Author:
Jimenez-Dominguez Gabriel,Ravel Patrice,Jalaguier Stéphan,Cavaillès Vincent,Colinge Jacques
Abstract
AbstractModular response analysis (MRA) is a widely used inference technique developed to uncover directions and strengths of connections in molecular networks under a steady-state condition by means of perturbation experiments. We devised several extensions of this methodology to search genomic data for new associations with a biological network inferred by MRA, to improve the predictive accuracy of MRA-inferred networks, and to estimate confidence intervals of MRA parameters from datasets with low numbers of replicates. The classical MRA computations and their extensions were implemented in a freely available R package called aiMeRA (https://github.com/bioinfo-ircm/aiMeRA/). We illustrated the application of our package by assessing the crosstalk between estrogen and retinoic acid receptors, two nuclear receptors implicated in several hormone-driven cancers, such as breast cancer. Based on new data generated for this study, our analysis revealed potential cross-inhibition mediated by the shared corepressors NRIP1 and LCoR. We designed aiMeRA for non-specialists and to allow biologists to perform their own analyses.
Funder
Agence Nationale de la Recherche
Fondation ARC pour la Recherche sur le Cancer
Groupement des Entreprises Françaises dans la lutte contre le Cancer
Publisher
Springer Science and Business Media LLC
Cited by
5 articles.
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