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Article Dans Une Revue International Journal on Artificial Intelligence Tools Année : 2021

Data-driven Gene Regulatory Networks Inference Based on Classification Algorithms

Résumé

Inferring Gene Regulatory Networks from high-throughput gene expression data is a challenging problem, addressed by the systems biology community. Most approaches that aim at unraveling the gene regulation mechanisms in a data-driven way, analyze gene expression datasets to score potential regulatory links between transcription factors and target genes. So far, three major families of approaches have been proposed to score regulatory links. These methods rely respectively on correlation measures, mutual information metrics, and regression algorithms. In this paper we present a new family of data-driven inference methods. This new family, inspired by the regression-based paradigm, relies on the use of classification algorithms. This paper assesses and advocates for the use of this paradigm as a new promising approach to infer gene regulatory networks. Indeed, the development and assessment of five new inference methods based on well-known classification algorithms shows that the classification-based inference family exhibits good results when compared to well-established paradigms.
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hal-03297056 , version 1 (23-07-2021)

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Sergio Peignier, Pauline Schmitt, Federica Calevro. Data-driven Gene Regulatory Networks Inference Based on Classification Algorithms. International Journal on Artificial Intelligence Tools, 2021, 30 (04), pp.2150022. ⟨10.1142/S0218213021500226⟩. ⟨hal-03297056⟩
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