Structuring complexity by mapping the possible in microbial ecosystems

IF 7.5 2区 生物学 Q1 MICROBIOLOGY
Djordje Bajić, Marco van Oort, Minke Gabriëls, Uroš Gojković
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引用次数: 0

Abstract

Microbial ecosystems consist of many interacting components that integrate through stochastic and highly dynamic processes across multiple scales. Yet, despite this complexity, microbial communities exhibit remarkably robust patterns and reproducible functions. This apparent paradox reflects the role of constraints, whether physical, physiological, or evolutionary, that channel stochasticity into structured outcomes. Due to the limited knowledge of the nature of these constraints, models in ecology have traditionally relied on stochastic exploration under minimal mechanistic assumptions. Now, advances in data availability and computational methods increasingly allow us to construct models that incorporate explicit mechanistic constraints. In this review, we synthesize emerging modeling approaches that explore the space of ecological possibility in microbial ecosystems under realistic constraints, such as those imposed by metabolic stoichiometry, thermodynamics, or the structure of ecological interaction networks. We argue that integrating such constraints can significantly improve the predictive resolution of models, helping us build a much needed bridge between theory and data. We further discuss how novel statistical approaches are revealing simple, low-dimensional patterns in microbial communities, offering empirical clues for identifying the underlying constraints. Together, these developments suggest a path toward a data-driven and mechanistically informed theory in microbial ecology.
通过绘制微生物生态系统中的可能性来构建复杂性
微生物生态系统由许多相互作用的成分组成,这些成分通过随机和高度动态的过程在多个尺度上整合在一起。然而,尽管这种复杂性,微生物群落表现出非常强大的模式和可复制的功能。这种明显的矛盾反映了约束的作用,无论是物理的、生理的还是进化的,将随机性引导到结构化的结果中。由于对这些约束性质的认识有限,生态学模型传统上依赖于最小机械假设下的随机探索。现在,数据可用性和计算方法的进步越来越允许我们构建包含明确机制约束的模型。在这篇综述中,我们综合了新兴的建模方法,这些方法在现实的限制下探索微生物生态系统中生态可能性的空间,如代谢化学计量学、热力学或生态相互作用网络结构所施加的限制。我们认为,整合这些约束可以显著提高模型的预测分辨率,帮助我们在理论和数据之间建立一个急需的桥梁。我们进一步讨论了新颖的统计方法如何揭示微生物群落中简单的低维模式,为识别潜在的限制提供经验线索。总之,这些发展为微生物生态学中数据驱动和机械信息理论指明了一条道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Current opinion in microbiology
Current opinion in microbiology 生物-微生物学
CiteScore
10.00
自引率
0.00%
发文量
114
审稿时长
6-12 weeks
期刊介绍: Current Opinion in Microbiology is a systematic review journal that aims to provide specialists with a unique and educational platform to keep up-to-date with the expanding volume of information published in the field of microbiology. It consists of 6 issues per year covering the following 11 sections, each of which is reviewed once a year: Host-microbe interactions: bacteria Cell regulation Environmental microbiology Host-microbe interactions: fungi/parasites/viruses Antimicrobials Microbial systems biology Growth and development: eukaryotes/prokaryotes
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