Unraveling Microplastic Effects on Gut Microbiota across Various Animals Using Machine Learning

微塑料 肠道菌群 生物 拟杆菌 厚壁菌 乳酸菌 基因组 微生物学 动物 细菌 生态学 免疫学 16S核糖体RNA 生物化学 遗传学 基因
作者
Lingzi Yin,Minghao Yang,A. Teng,Can Ni,Pandeng Wang,Shaojun Tang
出处
期刊:ACS Nano [American Chemical Society]
卷期号:19 (1): 369-380 被引量:13
标识
DOI:10.1021/acsnano.4c07885
摘要

Microplastics, rapidly expanding and durable pollutant, have been shown to significantly impact gut microbiota across a spectrum of animal species. However, comprehensive analyses comparing microplastic effects on gut microbiota among these species are still limited, and the critical factors driving these effects remain to be clarified. To address these issues, we compiled 1352 gut microbiota samples from six animal categories, employing machine learning to conduct an in-depth meta-analysis. Our study revealed that mice, compared with other animals, not only exhibit a heightened susceptibility to the toxic effects of microplastics─evidenced by decreased gut microbiota diversity, increased Firmicutes/Bacteroidetes ratios, destabilized microbial networks, and disruption in the equilibrium of beneficial and harmful bacteria─but also possess limited potential to degrade microplastics, unlike earthworms and insects. Furthermore, machine learning models confirmed that exposure duration is the key factor driving changes induced by microplastics in gut microbiota. We also identified Lactobacillus, Helicobacter, and Pseudomonas as potential biomarkers for detecting microplastic toxicity in the animal gut. Overall, these findings provide valuable insights into the health risks and driving factors associated with microplastic exposure across multiple animal species.
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