生物信息学
机器学习
计算机科学
适用范围
人工智能
训练集
选型
支持向量机
预测能力
预测建模
化学毒性
数量结构-活动关系
毒性
生物
化学
生物化学
哲学
认识论
基因
有机化学
作者
Gabriel Idakwo,Joseph Luttrell,Minjun Chen,Huixiao Hong,Zhaoxian Zhou,Ping Gong,Chaoyang Zhang
标识
DOI:10.1080/10590501.2018.1537118
摘要
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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