分子
势能
计算机科学
人工神经网络
离子
扭转(腹足类)
有机分子
离子键合
工作(物理)
化学
化学物理
生物系统
物理
人工智能
原子物理学
量子力学
医学
外科
生物
作者
Leif D. Jacobson,James Stevenson,Farhad Ramezanghorbani,Delaram Ghoreishi,Karl Leswing,Edward Harder,Robert Abel
标识
DOI:10.1021/acs.jctc.1c00821
摘要
Transferable high dimensional neural network potentials (HDNNPs) have shown great promise as an avenue to increase the accuracy and domain of applicability of existing atomistic force fields for organic systems relevant to life science. We have previously reported such a potential (Schrödinger-ANI) that has broad coverage of druglike molecules. We extend that work here to cover ionic and zwitterionic druglike molecules expected to be relevant to drug discovery research activities. We report a novel HDNNP architecture, which we call QRNN, that predicts atomic charges and uses these charges as descriptors in an energy model that delivers conformational energies within chemical accuracy when measured against the reference theory it is trained to. Further, we find that delta learning based on a semiempirical level of theory approximately halves the errors. We test the models on torsion energy profiles, relative conformational energies, geometric parameters, and relative tautomer errors.
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