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A multi-objective genetic algorithm to find active modules in multiplex biological networks

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Listed:
  • Elva María Novoa-del-Toro
  • Efrén Mezura-Montes
  • Matthieu Vignes
  • Morgane Térézol
  • Frédérique Magdinier
  • Laurent Tichit
  • Anaïs Baudot

Abstract

The identification of subnetworks of interest—or active modules—by integrating biological networks with molecular profiles is a key resource to inform on the processes perturbed in different cellular conditions. We here propose MOGAMUN, a Multi-Objective Genetic Algorithm to identify active modules in MUltiplex biological Networks. MOGAMUN optimizes both the density of interactions and the scores of the nodes (e.g., their differential expression). We compare MOGAMUN with state-of-the-art methods, representative of different algorithms dedicated to the identification of active modules in single networks. MOGAMUN identifies dense and high-scoring modules that are also easier to interpret. In addition, to our knowledge, MOGAMUN is the first method able to use multiplex networks. Multiplex networks are composed of different layers of physical and functional relationships between genes and proteins. Each layer is associated to its own meaning, topology, and biases; the multiplex framework allows exploiting this diversity of biological networks. We applied MOGAMUN to identify cellular processes perturbed in Facio-Scapulo-Humeral muscular Dystrophy, by integrating RNA-seq expression data with a multiplex biological network. We identified different active modules of interest, thereby providing new angles for investigating the pathomechanisms of this disease.Availability: MOGAMUN is available at https://github.com/elvanov/MOGAMUN and as a Bioconductor package at https://bioconductor.org/packages/release/bioc/html/MOGAMUN.html.Contact: anais.baudot@univ-amu.frAuthor summary: Integrating different sources of biological information is a powerful way to uncover the functioning of biological systems. In network biology, in particular, integrating interaction data with expression profiles helps contextualizing the networks and identifying subnetworks of interest, aka active modules. We here propose MOGAMUN, a multi-objective genetic algorithm that optimizes both the overall deregulation and the density to identify active modules, considering jointly multiple sources of biological interactions. We demonstrate the performance of MOGAMUN over state-of-the-art methods, and illustrate its usefulness in unveiling perturbed biological processes in Facio-Scapulo-Humeral muscular Dystrophy.

Suggested Citation

  • Elva María Novoa-del-Toro & Efrén Mezura-Montes & Matthieu Vignes & Morgane Térézol & Frédérique Magdinier & Laurent Tichit & Anaïs Baudot, 2021. "A multi-objective genetic algorithm to find active modules in multiplex biological networks," PLOS Computational Biology, Public Library of Science, vol. 17(8), pages 1-24, August.
  • Handle: RePEc:plo:pcbi00:1009263
    DOI: 10.1371/journal.pcbi.1009263
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    1. Zhang Bin & Horvath Steve, 2005. "A General Framework for Weighted Gene Co-Expression Network Analysis," Statistical Applications in Genetics and Molecular Biology, De Gruyter, vol. 4(1), pages 1-45, August.
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