Inferring resource competition in microbial communities from time series.

ArXiv Pub Date : 2025-05-02
Xiaowen Chen, Kyle Crocker, Seppe Kuehn, Aleksandra M Walczak, Thierry Mora
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Abstract

The competition for resources is a defining feature of microbial communities. In many contexts, from soils to host-associated communities, highly diverse microbes are organized into metabolic groups or guilds with similar resource preferences. The resource preferences of individual taxa that give rise to these guilds are critical for understanding fluxes of resources through the community and the structure of diversity in the system. However, inferring the metabolic capabilities of individual taxa, and their competition with other taxa, within a community is challenging and unresolved. Here we address this gap in knowledge by leveraging dynamic measurements of abundances in communities. We show that simple correlations are often misleading in predicting resource competition. We show that spectral methods such as the cross-power spectral density (CPSD) and coherence that account for time-delayed effects are superior metrics for inferring the structure of resource competition in communities. We first demonstrate this fact on synthetic data generated from consumer-resource models with time-dependent resource availability, where taxa are organized into groups or guilds with similar resource preferences. By applying spectral methods to oceanic plankton time-series data, we demonstrate that these methods detect interaction structures among species with similar genomic sequences. Our results indicate that analyzing temporal data across multiple timescales can reveal the underlying structure of resource competition within communities.

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从时间序列推断微生物群落中的资源竞争。
对资源的竞争是微生物群落的一个决定性特征。在许多情况下,从土壤到宿主相关群落,高度多样化的微生物被组织成具有相似资源偏好的代谢组或行会。产生这些行会的单个分类群的资源偏好对于理解资源在群落中的流动和系统中的多样性结构至关重要。然而,推断单个分类群的代谢能力,以及它们与其他分类群之间的竞争,在一个群落中是具有挑战性和未解决的。在这里,我们通过利用社区中丰度的动态测量来解决这一知识差距。我们表明,简单的相关性在预测资源竞争时往往会产生误导。研究表明,考虑延迟效应的光谱方法,如交叉功率谱密度(CPSD)和相干性,是推断社区资源竞争结构的优越指标。我们首先在具有时间依赖性资源可用性的消费者资源模型生成的合成数据上证明了这一事实,其中分类群被组织成具有相似资源偏好的组或行会。通过将光谱方法应用于海洋浮游生物时间序列数据,我们证明了这些方法可以检测具有相似基因组序列的物种之间的相互作用结构。研究结果表明,跨时间尺度的时间数据分析可以揭示群落内部资源竞争的潜在结构。
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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