Deep Batch Active Learning for Drug Discovery

Michael Bailey, Saeed Moayedpour, Ruijiang Li, Alejandro Corrochano-Navarro, Alexander Kötter, Lorenzo Kogler-Anele,Saleh Riahi,Christoph Grebner,Gerhard Heßler,Hans Matter,Marc Bianciotto, Pablo Mas,Ziv Bar‐Joseph,Sven Jäger

bioRxiv (Cold Spring Harbor Laboratory)(2023)

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摘要
Abstract A key challenge in drug discovery is to optimize, in silico, various absorption and affinity properties of small molecules. One strategy that was proposed for such optimization process is active learning. In active learning molecules are selected for testing based on their likelihood of improving model performance. To enable the use of active learning with advanced neural network models we developed two novel active learning batch selection methods. These methods were tested on several public datasets for different optimization goals and with different sizes. We have also curated new affinity datasets that provide chronological information on state-of-the-art experimental strategy. As we show, for all datasets the new active learning methods greatly improved on existing and current batch selection methods leading to significant potential saving in the number of experiments needed to reach the same model performance. Our methods are general and can be used with any package including the popular DeepChem library.
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关键词
deep batch active learning,drug discovery
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