Prediction of Protein pKa with Representation Learning

10 January 2022, Version 2
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

The behavior of proteins is closely related to the protonation states of the residues. Therefore, prediction and measurement of pKa are essential to understand the basic functions of proteins. In this work, we develop a new empirical scheme for protein pKa prediction that is based on deep representation learning. It combines machine learning with atomic environment vector (AEV) and learned quantum mechanical representation from ANI-2x neural network potential (J. Chem. Theory Comput. 2020, 16, 4192). The scheme requires only the coordinate information of a protein as the input and separately estimates the pKa for all five titratable amino acid types. The accuracy of the approach was analyzed with both cross-validation and an external test set of proteins. Obtained results were compared with the widely used empirical approach PROPKA. The new empirical model provides accuracy with MAEs below 0.5 for all amino acid types. It surpasses the accuracy of PROPKA and performs significantly better than the null model. Our model is also sensitive to the local conformational changes and molecular interactions.

Keywords

pKa
protonation state
representation learning
machine learning

Supplementary materials

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Title
Supporting Information for Prediction of Protein pKa with Representation Learning.
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SI has detailed statistical analysis of ML models, data distribution and additional plots
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