TY - JOUR
T1 - High-Precision Atomic Charge Prediction for Protein Systems Using Fragment Molecular Orbital Calculation and Machine Learning
AU - Kato, Koichiro
AU - Masuda, Tomohide
AU - Watanabe, Chiduru
AU - Miyagawa, Naoki
AU - Mizouchi, Hideo
AU - Nagase, Shumpei
AU - Kamisaka, Kikuko
AU - Oshima, Kanji
AU - Ono, Satoshi
AU - Ueda, Hiroshi
AU - Tokuhisa, Atsushi
AU - Kanada, Ryo
AU - Ohta, Masateru
AU - Ikeguchi, Mitsunori
AU - Okuno, Yasushi
AU - Fukuzawa, Kaori
AU - Honma, Teruki
N1 - Funding Information:
The authors gratefully acknowledge Dr. Shuntaro Chiba for his fruitful discussion, Dr. Yoshio Okiyama for useful comments of quantum atomic charge, Dr. Tomohiro Sato for an essential suggestion of machine learning dataset, and Prof. Yuji Mochizuki and Dr. Hiromasa Watanabe for their technical support of ABINIT-MP program. This research was conducted as part of the activities of the Life Intelligence Consortium (LINC, https://linc-ai.jp/ ), the FMO Drug Design Consortium (FMODD, https://fmodd.jp/ ), the Research Complex Promotion Program from the Japan Science and Technology Agency (RCH, https://rc.rien.jp ), and the FOCUS Establishing Supercomputing Center of Excellence. The FMO calculations were performed on the K computer (project IDs: hp150160, hp160103, hp170183, and hp180147; Riken Advanced Institute for Computational Science, Hyogo, Japan), the HOKUSAI supercomputer (RIKEN Advanced Center for Computing and Communications, Yokohama, Japan), and the TSUBAME3.0 supercomputer (Tokyo Institute of Technology, Tokyo, Japan).
Funding Information:
This research was partially supported by the Platform Project for Supporting Drug Discovery and Life Science Research (Basis for Supporting Innovative Drug Discovery and Life Science Research (BINDS)) of the Japan Agency for Medical Research and Development (AMED) under grant number JP19am0101113.
Publisher Copyright:
Copyright © 2020 American Chemical Society.
PY - 2020/7/27
Y1 - 2020/7/27
N2 - Here, we have constructed neural network-based models that predict atomic partial charges with high accuracy at low computational cost. The models were trained using high-quality data acquired from quantum mechanics calculations using the fragment molecular orbital method. We have succeeded in obtaining highly accurate atomic partial charges for three representative molecular systems of proteins, including one large biomolecule (approx. 2000 atoms). The novelty of our approach is the ability to take into account the electronic polarization in the system, which is a system-dependent phenomenon, being important in the field of drug design. Our high-precision models are useful for the prediction of atomic partial charges and expected to be widely applicable in structure-based drug designs such as structural optimization, high-speed and high-precision docking, and molecular dynamics calculations.
AB - Here, we have constructed neural network-based models that predict atomic partial charges with high accuracy at low computational cost. The models were trained using high-quality data acquired from quantum mechanics calculations using the fragment molecular orbital method. We have succeeded in obtaining highly accurate atomic partial charges for three representative molecular systems of proteins, including one large biomolecule (approx. 2000 atoms). The novelty of our approach is the ability to take into account the electronic polarization in the system, which is a system-dependent phenomenon, being important in the field of drug design. Our high-precision models are useful for the prediction of atomic partial charges and expected to be widely applicable in structure-based drug designs such as structural optimization, high-speed and high-precision docking, and molecular dynamics calculations.
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U2 - 10.1021/acs.jcim.0c00273
DO - 10.1021/acs.jcim.0c00273
M3 - Article
C2 - 32496771
AN - SCOPUS:85089612042
SN - 1549-9596
VL - 60
SP - 3361
EP - 3368
JO - Journal of Chemical Information and Modeling
JF - Journal of Chemical Information and Modeling
IS - 7
ER -