DataSheet1_Improving Small Molecule pKa Prediction Using Transfer Learning With Graph Neural Networks.pdf
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https://figshare.com/articles/dataset/DataSheet1_Improving_Small_Molecule_pKa_Prediction_Using_Transfer_Learning_With_Graph_Neural_Networks_pdf/19977665
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资源简介:
Enumerating protonation states and calculating microstate pKa values of small molecules is an important yet challenging task for lead optimization and molecular modeling. Commercial and non-commercial solutions have notable limitations such as restrictive and expensive licenses, high CPU/GPU hour requirements, or the need for expert knowledge to set up and use. We present a graph neural network model that is trained on 714,906 calculated microstate pKa predictions from molecules obtained from the ChEMBL database. The model is fine-tuned on a set of 5,994 experimental pKa values significantly improving its performance on two challenging test sets. Combining the graph neural network model with Dimorphite-DL, an open-source program for enumerating ionization states, we have developed the open-source Python package pkasolver, which is able to generate and enumerate protonation states and calculate pKa values with high accuracy.
创建时间:
2022-06-03



