A Community Effort To Assess and Improve Drug Sensitivity Prediction Algorithms

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BRONZE

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Yes

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Abstract

Predicting the best treatment strategy from genomic information is a core goal of precision medicine. Here we focus on predicting drug response based on a cohort of genomic, epigenomic and proteomic profiling data sets measured in human breast cancer cell lines. Through a collaborative effort between the National Cancer Institute (NCI) and the Dialogue on Reverse Engineering Assessment and Methods (DREAM) project, we analyzed a total of 44 drug sensitivity prediction algorithms. The top-performing approaches modeled nonlinear relationships and incorporated biological pathway information. We found that gene expression microarrays consistently provided the best predictive power of the individual profiling data sets; however, performance was increased by including multiple, independent data sets. We discuss the innovations underlying the top-performing methodology, Bayesian multitask MKL, and we provide detailed descriptions of all methods. This study establishes benchmarks for drug sensitivity prediction and identifies approaches that can be leveraged for the development of new methods.

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Keywords

Gene expression, Forecasting, Computational models, Biological pathways, Genomic information, Epigenomics, Proteomics, Biological pathways, Antineoplastic Agents, Genomic information, Neoplasms, Computational models, Humans, ta518, ta515, ta113, ta112, [SDV.BIBS] Life Sciences [q-bio]/Quantitative Methods [q-bio.QM], ta213, Gene Expression Profiling, Genomics, [SDV.BIBS]Life Sciences [q-bio]/Quantitative Methods [q-bio.QM], Gene Expression Regulation, Neoplastic, Drug Resistance, Neoplasm, ta5141, Gene expression, Algorithms, Forecasting

Fields of Science

0301 basic medicine, 03 medical and health sciences, 0303 health sciences

Citation

Costello, J. C., Heiser, L. M., Georgii, E., Gönen, M., Menden, M. P., and Wang, N. J., ...Stolovitzky, G. (2014). A community effort to assess and improve drug sensitivity prediction algorithms. Nature Biotechnology, 32(12), 1202-1212. doi:10.1038/nbt.2877

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OpenCitations Citation Count
681

Volume

32

Issue

12

Start Page

1202

End Page

1212
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CrossRef : 669

PubMed : 381

Patent Family : 1

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Mendeley Readers : 877

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