4.7 Article

Discriminative local subspaces in gene expression data for effective gene function prediction

Journal

BIOINFORMATICS
Volume 28, Issue 17, Pages 2256-2264

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bioinformatics/bts455

Keywords

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Funding

  1. International Early Career Scientist program from Howard Hughes Medical Institute
  2. Fondo de Desarrollo de Areas Prioritarias (FONDAP) Center for Genome Regulation [15090007]
  3. Millennium Nucleus Center for Plant Functional Genomics [P10-062-F]
  4. Fondo Nacional de Desarrollo Cientifico y Tecnologico [1100698]
  5. Comision Nacional de Investigacion Cientifica y Tecnologica-ANR program [ANR-007]
  6. Corporacion de Fomento de la Produccion Genome Program [CORFO07Genoma01]

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Motivation: Massive amounts of genome-wide gene expression data have become available, motivating the development of computational approaches that leverage this information to predict gene function. Among successful approaches, supervised machine learning methods, such as Support Vector Machines (SVMs), have shown superior prediction accuracy. However, these methods lack the simple biological intuition provided by co-expression networks (CNs), limiting their practical usefulness. Results: In this work, we present Discriminative Local Subspaces (DLS), a novel method that combines supervised machine learning and co-expression techniques with the goal of systematically predict genes involved in specific biological processes of interest. Unlike traditional CNs, DLS uses the knowledge available in Gene Ontology (GO) to generate informative training sets that guide the discovery of expression signatures: expression patterns that are discriminative for genes involved in the biological process of interest. By linking genes co-expressed with these signatures, DLS is able to construct a discriminative CN that links both, known and previously uncharacterized genes, for the selected biological process. This article focuses on the algorithm behind DLS and shows its predictive power using an Arabidopsis thaliana dataset and a representative set of 101 GO terms from the Biological Process Ontology. Our results show that DLS has a superior average accuracy than both SVMs and CNs. Thus, DLS is able to provide the prediction accuracy of supervised learning methods while maintaining the intuitive understanding of CNs.

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