International Journal of Molecular Sciences (May 2024)

A Causal Regulation Modeling Algorithm for Temporal Events with Application to <i>Escherichia coli</i>’s Aerobic to Anaerobic Transition

  • Yigang Chen,
  • Runbo Mao,
  • Jiatong Xu,
  • Yixian Huang,
  • Jingyi Xu,
  • Shidong Cui,
  • Zihao Zhu,
  • Xiang Ji,
  • Shenghan Huang,
  • Yanzhe Huang,
  • Hsi-Yuan Huang,
  • Shih-Chung Yen,
  • Yang-Chi-Duang Lin,
  • Hsien-Da Huang

DOI
https://doi.org/10.3390/ijms25115654
Journal volume & issue
Vol. 25, no. 11
p. 5654

Abstract

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Time-series experiments are crucial for understanding the transient and dynamic nature of biological phenomena. These experiments, leveraging advanced classification and clustering algorithms, allow for a deep dive into the cellular processes. However, while these approaches effectively identify patterns and trends within data, they often need to improve in elucidating the causal mechanisms behind these changes. Building on this foundation, our study introduces a novel algorithm for temporal causal signaling modeling, integrating established knowledge networks with sequential gene expression data to elucidate signal transduction pathways over time. Focusing on Escherichia coli’s (E. coli) aerobic to anaerobic transition (AAT), this research marks a significant leap in understanding the organism’s metabolic shifts. By applying our algorithm to a comprehensive E. coli regulatory network and a time-series microarray dataset, we constructed the cross-time point core signaling and regulatory processes of E. coli’s AAT. Through gene expression analysis, we validated the primary regulatory interactions governing this process. We identified a novel regulatory scheme wherein environmentally responsive genes, soxR and oxyR, activate fur, modulating the nitrogen metabolism regulators fnr and nac. This regulatory cascade controls the stress regulators ompR and lrhA, ultimately affecting the cell motility gene flhD, unveiling a novel regulatory axis that elucidates the complex regulatory dynamics during the AAT process. Our approach, merging empirical data with prior knowledge, represents a significant advance in modeling cellular signaling processes, offering a deeper understanding of microbial physiology and its applications in biotechnology.

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