :
Electronic Resource
Accession number :
edsoai.on1287291961
Document Type :
Electronic Resource