G蛋白偶联受体
领域(数学分析)
计算生物学
生化工程
计算机科学
人类健康
结合亲和力
集合(抽象数据类型)
表征(材料科学)
机器学习
人工智能
可靠性(半导体)
事件(粒子物理)
受体
化学
药物发现
生物系统
人血浆
结合位点
分子识别
分子描述符
数据集
试验装置
训练集
数据挖掘
分子模型
作者
Wenjia Liu,Haobo Wang,Zhiqiang Fu,Yun-Han Cui,Jingwen Chen,Wenjia Liu,Haobo Wang,Zhiqiang Fu,Yun-Han Cui,Jingwen Chen
标识
DOI:10.1021/acs.est.5c02770
摘要
A variety of chemicals in plastics may pose risks to human health, while only a limited number have been extensively studied for their toxicity. Binding to G protein-coupled receptors (GPCRs) serves as a crucial molecular initiating event in identifying chemicals that induce toxic effects in humans. Given the diversity of GPCRs and chemicals, the binding affinity remains largely elusive, necessitating high-throughput models with the functionality of integrating chemical and receptor features to enable predictions across multiple receptors. Herein, a human GPCR affinity data set was constructed, containing 96,776 records between 59,599 compounds and 109 GPCRs. A multimodal learning model, McGPCR, was built to predict the GPCR binding affinity of chemicals by integrating multimodal features of molecular graphs and receptor binding sites. The McGPCR outperformed models with chemical structures as the only predictor variables. Applicability domain (AD) characterization based on feature-activity landscape analysis was proposed, which ensures the reliability of predictions. The McGPCR, along with the AD, was employed to predict affinities of over 9000 plastic chemicals. By integration of the affinity, persistence, bioaccumulation, and production volume, 30 plastic chemicals with potentially high environmental risks were identified. The McGPCR with AD characterization can serve as a powerful tool for identifying toxic chemicals harmful to human health.
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