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TANDEM: a two-stage approach to maximize interpretability of drug response models based on multiple molecular data types.

Nanne Aben ,
Daniel J Vis ,
Magali Michaut ,
Lodewyk F A Wessels

Abstract

RESULTS

To utilize all data types in a more balanced way, we developed TANDEM, a two-stage approach in which the first stage explains response using upstream features (mutations, copy number, methylation and cancer type) and the second stage explains the remainder using downstream features (gene expression). Applying TANDEM to 934 cell lines profiled across 265 drugs (GDSC1000), we show that the resulting models are more interpretable, while retaining the same predictive performance as the classic approach. Using the more balanced contributions per data type as determined with TANDEM, we find that response to MAPK pathway inhibitors is largely predicted by mutation data, while predicting response to DNA damaging agents requires gene expression data, in particular SLFN11 expression.

SUPPLEMENTARY INFORMATION

Supplementary data are available at Bioinformatics online.

CONTACT

m.michaut@nki.nl or l.wessels@nki.nl

MOTIVATION

Clinical response to anti-cancer drugs varies between patients. A large portion of this variation can be explained by differences in molecular features, such as mutation status, copy number alterations, methylation and gene expression profiles. We show that the classic approach for combining these molecular features (Elastic Net regression on all molecular features simultaneously) results in models that are almost exclusively based on gene expression. The gene expression features selected by the classic approach are difficult to interpret as they often represent poorly studied combinations of genes, activated by aberrations in upstream signaling pathways.

AVAILABILITY AND IMPLEMENTATION

TANDEM is available as an R package on CRAN (for more information, see http://ccb.nki.nl/software/tandem).

More about this publication

Bioinformatics (Oxford, England)

Volume 32
Issue nr. 17
Pages i413-i420
Publication date 01-09-2016

Full text links

Publisher website (DOI) 10.1093/bioinformatics/btw449
Europe PubMed Central 27587657
Pubmed 27587657

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