Gene regulatory networks with binary weights

Biosystems. 2023 May:227-228:104902. doi: 10.1016/j.biosystems.2023.104902. Epub 2023 Apr 18.

Abstract

An evolutionary computation framework to learn binary threshold networks is presented. Inspired by the recent trend of binary neural networks, where weights and activation thresholds are represented using 1 and -1 such that they can be stored in 1-bit instead of full precision, we explore this approach for gene regulatory network modeling. We test our method by inferring binary threshold networks of two regulatory network models: Quorum sensing systems in bacterium Paraburkholderia phytofirmans PsJN and the fission yeast cell-cycle. We considered differential evolution and particle swarm optimization for the simulations. Results for weights having only 1 and -1 values, and different activation thresholds are presented. Full binary threshold networks were found with minimum error (2 bits), whereas when the binary restriction is relaxed for the activation thresholds, networks with 0 bit error were found.

Keywords: Binary threshold networks; Differential evolution; Gene regulatory networks; Particle swarm optimization.

MeSH terms

  • Algorithms
  • Gene Regulatory Networks* / genetics
  • Neural Networks, Computer*
  • Quorum Sensing / genetics