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Modeling the temporal dynamics of the gut microbial community in adults and infants

机译:模拟成人和婴儿肠道微生物群落的时间动态

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摘要

Given the highly dynamic and complex nature of the human gut microbial community, the ability to identify and predict time-dependent compositional patterns of microbes is crucial to our understanding of the structure and functions of this ecosystem. One factor that could affect such time-dependent patterns is microbial interactions, wherein community composition at a given time point affects the microbial composition at a later time point. However, the field has not yet settled on the degree of this effect. Specifically, it has been recently suggested that only a minority of taxa depend on the microbial composition in earlier times. To address the issue of identifying and predicting temporal microbial patterns we developed a new model, MTV-LMM (Microbial Temporal Variability Linear Mixed Model), a linear mixed model for the prediction of microbial community temporal dynamics. MTV-LMM can identify time-dependent microbes (i.e., microbes whose abundance can be predicted based on the previous microbial composition) in longitudinal studies, which can then be used to analyze the trajectory of the microbiome over time. We evaluated the performance of MTV-LMM on real and synthetic time series datasets, and found that MTV-LMM outperforms commonly used methods for microbiome time series modeling. Particularly, we demonstrate that the effect of the microbial composition in previous time points on the abundance of taxa at later time points is underestimated by a factor of at least 10 when applying previous approaches. Using MTV-LMM, we demonstrate that a considerable portion of the human gut microbiome, both in infants and adults, has a significant time-dependent component that can be predicted based on microbiome composition in earlier time points. This suggests that microbiome composition at a given time point is a major factor in defining future microbiome composition and that this phenomenon is considerably more common than previously reported for the human gut microbiome.
机译:鉴于人类肠道微生物群落的高度动态性和复杂性,识别和预测时间依赖性微生物组成模式的能力对于我们了解该生态系统的结构和功能至关重要。可能影响这种时间依赖性模式的一个因素是微生物相互作用,其中给定时间点的群落组成会在以后的时间点影响微生物的组成。但是,该效果的程度尚未确定。具体地,最近已经提出,在较早的时期中仅少数类群依赖于微生物组成。为了解决识别和预测时间微生物模式的问题,我们开发了一种新模型MTV-LMM(微生物时间变异线性混合模型),该模型是用于预测微生物群落时间动态的线性混合模型。 MTV-LMM可以在纵向研究中识别时间相关的微生物(即可以基于先前的微生物组成预测其丰度的微生物),然后可以将其用于分析微生物组随时间变化的轨迹。我们评估了MTV-LMM在真实和合成时间序列数据集上的性能,发现MTV-LMM优于微生物组时间序列建模的常用方法。特别是,我们证明了采用先前的方法时,先前时间点中微生物组成对稍后时间点类群丰富度的影响被低估了至少10倍。使用MTV-LMM,我们证明,无论是婴儿还是成人,人体肠道微生物组中有相当一部分具有显着的时间依赖性,可以根据早期时间点的微生物组组成进行预测。这表明在给定时间点的微生物组组成是确定未来微生物组组成的主要因素,而且这种现象比以前报道的人类肠道微生物组更为普遍。

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