Scalar Coupling Constant Prediction Using Graph Embedding Local Attention Encoder
Scalar coupling constant (SCC) plays a key role in the analysis of three-dimensional structure of organic matter, however, the traditional SCC prediction using quantum mechanical calculations is very time-consuming. To calculate SCC efficiently and accurately, we proposed a graph embedding local sel...
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doaj-19c41c4005d14af39ad1042552392f422021-03-30T03:57:44ZengIEEEIEEE Access2169-35362020-01-01817110017111110.1109/ACCESS.2020.30246639199885Scalar Coupling Constant Prediction Using Graph Embedding Local Attention EncoderCaiqing Jian0https://orcid.org/0000-0003-1610-1538Xinyu Cheng1Jian Zhang2Lihui Wang3https://orcid.org/0000-0002-3558-5112Key Laboratory of Intelligent Medical Image Analysis and Precise Diagnosis of Guizhou Province, College of Computer Science and Technology, Guizhou University, Guiyang, ChinaKey Laboratory of Intelligent Medical Image Analysis and Precise Diagnosis of Guizhou Province, College of Computer Science and Technology, Guizhou University, Guiyang, ChinaKey Laboratory of Intelligent Medical Image Analysis and Precise Diagnosis of Guizhou Province, College of Computer Science and Technology, Guizhou University, Guiyang, ChinaKey Laboratory of Intelligent Medical Image Analysis and Precise Diagnosis of Guizhou Province, College of Computer Science and Technology, Guizhou University, Guiyang, ChinaScalar coupling constant (SCC) plays a key role in the analysis of three-dimensional structure of organic matter, however, the traditional SCC prediction using quantum mechanical calculations is very time-consuming. To calculate SCC efficiently and accurately, we proposed a graph embedding local self-attention encoder (GELAE) model, in which, a novel invariant structure representation of the coupling system in terms of bond length, bond angle and dihedral angle was presented firstly, and then a local self-attention module embedded with the adjacent matrix of a graph was designed to extract effectively the features of coupling systems, finally, with a modified classification loss function, the SCC was predicted. To validate the superiority of the proposed method, we conducted a series of comparison experiments using different structure representations, different attention modules, and different losses. The experimental results demonstrate that, compared to the traditional chemical bond structure representations, the rotation and translation invariant structure representations proposed in this work can improve the SCC prediction accuracy; with the graph embedded local self-attention, the mean absolute error (MAE) of the prediction model in the validation set decreases from 0.1603 Hz to 0.1067 Hz; using the classification based loss function instead of the scaled regression loss, the MAE of the predicted SCC can be decreased to 0.0963 HZ, which is close to the quantum chemistry standard on CHAMPS dataset.https://ieeexplore.ieee.org/document/9199885/Deep learningdrug discoverygraph embeddingscalar coupling constantself-attention mechanism |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Caiqing Jian Xinyu Cheng Jian Zhang Lihui Wang |
spellingShingle |
Caiqing Jian Xinyu Cheng Jian Zhang Lihui Wang Scalar Coupling Constant Prediction Using Graph Embedding Local Attention Encoder IEEE Access Deep learning drug discovery graph embedding scalar coupling constant self-attention mechanism |
author_facet |
Caiqing Jian Xinyu Cheng Jian Zhang Lihui Wang |
author_sort |
Caiqing Jian |
title |
Scalar Coupling Constant Prediction Using Graph Embedding Local Attention Encoder |
title_short |
Scalar Coupling Constant Prediction Using Graph Embedding Local Attention Encoder |
title_full |
Scalar Coupling Constant Prediction Using Graph Embedding Local Attention Encoder |
title_fullStr |
Scalar Coupling Constant Prediction Using Graph Embedding Local Attention Encoder |
title_full_unstemmed |
Scalar Coupling Constant Prediction Using Graph Embedding Local Attention Encoder |
title_sort |
scalar coupling constant prediction using graph embedding local attention encoder |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2020-01-01 |
description |
Scalar coupling constant (SCC) plays a key role in the analysis of three-dimensional structure of organic matter, however, the traditional SCC prediction using quantum mechanical calculations is very time-consuming. To calculate SCC efficiently and accurately, we proposed a graph embedding local self-attention encoder (GELAE) model, in which, a novel invariant structure representation of the coupling system in terms of bond length, bond angle and dihedral angle was presented firstly, and then a local self-attention module embedded with the adjacent matrix of a graph was designed to extract effectively the features of coupling systems, finally, with a modified classification loss function, the SCC was predicted. To validate the superiority of the proposed method, we conducted a series of comparison experiments using different structure representations, different attention modules, and different losses. The experimental results demonstrate that, compared to the traditional chemical bond structure representations, the rotation and translation invariant structure representations proposed in this work can improve the SCC prediction accuracy; with the graph embedded local self-attention, the mean absolute error (MAE) of the prediction model in the validation set decreases from 0.1603 Hz to 0.1067 Hz; using the classification based loss function instead of the scaled regression loss, the MAE of the predicted SCC can be decreased to 0.0963 HZ, which is close to the quantum chemistry standard on CHAMPS dataset. |
topic |
Deep learning drug discovery graph embedding scalar coupling constant self-attention mechanism |
url |
https://ieeexplore.ieee.org/document/9199885/ |
work_keys_str_mv |
AT caiqingjian scalarcouplingconstantpredictionusinggraphembeddinglocalattentionencoder AT xinyucheng scalarcouplingconstantpredictionusinggraphembeddinglocalattentionencoder AT jianzhang scalarcouplingconstantpredictionusinggraphembeddinglocalattentionencoder AT lihuiwang scalarcouplingconstantpredictionusinggraphembeddinglocalattentionencoder |
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1724182484617265152 |