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SkinBug: an artificial intelligence approach to predict human skin microbiome-mediated metabolism of biotics and xenobiotics

机译:皮肤:一种预测人体皮肤微生物微生物介导的生物学和异种学的人工智能方法

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摘要

In addition to being pivotal for the host health, the skin microbiome possesses a large reservoir of metabolic enzymes, which can metabolize molecules (cosmetics, medicines, pollutants, etc.) that form a major part of the skin exposome. Therefore, to predict the complete metabolism of any molecule by skin microbiome, a curated database of metabolic enzymes (1,094,153), reactions, and substrates from ∼900 bacterial species from 19 different skin sites were used to develop “SkinBug.” It integrates machine learning, neural networks, and chemoinformatics methods, and displays a multiclass multilabel accuracy of up to 82.4% and binary accuracy of up to 90.0%. SkinBug predicts all possible metabolic reactions and associated enzymes, reaction centers, skin microbiome species harboring the enzyme, and the respective skin sites. Thus, SkinBug will be an indispensable tool to predict xenobiotic/biotic metabolism by skin microbiome and will find applications in exposome and microbiome studies, dermatology, and skin cancer research.
机译:除了宿主健康的关键外,皮肤微生物组还具有大型代谢酶的储层,可以代谢分子(化妆品,药​​物,污染物等),形成皮肤病的主要部分。因此,为了预测皮肤微生物组的任何分子的完全代谢,来自1900种不同皮肤部位的约900种细菌物种的代谢酶(1,094,153),反应和底物的愈合数据库用于开发“皮肤”。它集成了机器学习,神经网络和化疗方法,并显示多牌多标签精度,高达82.4%,二进制精度高达90.0%。皮肤预测所有可能的代谢反应和相关的酶,反应中心,患酶的皮肤微生物组种,以及各个皮肤部位。因此,皮肤是一种不可或缺的工具,可以通过皮肤微生物组预测异卵/生物代谢,并在曝光和微生物组研究,皮肤病学和皮肤癌研究中找到应用。

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