Biomedicines (Oct 2024)

Machine Learning Reveals Microbial Taxa Associated with a Swim across the Pacific Ocean

  • Garry Lewis,
  • Sebastian Reczek,
  • Osayenmwen Omozusi,
  • Taylor Hogue,
  • Marc D. Cook,
  • Jarrad Hampton-Marcell

DOI
https://doi.org/10.3390/biomedicines12102309
Journal volume & issue
Vol. 12, no. 10
p. 2309

Abstract

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Purpose: This study aimed to characterize the association between microbial dynamics and excessive exercise. Methods: 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. Results: Our findings show a significant reduction in percent fat mass (Pearson; p p p Alistipes, Anaerostipes, Bifidobacterium, Butyricimonas, Lachnospira, Lachnobacterium, and Ruminococcus as important microbial biomarkers of excessive exercise for explaining variations observed throughout the swim (OOB; R = 0.893). Conclusions: 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.

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