16S rRNA gene sequencing and machine learning reveal correlation between drug abuse and human host gut microbiota

IF 3.1 3区 医学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY Addiction Biology Pub Date : 2023-09-13 DOI:10.1111/adb.13311
Yunting Liu, Pei Zhang, Hongmei Sheng, Ding Xu, Daixi Li, Lizhe An
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Abstract

Over the past few years, there has been increasing evidence highlighting the strong connection between gut microbiota and overall well-being of the host. This has led to a renewed emphasis on studying and addressing substance use disorder from the perspective of brain-gut axis. Previous studies have suggested that alcohol, food, and cigarette addictions are strongly linked to gut microbiota and faecal microbiota transplantation or the use of probiotics achieved significant efficacy. Unfortunately, little is known about the relationship between drug abuse and gut microbiota. This paper aims to reveal the potential correlation between gut microbiota and drug abuse and to develop an accurate identification model for drug-related faeces samples by machine learning. Faecal samples were collected from 476 participants from three regions in China (Shanghai, Yunnan, and Shandong). Their gut microbiota information was obtained using 16S rRNA gene sequencing, and a substance use disorder identification model was developed by machine learning. Analysis revealed a lower diversity and a more homogeneous gut microbiota community structure among participants with substance use disorder. Bacteroides, Prevotella_9, Faecalibacterium, and Blautia were identified as important biomarkers associated with substance use disorder. The function prediction analysis revealed that the citrate and reductive citrate cycles were significantly upregulated in the substance use disorder group, while the shikimate pathway was downregulated. In addition, the machine learning model could distinguish faecal samples between substance users and nonsubstance users with an AUC = 0.9, indicating its potential use in predicting and screening individuals with substance use disorder within the community in the future.

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16S rRNA基因测序和机器学习揭示了药物滥用和人类宿主肠道微生物群之间的相关性。
在过去的几年里,越来越多的证据强调了肠道微生物群与宿主整体健康之间的密切联系。这使得人们重新重视从脑肠轴的角度研究和解决物质使用障碍。先前的研究表明,酒精、食物和香烟成瘾与肠道微生物群和粪便微生物群移植密切相关,或使用益生菌取得显著疗效。不幸的是,人们对药物滥用与肠道微生物群之间的关系知之甚少。本文旨在揭示肠道微生物群与药物滥用之间的潜在相关性,并通过机器学习开发与药物相关的粪便样本的准确识别模型。粪便样本采集自中国三个地区(上海、云南和山东)的476名参与者。他们的肠道微生物群信息是通过16S rRNA基因测序获得的,并通过机器学习开发了物质使用障碍识别模型。分析显示,在患有物质使用障碍的参与者中,肠道微生物群的多样性较低,群落结构更为均匀。拟杆菌、普雷沃特拉_9、粪杆菌和Blautia被确定为与物质使用障碍相关的重要生物标志物。功能预测分析显示,物质使用障碍组的柠檬酸盐和还原性柠檬酸盐循环显著上调,而莽草酸途径下调。此外,机器学习模型可以通过AUC区分物质使用者和非物质使用者之间的粪便样本 =0.9,表明其在未来预测和筛查社区内患有物质使用障碍的个体方面的潜在用途。
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来源期刊
Addiction Biology
Addiction Biology 生物-生化与分子生物学
CiteScore
8.10
自引率
2.90%
发文量
118
审稿时长
6-12 weeks
期刊介绍: Addiction Biology is focused on neuroscience contributions and it aims to advance our understanding of the action of drugs of abuse and addictive processes. Papers are accepted in both animal experimentation or clinical research. The content is geared towards behavioral, molecular, genetic, biochemical, neuro-biological and pharmacology aspects of these fields. Addiction Biology includes peer-reviewed original research reports and reviews. Addiction Biology is published on behalf of the Society for the Study of Addiction to Alcohol and other Drugs (SSA). Members of the Society for the Study of Addiction receive the Journal as part of their annual membership subscription.
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