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HOME > J. Microbiol > Volume 62(12); 2024 > Article
Journal Article
An Optimized Method for Reconstruction of Transcriptional Regulatory Networks in Bacteria Using ChIP-exo and RNA-seq Datasets
Minchang Jang, Joon Young Park, Gayeon Lee, Donghyuk Kim
Journal of Microbiology 2024;62(12):1075-1088
DOI: https://doi.org/10.1007/s12275-024-00181-6
Published online: November 11, 2024
School of Energy and Chemical Engineering, Ulsan National Institute of Science and Technology (UNIST), Ulsan, 44919, Republic of Korea.
Corresponding author:  Donghyuk Kim,
Email: dkim@unist.ac.kr

Minchang Jang and Joon Young Park contributed equally to this study as co-first authors.

Received: 2 July 2024   • Revised: 8 October 2024   • Accepted: 9 October 2024
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Transcriptional regulatory networks (TRNs) in bacteria are crucial for elucidating the mechanisms that regulate gene expression and cellular responses to environmental stimuli. These networks delineate the interactions between transcription factors (TFs) and their target genes, thereby uncovering the regulatory processes that modulate gene expression under varying environmental conditions. Analyzing TRNs offers valuable insights into bacterial adaptation, stress responses, and metabolic optimization from an evolutionary standpoint. Additionally, understanding TRNs can drive the development of novel antimicrobial therapies and the engineering of microbial strains for biofuel and bioproduct production. This protocol integrates advanced data analysis pipelines, including ChEAP, DEOCSU, and DESeq2, to analyze omics datasets that encompass genome-wide TF binding sites and transcriptome profiles derived from ChIP-exo and RNA-seq experiments. This approach minimizes both the time required and the risk of bias, making it accessible to non-expert users. Key steps in the protocol include preprocessing and peak calling from ChIP-exo data, differential expression analysis of RNA-seq data, and motif and regulon analysis. This method offers a comprehensive and efficient framework for TRN reconstruction across various bacterial strains, enhancing both the accuracy and reliability of the analysis while providing valuable insights for basic and applied research.

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    An Optimized Method for Reconstruction of Transcriptional Regulatory Networks in Bacteria Using ChIP-exo and RNA-seq Datasets
    J. Microbiol. 2024;62(12):1075-1088.   Published online November 11, 2024
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