Predicting scalar coupling constants by graph angle-attention neural network

Abstract Scalar coupling constant (SCC), directly measured by nuclear magnetic resonance (NMR) spectroscopy, is a key parameter for molecular structure analysis, and widely used to predict unknown molecular structure. Restricted by the high cost of NMR experiments, it is impossible to measure the SC...

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Main Authors: Jia Fang, Linyuan Hu, Jianfeng Dong, Haowei Li, Hui Wang, Huafen Zhao, Yao Zhang, Min Liu
Format: Article
Language:English
Published: Nature Publishing Group 2021-09-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-97146-1
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spelling doaj-26938c079f914428b59f6a95757082b42021-09-26T11:26:15ZengNature Publishing GroupScientific Reports2045-23222021-09-0111111110.1038/s41598-021-97146-1Predicting scalar coupling constants by graph angle-attention neural networkJia Fang0Linyuan Hu1Jianfeng Dong2Haowei Li3Hui Wang4Huafen Zhao5Yao Zhang6Min Liu7School of Physics and Electronics, Central South UniversitySchool of Economics and Management, Beijing Jiaotong UniversityCollege of Computer and Information Engineering, Zhejiang Gongshang UniversitySchool of Physics and Electronics, Central South UniversitySchool of Physics and Electronics, Central South UniversitySchool of Physics and Electronics, Central South UniversityCollege of Computer Science and Technology, Zhejiang UniversitySchool of Physics and Electronics, Central South UniversityAbstract Scalar coupling constant (SCC), directly measured by nuclear magnetic resonance (NMR) spectroscopy, is a key parameter for molecular structure analysis, and widely used to predict unknown molecular structure. Restricted by the high cost of NMR experiments, it is impossible to measure the SCC of unknown molecules on a large scale. Using density functional theory (DFT) to theoretically calculate the SCC of molecules is incredibly challenging, due to the cost of substantial computational time and space. Graph neural networks (GNN) of artificial intelligence (AI) have great potential in constructing molecul ar-like topology models, which endows them the ability to rapidly predict SCC through data-driven machine learning methods, and avoiding time-consuming quantum chemical calculations. With a priori knowledge of angles, we propose a graph angle-attention neural network (GAANN) model to predict SCC by means of some easily accessible related information. GAANN, with a multilayer message-passing network and a self-attention mechanism, can accurately simulate the molecular-like topological structure and predict molecular properties. Our simulations show that the prediction accuracy by GAANN, with the log(MAE) = −2.52, is close to that by DFT calculations. Different from conventional AI methods, GAANN combining the AI method with quantum chemistry theory (Karplus equation) has a strong physicochemical interpretability about angles. From an AI perspective, we find that bond angle has the highest correlation with the SCC among all angle features (dihedral angle, bond angle, geometric angles) about multiple coupling types in the small molecule datasets.https://doi.org/10.1038/s41598-021-97146-1
collection DOAJ
language English
format Article
sources DOAJ
author Jia Fang
Linyuan Hu
Jianfeng Dong
Haowei Li
Hui Wang
Huafen Zhao
Yao Zhang
Min Liu
spellingShingle Jia Fang
Linyuan Hu
Jianfeng Dong
Haowei Li
Hui Wang
Huafen Zhao
Yao Zhang
Min Liu
Predicting scalar coupling constants by graph angle-attention neural network
Scientific Reports
author_facet Jia Fang
Linyuan Hu
Jianfeng Dong
Haowei Li
Hui Wang
Huafen Zhao
Yao Zhang
Min Liu
author_sort Jia Fang
title Predicting scalar coupling constants by graph angle-attention neural network
title_short Predicting scalar coupling constants by graph angle-attention neural network
title_full Predicting scalar coupling constants by graph angle-attention neural network
title_fullStr Predicting scalar coupling constants by graph angle-attention neural network
title_full_unstemmed Predicting scalar coupling constants by graph angle-attention neural network
title_sort predicting scalar coupling constants by graph angle-attention neural network
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-09-01
description Abstract Scalar coupling constant (SCC), directly measured by nuclear magnetic resonance (NMR) spectroscopy, is a key parameter for molecular structure analysis, and widely used to predict unknown molecular structure. Restricted by the high cost of NMR experiments, it is impossible to measure the SCC of unknown molecules on a large scale. Using density functional theory (DFT) to theoretically calculate the SCC of molecules is incredibly challenging, due to the cost of substantial computational time and space. Graph neural networks (GNN) of artificial intelligence (AI) have great potential in constructing molecul ar-like topology models, which endows them the ability to rapidly predict SCC through data-driven machine learning methods, and avoiding time-consuming quantum chemical calculations. With a priori knowledge of angles, we propose a graph angle-attention neural network (GAANN) model to predict SCC by means of some easily accessible related information. GAANN, with a multilayer message-passing network and a self-attention mechanism, can accurately simulate the molecular-like topological structure and predict molecular properties. Our simulations show that the prediction accuracy by GAANN, with the log(MAE) = −2.52, is close to that by DFT calculations. Different from conventional AI methods, GAANN combining the AI method with quantum chemistry theory (Karplus equation) has a strong physicochemical interpretability about angles. From an AI perspective, we find that bond angle has the highest correlation with the SCC among all angle features (dihedral angle, bond angle, geometric angles) about multiple coupling types in the small molecule datasets.
url https://doi.org/10.1038/s41598-021-97146-1
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