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A novel approach for the prediction of species-specific biotransformation of xenobiotic/drug molecules by the human gut microbiota

机译:一种通过人类肠道微生物群预测异种生物/药物分子物种特异性生物转化的新方法

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摘要

The human gut microbiota is constituted of a diverse group of microbial species harbouring an enormous metabolic potential, which can alter the metabolism of orally administered drugs leading to individual/population-specific differences in drug responses. Considering the large heterogeneous pool of human gut bacteria and their metabolic enzymes, investigation of species-specific contribution to xenobiotic/drug metabolism by experimental studies is a challenging task. Therefore, we have developed a novel computational approach to predict the metabolic enzymes and gut bacterial species, which can potentially carry out the biotransformation of a xenobiotic/drug molecule. A substrate database was constructed for metabolic enzymes from 491 available human gut bacteria. The structural properties (fingerprints) from these substrates were extracted and used for the development of random forest models, which displayed average accuracies of up to 98.61% and 93.25% on cross-validation and blind set, respectively. After the prediction of EC subclass, the specific metabolic enzyme (EC) is identified using a molecular similarity search. The performance was further evaluated on an independent set of FDA-approved drugs and other clinically important molecules. To our knowledge, this is the only available approach implemented as ‘DrugBug’ tool for the prediction of xenobiotic/drug metabolism by metabolic enzymes of human gut microbiota.
机译:人肠道微生物群由具有巨大代谢潜力的各种微生物组成,这些微生物可以改变口服药物的代谢,从而导致药物反应的个体/人群特异性差异。考虑到人类肠道细菌及其代谢酶的异质性庞大,通过实验研究调查物种对异种生物/药物代谢的特定贡献是一项艰巨的任务。因此,我们已经开发出一种新颖的计算方法来预测代谢酶和肠道细菌种类,从而可以潜在地进行异种生物/药物分子的生物转化。构建底物数据库以获取来自491种可用的人类肠道细菌的代谢酶。从这些基质中提取结构特征(指纹),并将其用于随机森林模型的开发,该模型在交叉验证和盲法设置下的平均准确率分别高达98.61%和93.25%。预测EC子类后,使用分子相似性搜索识别特定的代谢酶(EC)。在一组独立的FDA批准的药物和其他临床上重要的分子上进一步评估了该性能。据我们所知,这是唯一可作为“ DrugBug”工具实施的方法,用于通过人类肠道菌群的代谢酶预测异种/药物代谢。

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