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Drug sensitivity prediction from cell line-based pharmacogenomics data: guidelines for developing machine learning models

Hossein Sharifi-Noghabi, Soheil Jahangiri, Petr Smirnov, C. Suk-Yee Hon, Anthony Mammoliti, Sisira Kadambat Nair, Arvind Singh Mer, Martin Ester, Benjamin Haibe‐Kains

2021Briefings in Bioinformatics63 citationsDOIOpen Access PDF

Abstract

The goal of precision oncology is to tailor treatment for patients individually using the genomic profile of their tumors. Pharmacogenomics datasets such as cancer cell lines are among the most valuable resources for drug sensitivity prediction, a crucial task of precision oncology. Machine learning methods have been employed to predict drug sensitivity based on the multiple omics data available for large panels of cancer cell lines. However, there are no comprehensive guidelines on how to properly train and validate such machine learning models for drug sensitivity prediction. In this paper, we introduce a set of guidelines for different aspects of training gene expression-based predictors using cell line datasets. These guidelines provide extensive analysis of the generalization of drug sensitivity predictors and challenge many current practices in the community including the choice of training dataset and measure of drug sensitivity. The application of these guidelines in future studies will enable the development of more robust preclinical biomarkers.

Topics & Concepts

PharmacogenomicsMachine learningSensitivity (control systems)Computer scienceDrug responseGeneralizationArtificial intelligencePrecision medicineSet (abstract data type)DrugTraining setTask (project management)Data miningMedicinePharmacologyPathologyElectronic engineeringMathematical analysisProgramming languageMathematicsManagementEconomicsEngineeringCancer Genomics and DiagnosticsComputational Drug Discovery MethodsGene expression and cancer classification
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