财产(哲学)
化学
生成语法
任务(项目管理)
机器学习
产量(工程)
生化工程
对比度(视觉)
人工智能
计算机科学
虚拟筛选
药物发现
认识论
工程类
哲学
冶金
材料科学
系统工程
生物化学
作者
Raquel Rodríguez-Pérez,Jürgen Bajorath
标识
DOI:10.1021/acs.jmedchem.1c01789
摘要
The prediction of compound properties from chemical structure is a main task for machine learning (ML) in medicinal chemistry. ML is often applied to large data sets in applications such as compound screening, virtual library enumeration, or generative chemistry. Albeit desirable, a detailed understanding of ML model decisions is typically not required in these cases. By contrast, compound optimization efforts rely on small data sets to identify structural modifications leading to desired property profiles. In this situation, if ML is applied, one usually is reluctant to make decisions based on predictions that cannot be rationalized. Only few ML methods are interpretable. However, to yield insights into complex ML model decisions, explanatory approaches can be applied. Herein, methodologies for better understanding of ML models or explaining individual predictions are reviewed and current challenges in integrating ML into medicinal chemistry programs as well as future opportunities are discussed.
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