An Optimized Method for Reconstruction of Transcriptional Regulatory Networks in Bacteria Using ChIP-exo and RNA-seq Datasets.

IF 3.3 4区 生物学 Q2 MICROBIOLOGY
Minchang Jang, Joon Young Park, Gayeon Lee, Donghyuk Kim
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引用次数: 0

Abstract

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.

利用 ChIP-exo 和 RNA-seq 数据集重建细菌转录调控网络的优化方法
细菌中的转录调控网络(TRN)对于阐明基因表达调控机制和细胞对环境刺激的反应至关重要。这些网络描述了转录因子(TF)与其靶基因之间的相互作用,从而揭示了在不同环境条件下调节基因表达的调控过程。从进化的角度来看,分析 TRN 对细菌的适应、应激反应和代谢优化提供了宝贵的见解。此外,了解 TRNs 还能推动新型抗菌疗法的开发,以及用于生物燃料和生物产品生产的微生物菌株工程。该方案整合了先进的数据分析管道,包括 ChEAP、DEOCSU 和 DESeq2,以分析包括全基因组 TF 结合位点和来自 ChIP-exo 和 RNA-seq 实验的转录组图谱的 omics 数据集。这种方法最大限度地减少了所需时间和偏差风险,使非专业用户也能使用。该方案的关键步骤包括 ChIP-exo 数据的预处理和峰值调用、RNA-seq 数据的差异表达分析,以及母题和调控子分析。这种方法为各种细菌菌株的 TRN 重建提供了一个全面而高效的框架,既提高了分析的准确性和可靠性,又为基础研究和应用研究提供了有价值的见解。
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来源期刊
Journal of Microbiology
Journal of Microbiology 生物-微生物学
CiteScore
5.70
自引率
3.30%
发文量
0
审稿时长
3 months
期刊介绍: Publishes papers that deal with research on microorganisms, including archaea, bacteria, yeasts, fungi, microalgae, protozoa, and simple eukaryotic microorganisms. Topics considered for publication include Microbial Systematics, Evolutionary Microbiology, Microbial Ecology, Environmental Microbiology, Microbial Genetics, Genomics, Molecular Biology, Microbial Physiology, Biochemistry, Microbial Pathogenesis, Host-Microbe Interaction, Systems Microbiology, Synthetic Microbiology, Bioinformatics and Virology. Manuscripts dealing with simple identification of microorganism(s), cloning of a known gene and its expression in a microbial host, and clinical statistics will not be considered for publication by JM.
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