质子化
化学空间
计算机科学
分子
卷积神经网络
人工智能
化学
计算化学
药物发现
离子
生物化学
有机化学
作者
Ryne C. Johnston,Kun Yao,Zachary Kaplan,Monica Chelliah,Karl Leswing,Sean Seekins,Shawn Watts,David Calkins,Jackson Chief Elk,Steven V. Jerome,Matthew P. Repasky,John C. Shelley
标识
DOI:10.26434/chemrxiv-2023-c6z8t
摘要
Epik version 7 is a software program that uses machine learning for predicting the pKa values and protonation state distribution of complex, drug-like molecules. Using an ensemble of atomic graph convolutional neural networks (GCNNs) trained on over 42,000 pKa values across broad chemical space from both experimental and computed origins, the model predicts pKa values with 0.42 and 0.72 log unit median absolute and RMS errors, respectively, across seven test sets. Epik version 7 also generates protonation states and recovers 95% of the most populated protonation states compared to previous versions. Requiring on average only 47 ms per ligand, Epik version 7 is rapid and accurate enough to evaluate protonation states for crucial molecules and prepare ultra-large libraries of compounds to explore vast regions of chemical space. The simplicity of and time required for the training allows for the generation of highly accurate models customized to a program’s specific chemistry.
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