可解释性
计算机科学
概括性
药物发现
定制
生成语法
人工智能
数据科学
突出
直觉
机器学习
认知科学
生物信息学
心理学
政治学
法学
心理治疗师
生物
作者
Miles McGibbon,Steven Shave,Jie Dong,Yumiao Gao,Douglas R. Houston,Jiancong Xie,Yuedong Yang,Philippe Schwaller,Vincent Blay
摘要
Abstract Within drug discovery, the goal of AI scientists and cheminformaticians is to help identify molecular starting points that will develop into safe and efficacious drugs while reducing costs, time and failure rates. To achieve this goal, it is crucial to represent molecules in a digital format that makes them machine-readable and facilitates the accurate prediction of properties that drive decision-making. Over the years, molecular representations have evolved from intuitive and human-readable formats to bespoke numerical descriptors and fingerprints, and now to learned representations that capture patterns and salient features across vast chemical spaces. Among these, sequence-based and graph-based representations of small molecules have become highly popular. However, each approach has strengths and weaknesses across dimensions such as generality, computational cost, inversibility for generative applications and interpretability, which can be critical in informing practitioners’ decisions. As the drug discovery landscape evolves, opportunities for innovation continue to emerge. These include the creation of molecular representations for high-value, low-data regimes, the distillation of broader biological and chemical knowledge into novel learned representations and the modeling of up-and-coming therapeutic modalities.
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