Abstract

BackgroundAn enduring challenge in personalized medicine is to select right drug for individual patients. Testing drugs on patients in large clinical trials is one way to assess their efficacy and toxicity, but it is impractical to test hundreds of drugs currently under development. Therefore the preclinical prediction model is highly expected as it enables prediction of drug response to hundreds of cell lines in parallel.MethodsRecently, two large-scale pharmacogenomic studies screened multiple anticancer drugs on over 1000 cell lines in an effort to elucidate the response mechanism of anticancer drugs. To this aim, we here used gene expression features and drug sensitivity data in Cancer Cell Line Encyclopedia (CCLE) to build a predictor based on Support Vector Machine (SVM) and a recursive feature selection tool. Robustness of our model was validated by cross-validation and an independent dataset, the Cancer Genome Project (CGP).ResultsOur model achieved good cross validation performance for most drugs in the Cancer Cell Line Encyclopedia (≥80 % accuracy for 10 drugs, ≥ 75 % accuracy for 19 drugs). Independent tests on eleven common drugs between CCLE and CGP achieved satisfactory performance for three of them, i.e., AZD6244, Erlotinib and PD-0325901, using expression levels of only twelve, six and seven genes, respectively.ConclusionsThese results suggest that drug response could be effectively predicted from genomic features. Our model could be applied to predict drug response for some certain drugs and potentially play a complementary role in personalized medicine.Electronic supplementary materialThe online version of this article (doi:10.1186/s12885-015-1492-6) contains supplementary material, which is available to authorized users.

Highlights

  • An enduring challenge in personalized medicine is to select right drug for individual patients

  • Cell lines in Cell Line Encyclopedia (CCLE) were divided into three groups (Sensitive, Resistant and Intermediate) according to their normalized sensitivities to a given drug

  • We used gene expression features selected by Support Vector Machine (SVM)-Recursive feature selection (RFE) to build an SVM model for the CCLE dataset, where the optimal feature number and parameters were obtained by 10-fold cross validation

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Summary

Introduction

An enduring challenge in personalized medicine is to select right drug for individual patients. With the development of the high-throughput technology in the past few decades, an alternative scheme was proposed by several research groups to build genomic predictors of drug response from large panels of cancer cell lines [3,4,5,6,7,8]. Most of these methods are based on gene expression profile. Staunton et al developed a weighted voting classification model to predict anticancer

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