A review on machine learning methods for in silico toxicity prediction.

Q2 Biochemistry, Genetics and Molecular Biology Journal of Environmental Science and Health Part C-Environmental Carcinogenesis & Ecotoxicology Reviews Pub Date : 2018-01-01 Epub Date: 2019-01-10 DOI:10.1080/10590501.2018.1537118
Gabriel Idakwo, Joseph Luttrell, Minjun Chen, Huixiao Hong, Zhaoxian Zhou, Ping Gong, Chaoyang Zhang
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引用次数: 70

Abstract

In silico toxicity prediction plays an important role in the regulatory decision making and selection of leads in drug design as in vitro/vivo methods are often limited by ethics, time, budget, and other resources. Many computational methods have been employed in predicting the toxicity profile of chemicals. This review provides a detailed end-to-end overview of the application of machine learning algorithms to Structure-Activity Relationship (SAR)-based predictive toxicology. From raw data to model validation, the importance of data quality is stressed as it greatly affects the predictive power of derived models. Commonly overlooked challenges such as data imbalance, activity cliff, model evaluation, and definition of applicability domain are highlighted, and plausible solutions for alleviating these challenges are discussed.

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硅毒性预测的机器学习方法综述。
由于体外/体内方法经常受到伦理、时间、预算和其他资源的限制,硅毒性预测在药物设计的监管决策和先导物选择中起着重要作用。许多计算方法被用于预测化学品的毒性分布。本文对机器学习算法在基于结构-活性关系(SAR)的预测毒理学中的应用进行了详细的端到端概述。从原始数据到模型验证,数据质量的重要性被强调,因为它极大地影响了衍生模型的预测能力。强调了通常被忽视的挑战,如数据不平衡、活动悬崖、模型评估和适用性领域的定义,并讨论了减轻这些挑战的可行解决方案。
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来源期刊
CiteScore
6.20
自引率
0.00%
发文量
0
审稿时长
>24 weeks
期刊介绍: Journal of Environmental Science and Health, Part C: Environmental Carcinogenesis and Ecotoxicology Reviews aims at rapid publication of reviews on important subjects in various areas of environmental toxicology, health and carcinogenesis. Among the subjects covered are risk assessments of chemicals including nanomaterials and physical agents of environmental significance, harmful organisms found in the environment and toxic agents they produce, and food and drugs as environmental factors. It includes basic research, methodology, host susceptibility, mechanistic studies, theoretical modeling, environmental and geotechnical engineering, and environmental protection. Submission to this journal is primarily on an invitational basis. All submissions should be made through the Editorial Manager site, and are subject to peer review by independent, anonymous expert referees. Please review the instructions for authors for manuscript submission guidance.
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