Machine Learning Reveals Signatures of Promiscuous Microbial Amidases for Micropollutant Biotransformations.

IF 6.7 Q1 ENGINEERING, ENVIRONMENTAL
ACS Environmental Au Pub Date : 2024-12-04 eCollection Date: 2025-01-15 DOI:10.1021/acsenvironau.4c00066
Thierry D Marti, Diana Schweizer, Yaochun Yu, Milo R Schärer, Silke I Probst, Serina L Robinson
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引用次数: 0

Abstract

Organic micropollutants, including pharmaceuticals, personal care products, pesticides, and food additives, are widespread in the environment, causing potentially toxic effects. Human waste is a direct source of micropollutants, with the majority of pharmaceuticals being 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, the characterization of AS enzymes to identify key chemical and enzymatic features associated with biotransformation profiles is critical for developing benign-by-design chemicals and micropollutant removal strategies. Here, to uncover the signatures of AS enzyme-substrate specificity, we tested 17 structurally diverse compounds against a targeted enzyme library consisting of 40 AS enzyme homologues from diverse urine microbial isolates. The most promiscuous enzymes were active on nine different substrates, while 16 enzymes had activity on at least one substrate and exhibited diverse substrate specificities. Using an interpretable gradient boosting machine learning model, we identified chemical and amino acid features associated with AS enzyme biotransformations. Key chemical features from our substrates included the molecular weight of the amide carbonyl substituent and the number of formal charges in the molecule. Four of the identified amino acid features were located in close proximity to the substrate tunnel entrance. Overall, this work highlights the understudied potential of urine-derived microbial AS enzymes for micropollutant biotransformation and offers insights into substrate and protein features associated with micropollutant biotransformations for future environmental applications.

机器学习揭示了微污染物生物转化中混杂微生物酰胺酶的特征。
有机微污染物,包括药品、个人护理产品、农药和食品添加剂,在环境中广泛存在,造成潜在的毒性作用。人体排泄物是微污染物的直接来源,大多数药物是通过尿液排出的。尿液含有自身的微生物群,具有催化微污染物生物转化的潜力。酰胺酶特征(AS)酶在微污染物的生物转化中具有混杂活性,但来自尿液微生物群的AS酶转化微污染物的潜力尚不清楚。此外,表征AS酶以确定与生物转化相关的关键化学和酶特征对于开发良性设计的化学品和微污染物去除策略至关重要。在这里,为了揭示AS酶-底物特异性的特征,我们测试了17种结构不同的化合物与来自不同尿液微生物分离物的40种AS酶同源物组成的目标酶库。最混杂的酶在9种不同的底物上有活性,而16种酶在至少一种底物上有活性,并表现出不同的底物特异性。使用可解释的梯度增强机器学习模型,我们确定了与AS酶生物转化相关的化学和氨基酸特征。我们底物的主要化学特征包括酰胺羰基取代基的分子量和分子中形式电荷的数量。鉴定出的四个氨基酸特征位于底物隧道入口附近。总的来说,这项工作强调了尿液来源的微生物AS酶在微污染物生物转化方面的潜力,并为未来环境应用中与微污染物生物转化相关的底物和蛋白质特征提供了见解。
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来源期刊
ACS Environmental Au
ACS Environmental Au 环境科学-
CiteScore
7.10
自引率
0.00%
发文量
0
期刊介绍: ACS Environmental Au is an open access journal which publishes experimental research and theoretical results in all aspects of environmental science and technology both pure and applied. Short letters comprehensive articles reviews and perspectives are welcome in the following areas:Alternative EnergyAnthropogenic Impacts on Atmosphere Soil or WaterBiogeochemical CyclingBiomass or Wastes as ResourcesContaminants in Aquatic and Terrestrial EnvironmentsEnvironmental Data ScienceEcotoxicology and Public HealthEnergy and ClimateEnvironmental Modeling Processes and Measurement Methods and TechnologiesEnvironmental Nanotechnology and BiotechnologyGreen ChemistryGreen Manufacturing and EngineeringRisk assessment Regulatory Frameworks and Life-Cycle AssessmentsTreatment and Resource Recovery and Waste Management
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