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Network analyses in microbiome based on high-throughput multi-omics data

Zhaoqian Liu, Anjun Ma, Ewy A. Mathé, Marlena R. Merling, Qin Ma, Bingqiang Liu

2020Briefings in Bioinformatics95 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

MetagenomicsMicrobiomeOmicsData scienceComputer scienceComputational biologyBiological networkBiologyBioinformaticsBiochemistryGeneBioinformatics and Genomic NetworksMetabolomics and Mass Spectrometry StudiesGut microbiota and health
Network analyses in microbiome based on high-throughput multi-omics data | Litcius