Active Learning on Synthons for Molecular Design
Active Learning on Synthons for Molecular Design
Exhaustive virtual screening is highly informative but often intractable against the expensive objective functions involved in modern drug discovery. This problem is exacerbated in combinatorial contexts such as multi-vector expansion, where molecular spaces can quickly become ultra-large. Here, we introduce Scalable Active Learning via Synthon Acquisition (SALSA): a simple algorithm applicable to multi-vector expansion which extends pool-based active learning to non-enumerable spaces by factoring modeling and acquisition over synthon or fragment choices. Through experiments on ligand- and structure-based objectives, we highlight SALSA's sample efficiency, and its ability to scale to spaces of trillions of compounds. Further, we demonstrate application toward multi-parameter objective design tasks on three protein targets - finding SALSA-generated molecules have comparable chemical property profiles to known bioactives, and exhibit greater diversity and higher scores over an industry-leading generative approach.
Tom George Grigg、Mason Burlage、Oliver Brook Scott、Adam Taouil、Dominique Sydow、Liam Wilbraham
医药卫生理论医学研究方法生物科学研究方法、生物科学研究技术
Tom George Grigg,Mason Burlage,Oliver Brook Scott,Adam Taouil,Dominique Sydow,Liam Wilbraham.Active Learning on Synthons for Molecular Design[EB/OL].(2025-05-19)[2025-06-18].https://arxiv.org/abs/2505.12913.点此复制
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