Lange Emanuel, Kranert Lena, Krüger Jacob, Benndorf Dirk, Heyer Robert
Multidimensional Omics Data Analysis, Department for Bioanalytics, Leibniz-Institut für Analytische Wissenschaften - ISAS - e.V., Dortmund, Germany.
Graduate School Digital Infrastructure for the Life Sciences, Bielefeld Institute for Bioinformatics Infrastructure (BIBI), Faculty of Technology, Bielefeld University, Bielefeld, Germany.
Front Microbiol. 2024 Jun 19;15:1368377. doi: 10.3389/fmicb.2024.1368377. eCollection 2024.
Microbiomes, comprised of diverse microbial species and viruses, play pivotal roles in human health, environmental processes, and biotechnological applications and interact with each other, their environment, and hosts via ecological interactions. Our understanding of microbiomes is still limited and hampered by their complexity. A concept improving this understanding is systems biology, which focuses on the holistic description of biological systems utilizing experimental and computational methods. An important set of such experimental methods are metaomics methods which analyze microbiomes and output lists of molecular features. These lists of data are integrated, interpreted, and compiled into computational microbiome models, to predict, optimize, and control microbiome behavior. There exists a gap in understanding between microbiologists and modelers/bioinformaticians, stemming from a lack of interdisciplinary knowledge. This knowledge gap hinders the establishment of computational models in microbiome analysis. This review aims to bridge this gap and is tailored for microbiologists, researchers new to microbiome modeling, and bioinformaticians. To achieve this goal, it provides an interdisciplinary overview of microbiome modeling, starting with fundamental knowledge of microbiomes, metaomics methods, common modeling formalisms, and how models facilitate microbiome control. It concludes with guidelines and repositories for modeling. Each section provides entry-level information, example applications, and important references, serving as a valuable resource for comprehending and navigating the complex landscape of microbiome research and modeling.
微生物群落由多种微生物物种和病毒组成,在人类健康、环境过程和生物技术应用中发挥着关键作用,并通过生态相互作用彼此之间、与环境及宿主相互作用。我们对微生物群落的理解仍然有限,且因其复杂性而受到阻碍。一个有助于增进这种理解的概念是系统生物学,它专注于利用实验和计算方法对生物系统进行整体描述。这类实验方法中的一个重要类别是元组学方法,它分析微生物群落并输出分子特征列表。这些数据列表被整合、解读并编制成计算微生物群落模型,以预测、优化和控制微生物群落行为。微生物学家与建模人员/生物信息学家之间存在理解上的差距,这源于缺乏跨学科知识。这种知识差距阻碍了微生物群落分析中计算模型的建立。本综述旨在弥合这一差距,是为微生物学家、微生物群落建模新手和生物信息学家量身定制的。为实现这一目标,它提供了微生物群落建模的跨学科概述,首先介绍微生物群落的基础知识、元组学方法、常见的建模形式主义,以及模型如何促进微生物群落控制。最后给出了建模指南和资源库。每个部分都提供了入门级信息、示例应用和重要参考文献,是理解和探索微生物群落研究与建模复杂领域的宝贵资源。