Machine learning reveals signatures of promiscuous microbial amidases for micropollutant biotransformations

Thierry D. Marti, Diana Schweizer, Yaochun Yu, Milo R. Schaerer, Silke I. Probst, Serina L Robinson
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Abstract

Organic micropollutants - including pharmaceuticals, personal care products, pesticides and food additives - are prevalent in the environment and have unknown and potentially toxic effects. Humans are a direct source of micropollutants as the majority of pharmaceuticals are primarily excreted through urine. Urine contains its own microbiota with the potential to catalyze micropollutant biotransformations. Amidase signature (AS) enzymes are known for their promiscuous activity in micropollutant biotransformations, but the potential for AS enzymes from the urinary microbiota to transform micropollutants is not known. Moreover, characterization of AS enzymes to identify key chemical and enzymatic features predictive of biotransformation profiles is critical for developing benign-by-design chemicals and micropollutant removal strategies. In this study, we biochemically characterized a new AS enzyme with arylamidase activity from a urine isolate, Lacticaseibacillus rhamnosus< and demonstrated its capability to hydrolyze pharmaceuticals and other micropollutants. To uncover the signatures of AS enzyme-substrate specificity, we then designed a targeted enzyme library consisting of 40 arylamidase homologs from diverse urine isolates and tested it against 17 structurally diverse compounds. We found that 16 out of the 40 enzymes showed activity on at least one substrate and exhibited diverse substrate specificities, with the most promiscuous enzymes active on nine different substrates. Using an interpretable gradient boosting machine learning model, we identified chemical and amino acid features predictive of arylamidase biotransformations. Key chemical features from our substrates included the molecular weight of the amide carbonyl substituent and the number of charges in the molecule. Important amino acid features were found to be located on the protein surface and four predictive residues were located in close proximity of the substrate tunnel entrance. Overall, this work highlights the understudied role of urine-derived microbial arylamidases and contributes to enzyme sequence-structure-substrate-based predictions of micropollutant biotransformations.
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机器学习揭示杂交微生物酰胺酶的微污染物生物转化特征
有机微污染物--包括药品、个人护理产品、杀虫剂和食品添加剂--在环境中普遍存在,具有未知的潜在毒性影响。人类是微污染物的直接来源,因为大多数药物主要通过尿液排出体外。尿液中含有自身的微生物群,有可能催化微污染物的生物转化。众所周知,氨酶特征(AS)酶在微污染物生物转化中具有杂乱无章的活性,但尿液微生物群中的AS酶转化微污染物的潜力尚不清楚。此外,鉴定AS酶的特征以确定可预测生物转化特征的关键化学和酶学特征,对于开发良性设计化学品和微污染物去除策略至关重要。在这项研究中,我们对从尿液分离物鼠李糖乳杆菌(Lacticaseibacillus rhamnosus<)中提取的一种具有芳基酰胺酶活性的新型AS酶进行了生物化学鉴定,并证明了其水解药物和其他微污染物的能力。为了揭示AS酶-底物特异性的特征,我们设计了一个由来自不同尿液分离物的40个芳基酰胺酶同源物组成的靶向酶库,并针对17种结构不同的化合物进行了测试。我们发现,40 种酶中有 16 种至少对一种底物具有活性,并表现出多种底物特异性,其中最杂的酶对 9 种不同的底物具有活性。利用可解释的梯度提升机器学习模型,我们确定了可预测芳基酰胺酶生物转化的化学和氨基酸特征。底物的关键化学特征包括酰胺羰基取代基的分子量和分子中的电荷数。重要的氨基酸特征被发现位于蛋白质表面,四个预测性残基位于底物隧道入口附近。总之,这项工作突出了尿源微生物芳基酰胺酶未被充分研究的作用,有助于基于酶序列-结构-底物预测微污染物的生物转化。
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