Lewis Garry, Reczek Sebastian, Omozusi Osayenmwen, Hogue Taylor, Cook Marc D, Hampton-Marcell Jarrad
Department of Biological Sciences, University of Illinois at Chicago, Chicago, IL 60607, USA.
Department of Biomedical Engineering, University of Illinois at Chicago, Chicago, IL 60607, USA.
Biomedicines. 2024 Oct 11;12(10):2309. doi: 10.3390/biomedicines12102309.
This study aimed to characterize the association between microbial dynamics and excessive exercise. Swabbed fecal samples, body composition (percent body fat), and swimming logs were collected (n = 94) from a single individual over 107 days as he swam across the Pacific Ocean. The V4 region of the 16S rRNA gene was sequenced, generating 6.2 million amplicon sequence variants. Multivariate analysis was used to analyze the microbial community structure, and machine learning (random forest) was used to model the microbial dynamics over time using R statistical programming. Our findings show a significant reduction in percent fat mass (Pearson; < 0.01, R = -0.89) and daily swim distance (Spearman; < 0.01, R = -0.30). Furthermore, the microbial community structure became increasingly similar over time (PERMANOVA; < 0.01, R = -0.27). Decision-based modeling (random forest) revealed the genera , , , , , , and as important microbial biomarkers of excessive exercise for explaining variations observed throughout the swim (OOB; R = 0.893). We show that microbial community structure and composition accurately classify outcomes of excessive exercise in relation to body composition, blood pressure, and daily swim distance. More importantly, microbial dynamics reveal the microbial taxa significantly associated with increased exercise volume, highlighting specific microbes responsive to excessive swimming.
本研究旨在描述微生物动态与过度运动之间的关联。在一名个体穿越太平洋的107天游泳过程中,收集了其擦拭的粪便样本、身体成分(体脂百分比)和游泳记录(n = 94)。对16S rRNA基因的V4区域进行测序,产生了620万个扩增子序列变体。使用多变量分析来分析微生物群落结构,并使用机器学习(随机森林)通过R统计编程对随时间变化的微生物动态进行建模。我们的研究结果显示,体脂百分比显著降低(Pearson检验;< 0.01,R = -0.89),每日游泳距离也显著降低(Spearman检验;< 0.01,R = -0.30)。此外,随着时间的推移,微生物群落结构变得越来越相似(PERMANOVA检验;< 0.01,R = -0.27)。基于决策的建模(随机森林)揭示了 、 、 、 、 、 和 属是过度运动的重要微生物生物标志物,用于解释整个游泳过程中观察到的变化(袋外估计;R = 0.893)。我们表明,微生物群落结构和组成能够准确地根据身体成分、血压和每日游泳距离对过度运动的结果进行分类。更重要的是,微生物动态揭示了与运动量增加显著相关的微生物分类群,突出了对过度游泳有反应的特定微生物。