Connect the dots: sketching out microbiome interactions through networking approaches.

IF 3.8 Microbiome research reports Pub Date : 2023-07-18 eCollection Date: 2023-01-01 DOI:10.20517/mrr.2023.25
Marco Fabbrini, Daniel Scicchitano, Marco Candela, Silvia Turroni, Simone Rampelli
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Abstract

Microbiome networking analysis has emerged as a powerful tool for studying the complex interactions among microorganisms in various ecological niches, including the human body and several environments. This analysis has been used extensively in both human and environmental studies, revealing key taxa and functional units peculiar to the ecosystem considered. In particular, it has been mainly used to investigate the effects of environmental stressors, such as pollution, climate change or therapies, on host-associated microbial communities and ecosystem function. In this review, we discuss the latest advances in microbiome networking analysis, including methods for constructing and analyzing microbiome networks, and provide a case study on how to use these tools. These analyses typically involve constructing a network that represents interactions among microbial taxa or functional units, such as genes or metabolic pathways. Such networks can be based on a variety of data sources, including 16S rRNA sequencing, metagenomic sequencing, and metabolomics data. Once constructed, these networks can be analyzed to identify key nodes or modules important for the stability and function of the microbiome. By providing insights into essential ecological features of microbial communities, microbiome networking analysis has the potential to transform our understanding of the microbial world and its impact on human health and the environment.

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连接点:通过网络方法勾勒出微生物组的相互作用。
微生物组网络分析已成为研究各种生态位(包括人体和一些环境)中微生物之间复杂相互作用的有力工具。该分析已广泛用于人类和环境研究,揭示了所考虑的生态系统特有的关键分类群和功能单位。特别是,它主要用于研究环境应激源(如污染、气候变化或治疗)对宿主相关微生物群落和生态系统功能的影响。本文综述了微生物组网络分析的最新进展,包括构建和分析微生物组网络的方法,并提供了如何使用这些工具的案例研究。这些分析通常涉及构建一个代表微生物分类群或功能单位(如基因或代谢途径)之间相互作用的网络。这种网络可以基于多种数据源,包括16S rRNA测序、宏基因组测序和代谢组学数据。一旦构建,这些网络就可以进行分析,以确定对微生物组的稳定性和功能重要的关键节点或模块。通过提供对微生物群落基本生态特征的见解,微生物组网络分析有可能改变我们对微生物世界及其对人类健康和环境影响的理解。
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