Stochastic models allow improved inference of microbiome interactions from time series data.

IF 9.8 1区 生物学 Q1 Agricultural and Biological Sciences
PLoS Biology Pub Date : 2024-11-21 eCollection Date: 2024-11-01 DOI:10.1371/journal.pbio.3002913
Román Zapién-Campos, Florence Bansept, Arne Traulsen
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引用次数: 0

Abstract

How can we figure out how the different microbes interact within microbiomes? To combine theoretical models and experimental data, we often fit a deterministic model for the mean dynamics of a system to averaged data. However, in the averaging procedure a lot of information from the data is lost-and a deterministic model may be a poor representation of a stochastic reality. Here, we develop an inference method for microbiomes based on the idea that both the experiment and the model are stochastic. Starting from a stochastic model, we derive dynamical equations not only for the average, but also for higher statistical moments of the microbial abundances. We use these equations to infer distributions of the interaction parameters that best describe the biological experimental data-improving identifiability and precision. The inferred distributions allow us to make predictions but also to distinguish between fairly certain parameters and those for which the available experimental data does not give sufficient information. Compared to related approaches, we derive expressions that also work for the relative abundance of microbes, enabling us to use conventional metagenome data, and account for cases where not a single host, but only replicate hosts, can be tracked over time.

通过随机模型,可以更好地从时间序列数据中推断微生物组的相互作用。
我们如何才能弄清微生物群落中不同微生物之间是如何相互作用的呢?为了将理论模型和实验数据结合起来,我们通常会在平均数据的基础上拟合一个系统平均动态的确定性模型。然而,在求平均值的过程中,数据中的大量信息会丢失--确定性模型可能无法很好地反映随机现实。在此,我们基于实验和模型都是随机的这一理念,开发了一种微生物组推断方法。从随机模型出发,我们不仅推导出微生物丰度平均值的动态方程,还推导出微生物丰度较高统计矩的动态方程。我们利用这些方程推断出最能描述生物实验数据的相互作用参数分布,从而提高了可识别性和精确度。通过推断出的分布,我们不仅可以进行预测,还可以区分相当确定的参数和现有实验数据无法提供足够信息的参数。与相关方法相比,我们推导出的表达式也适用于微生物的相对丰度,使我们能够使用传统的元基因组数据,并考虑到不能长期跟踪单一宿主而只能跟踪复制宿主的情况。
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
PLoS Biology
PLoS Biology BIOCHEMISTRY & MOLECULAR BIOLOGY-BIOLOGY
CiteScore
15.40
自引率
2.00%
发文量
359
审稿时长
3-8 weeks
期刊介绍: PLOS Biology is the flagship journal of the Public Library of Science (PLOS) and focuses on publishing groundbreaking and relevant research in all areas of biological science. The journal features works at various scales, ranging from molecules to ecosystems, and also encourages interdisciplinary studies. PLOS Biology publishes articles that demonstrate exceptional significance, originality, and relevance, with a high standard of scientific rigor in methodology, reporting, and conclusions. The journal aims to advance science and serve the research community by transforming research communication to align with the research process. It offers evolving article types and policies that empower authors to share the complete story behind their scientific findings with a diverse global audience of researchers, educators, policymakers, patient advocacy groups, and the general public. PLOS Biology, along with other PLOS journals, is widely indexed by major services such as Crossref, Dimensions, DOAJ, Google Scholar, PubMed, PubMed Central, Scopus, and Web of Science. Additionally, PLOS Biology is indexed by various other services including AGRICOLA, Biological Abstracts, BIOSYS Previews, CABI CAB Abstracts, CABI Global Health, CAPES, CAS, CNKI, Embase, Journal Guide, MEDLINE, and Zoological Record, ensuring that the research content is easily accessible and discoverable by a wide range of audiences.
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