Department of Biomedical Informatics, College of Medicine, the Ohio State University, Columbus, OH 43210, USA.
Brief Bioinform. 2021 Mar 22;22(2):1639-1655. doi: 10.1093/bib/bbaa005.
Together with various hosts and environments, ubiquitous microbes interact closely with each other forming an intertwined system or community. Of interest, shifts of the relationships between microbes and their hosts or environments are associated with critical diseases and ecological changes. While advances in high-throughput Omics technologies offer a great opportunity for understanding the structures and functions of microbiome, it is still challenging to analyse and interpret the omics data. Specifically, the heterogeneity and diversity of microbial communities, compounded with the large size of the datasets, impose a tremendous challenge to mechanistically elucidate the complex communities. Fortunately, network analyses provide an efficient way to tackle this problem, and several network approaches have been proposed to improve this understanding recently. Here, we systemically illustrate these network theories that have been used in biological and biomedical research. Then, we review existing network modelling methods of microbial studies at multiple layers from metagenomics to metabolomics and further to multi-omics. Lastly, we discuss the limitations of present studies and provide a perspective for further directions in support of the understanding of microbial communities.
与各种宿主和环境一起,无处不在的微生物相互密切作用,形成一个相互交织的系统或群落。有趣的是,微生物与其宿主或环境之间关系的转变与重大疾病和生态变化有关。尽管高通量组学技术的进步为理解微生物组的结构和功能提供了很好的机会,但分析和解释组学数据仍然具有挑战性。具体来说,微生物群落的异质性和多样性,加上数据集的庞大规模,给从机制上阐明复杂群落带来了巨大挑战。幸运的是,网络分析提供了一种有效的方法来解决这个问题,最近已经提出了几种网络方法来提高这方面的理解。在这里,我们系统地阐述了这些已经在生物和生物医学研究中使用的网络理论。然后,我们回顾了从宏基因组学到代谢组学再到多组学的微生物研究的现有网络建模方法。最后,我们讨论了现有研究的局限性,并为进一步的方向提供了一个支持理解微生物群落的视角。