基于统计的基因网络构建与分析方法:在细菌中的应用

Zhiyuan Zhang, Guozhong Chen, Erguang Li
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摘要

细菌在环境保护、人类健康和医药方面发挥着至关重要的作用。无论是在肠道还是在土壤中,细菌基因组都是丰富的资源库,例如探索潜在的药物和生物农药。然而,我们开发新疗法和加深对细菌世界了解的能力却因细菌基因的功能基本未知而受到阻碍。在这项研究中,我们提出了一种基于高斯图形模型(GGM)和随机抽样策略的基因网络构建和分析方法,以推断细菌基因组水平上的直接相互作用。我们以霍乱弧菌和金黄色葡萄球菌为例,将基于部分相关性的基因共表达数据与从公共数据库中提取的基因调控和本质信息相结合,构建了更全面的基因网络。根据细菌的不同表型(如生物膜形成、鞭毛组装和应激反应)构建的网络证明了这种方法在解密未知基因功能、发现新的表型相关因子以及识别其相应的相互作用方面的有效性,从而为研究人员的实验验证提供了新的目标。此外,我们还将这一方法扩展到了 14 种细菌,包括 13 种病原体,为在基因组水平上研究这些细菌的基因功能和通路提供了支持。更重要的是,对于其他物种,只要有足够的转录组测序样本,这种基因网络构建方法也很容易实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A statistical-based method for the construction and analysis of gene network:application to bacteria
Bacteria play a crucial role in environmental conservation, human health, and medicine. Whether in the gut or the soil, bacterial genomes are rich repositories of resources, such as exploring potential drugs and biopesticides. However, our ability to develop new therapies and deepen our understanding of the bacterial world is hindered by the largely unknown functions of bacterial genes. In this study, we proposed a method of gene network construction and analysis based on a Gaussian Graphical Model (GGM) and random sampling strategy to infer direct interactions at the genomic level in bacteria. Using Vibrio cholerae and Staphylococcus aureus as examples, we integrated partial correlation-based gene co-expression data with gene regulatory and essentiality information extracted from public databases to construct more comprehensive gene networks. Networks built upon bacterial different phenotypes, such as biofilm formation, flagellar assembly, and stress response, demonstrate the effectiveness of this method in deciphering unknown gene functions, uncovering new phenotype-associated factors, and identifying their corresponding interactions, thus providing new targets for experimental validation by researchers. Additionally, we extended this method to 14 bacteria, including 13 pathogens, supporting the investigation of gene functions and pathways at the genomic level in these bacteria. More importantly, for other species, this method of gene network construction can be easily implemented, provided that sufficient transcriptome sequencing samples are available.
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