Gaussian Process Regression Models for the Prediction of Hydrogen Bond Acceptor Strengths

被引:9
|
作者
Bauer, Christoph A. [1 ]
Schneider, Gisbert [1 ]
Goeller, Andreas H. [2 ]
机构
[1] Swiss Fed Inst Technol, Dept Chem & Appl Biosci, CH-8093 Zurich, Switzerland
[2] Bayer AG, Pharmaceut R&D, D-42096 Wuppertal, Germany
关键词
hydrogen bonds; structure-property relation; machine learning; computational chemistry; density functional theory; QUANTUM-CHEMICAL TOPOLOGY; DENSITY-FUNCTIONAL THEORY; THEORETICAL PREDICTION; COMPUTATIONAL CHEMISTRY; MOLECULAR RECOGNITION; INTERACTION ENERGIES; BASICITY; DATABASE; ACCURATE; DESIGN;
D O I
10.1002/minf.201800115
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
We present two approaches for the computation of hydrogen bond acceptor strengths, one by machine-learning and one by a composite quantum-mechanical protocol, both based on the well-established pK(BHX) scale and dataset. The QM calculations after a necessary linear fit reproduce the complexation free energies in solution with an RMSE of 2.6 kJ mol(-1), not far off the expected error of 2 kJ mol(-1) obtained from the comparison of experimental data from two different sources. The second approach is by Gaussian Process Regression (GPR) machine-learning. We describe the hydrogen bond acceptor atoms by a radial atomic reactivity descriptor that encodes their electronic and steric environment. The performance of the GPR model on an external test set corresponds to 3.3 kJ mol(-1), which is also close to the experimental error. We apply the GPR model built on experimental data to model the hydrogen bond acceptor strengths of a series of hydrogen bond acceptor sites of 10 phosphodiesterase 10 A inhibitors. The predicted values correlate well with the experimentally measured IC50 values.
引用
收藏
页数:11
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