Genome Biology (Dec 2022)

NetAct: a computational platform to construct core transcription factor regulatory networks using gene activity

  • Kenong Su,
  • Ataur Katebi,
  • Vivek Kohar,
  • Benjamin Clauss,
  • Danya Gordin,
  • Zhaohui S. Qin,
  • R. Krishna M. Karuturi,
  • Sheng Li,
  • Mingyang Lu

DOI
https://doi.org/10.1186/s13059-022-02835-3
Journal volume & issue
Vol. 23, no. 1
pp. 1 – 21

Abstract

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Abstract A major question in systems biology is how to identify the core gene regulatory circuit that governs the decision-making of a biological process. Here, we develop a computational platform, named NetAct, for constructing core transcription factor regulatory networks using both transcriptomics data and literature-based transcription factor-target databases. NetAct robustly infers regulators’ activity using target expression, constructs networks based on transcriptional activity, and integrates mathematical modeling for validation. Our in silico benchmark test shows that NetAct outperforms existing algorithms in inferring transcriptional activity and gene networks. We illustrate the application of NetAct to model networks driving TGF-β-induced epithelial-mesenchymal transition and macrophage polarization.

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