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Identifying Drug Sensitivity Subnetworks with NETPHIX.

Authors :
Kim, Yoo-Ah
Kim, Yoo-Ah
Sarto Basso, Rebecca
Wojtowicz, Damian
Liu, Amanda S
Hochbaum, Dorit S
Vandin, Fabio
Przytycka, Teresa M
Kim, Yoo-Ah
Kim, Yoo-Ah
Sarto Basso, Rebecca
Wojtowicz, Damian
Liu, Amanda S
Hochbaum, Dorit S
Vandin, Fabio
Przytycka, Teresa M
Source :
iScience; vol 23, iss 10, 101619; 2589-0042
Publication Year :
2020

Abstract

Phenotypic heterogeneity in cancer is often caused by different patterns of genetic alterations. Understanding such phenotype-genotype relationships is fundamental for the advance of personalized medicine. We develop a computational method, named NETPHIX (NETwork-to-PHenotype association with eXclusivity) to identify subnetworks of genes whose genetic alterations are associated with drug response or other continuous cancer phenotypes. Leveraging interaction information among genes and properties of cancer mutations such as mutual exclusivity, we formulate the problem as an integer linear program and solve it optimally to obtain a subnetwork of associated genes. Applied to a large-scale drug screening dataset, NETPHIX uncovered gene modules significantly associated with drug responses. Utilizing interaction information, NETPHIX modules are functionally coherent and can thus provide important insights into drug action. In addition, we show that modules identified by NETPHIX together with their association patterns can be leveraged to suggest drug combinations.

Details

Database :
OAIster
Journal :
iScience; vol 23, iss 10, 101619; 2589-0042
Notes :
application/pdf, iScience vol 23, iss 10, 101619 2589-0042
Publication Type :
Electronic Resource
Accession number :
edsoai.on1367398082
Document Type :
Electronic Resource