MLQMMay 6, 2012

TIGRESS: Trustful Inference of Gene REgulation using Stability Selection

arXiv:1205.1181v1423 citations
Originality Incremental advance
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This work addresses gene network inference for biological and medical applications, offering incremental improvements in accuracy.

The authors tackled the difficult problem of inferring gene regulatory networks from expression data by developing TIGRESS, a method that improves stability selection scoring with LARS, achieving state-of-the-art performance and ranking among the top methods in the DREAM5 challenge.

Inferring the structure of gene regulatory networks (GRN) from gene expression data has many applications, from the elucidation of complex biological processes to the identification of potential drug targets. It is however a notoriously difficult problem, for which the many existing methods reach limited accuracy. In this paper, we formulate GRN inference as a sparse regression problem and investigate the performance of a popular feature selection method, least angle regression (LARS) combined with stability selection. We introduce a novel, robust and accurate scoring technique for stability selection, which improves the performance of feature selection with LARS. The resulting method, which we call TIGRESS (Trustful Inference of Gene REgulation using Stability Selection), was ranked among the top methods in the DREAM5 gene network reconstruction challenge. We investigate in depth the influence of the various parameters of the method and show that a fine parameter tuning can lead to significant improvements and state-of-the-art performance for GRN inference. TIGRESS reaches state-of-the-art performance on benchmark data. This study confirms the potential of feature selection techniques for GRN inference. Code and data are available on http://cbio.ensmp.fr/~ahaury. Running TIGRESS online is possible on GenePattern: http://www.broadinstitute.org/cancer/software/genepattern/.

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