Modular response analysis reformulated as a multilinear regression problem - CRLC Val d'Aurelle - Paul Lamarque
Article Dans Une Revue Bioinformatics Année : 2023

Modular response analysis reformulated as a multilinear regression problem

Résumé

Abstract Motivation Modular response analysis (MRA) is a well-established method to infer biological networks from perturbation data. Classically, MRA requires the solution of a linear system, and results are sensitive to noise in the data and perturbation intensities. Due to noise propagation, applications to networks of 10 nodes or more are difficult. Results We propose a new formulation of MRA as a multilinear regression problem. This enables to integrate all the replicates and potential additional perturbations in a larger, over-determined, and more stable system of equations. More relevant confidence intervals on network parameters can be obtained, and we show competitive performance for networks of size up to 1000. Prior knowledge integration in the form of known null edges further improves these results. Availability and implementation The R code used to obtain the presented results is available from GitHub: https://github.com/J-P-Borg/BioInformatics

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hal-04779962 , version 1 (13-11-2024)

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Jean-Pierre Borg, Jacques Colinge, Patrice Ravel. Modular response analysis reformulated as a multilinear regression problem. Bioinformatics, 2023, 39 (4), ⟨10.1093/bioinformatics/btad166⟩. ⟨hal-04779962⟩
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