Context Sensitive Modeling of Cancer Drug Sensitivity
Author(s) -
BoJuen Chen,
Oren Litvin,
Lyle Ungar,
Dana Pe’er
Publication year - 2015
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0133850
Subject(s) - context (archaeology) , sensitivity (control systems) , drug , cancer , confounding , computational biology , drug response , computer science , cancer drugs , elastic net regularization , predictive modelling , bioinformatics , machine learning , biology , statistics , mathematics , genetics , pharmacology , feature selection , paleontology , electronic engineering , engineering
Recent screening of drug sensitivity in large panels of cancer cell lines provides a valuable resource towards developing algorithms that predict drug response. Since more samples provide increased statistical power, most approaches to prediction of drug sensitivity pool multiple cancer types together without distinction. However, pan-cancer results can be misleading due to the confounding effects of tissues or cancer subtypes. On the other hand, independent analysis for each cancer-type is hampered by small sample size. To balance this trade-off, we present CHER (Contextual Heterogeneity Enabled Regression), an algorithm that builds predictive models for drug sensitivity by selecting predictive genomic features and deciding which ones should—and should not—be shared across different cancers, tissues and drugs. CHER provides significantly more accurate models of drug sensitivity than comparable elastic-net-based models. Moreover, CHER provides better insight into the underlying biological processes by finding a sparse set of shared and type-specific genomic features.
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