Transfer learning empowers accurate pharmacokinetics prediction of small samples

Drug Discovery Today(2024)

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摘要
Accurate assessment of pharmacokinetic (PK) properties is crucial for selecting optimal candidates and avoiding downstream failures. Transfer learning is an innovative machine learning approach enabling high-throughput prediction with limited data. Recently, transfer learning methods showed promise in predicting ADME/PK parameters. Given the prolific growth of research on transfer learning for PK prediction, a comprehensive review of its advantages and challenges is imperative. This study explores the fundamentals, classifications, toolkits and applications of various transfer learning techniques for PK prediction, demonstrating their utility through three practical case studies. This work will serve as a reference for drug design researchers.Teaser: Explore how transfer learning revolutionizes pharmacokinetic prediction, overcoming data scarcity with innovative machine learning techniques. Discover its classifications, applications and practical case studies in drug design.
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关键词
Cheminformatics,machine learning,transfer learning,pharmacokinetics prediction,multitask learning,multimodal learning
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