Literature DB >> 33147620

TrimNet: learning molecular representation from triplet messages for biomedicine.

Pengyong Li1, Yuquan Li2, Chang-Yu Hsieh3, Shengyu Zhang4, Xianggen Liu5, Huanxiang Liu6, Sen Song7, Xiaojun Yao6.   

Abstract

MOTIVATION: Computational methods accelerate drug discovery and play an important role in biomedicine, such as molecular property prediction and compound-protein interaction (CPI) identification. A key challenge is to learn useful molecular representation. In the early years, molecular properties are mainly calculated by quantum mechanics or predicted by traditional machine learning methods, which requires expert knowledge and is often labor-intensive. Nowadays, graph neural networks have received significant attention because of the powerful ability to learn representation from graph data. Nevertheless, current graph-based methods have some limitations that need to be addressed, such as large-scale parameters and insufficient bond information extraction.
RESULTS: In this study, we proposed a graph-based approach and employed a novel triplet message mechanism to learn molecular representation efficiently, named triplet message networks (TrimNet). We show that TrimNet can accurately complete multiple molecular representation learning tasks with significant parameter reduction, including the quantum properties, bioactivity, physiology and CPI prediction. In the experiments, TrimNet outperforms the previous state-of-the-art method by a significant margin on various datasets. Besides the few parameters and high prediction accuracy, TrimNet could focus on the atoms essential to the target properties, providing a clear interpretation of the prediction tasks. These advantages have established TrimNet as a powerful and useful computational tool in solving the challenging problem of molecular representation learning. AVAILABILITY: The quantum and drug datasets are available on the website of MoleculeNet: http://moleculenet.ai. The source code is available in GitHub: https://github.com/yvquanli/trimnet. CONTACT: xjyao@lzu.edu.cn, songsen@tsinghua.edu.cn.
© The Author(s) 2020. Published by Oxford University Press. All rights reserved. For Permissions, please email: journals.permissions@oup.com.

Entities:  

Keywords:  compound–protein interaction; computational method; deep learning; graph neural networks; molecular property; molecular representation

Year:  2021        PMID: 33147620     DOI: 10.1093/bib/bbaa266

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   11.622


  5 in total

1.  Representation Learning: Recommendation With Knowledge Graph via Triple-Autoencoder.

Authors:  Yishuai Geng; Xiao Xiao; Xiaobing Sun; Yi Zhu
Journal:  Front Genet       Date:  2022-06-03       Impact factor: 4.772

2.  MGraphDTA: deep multiscale graph neural network for explainable drug-target binding affinity prediction.

Authors:  Ziduo Yang; Weihe Zhong; Lu Zhao; Calvin Yu-Chian Chen
Journal:  Chem Sci       Date:  2022-01-05       Impact factor: 9.825

Review 3.  Machine Learning of Reaction Properties via Learned Representations of the Condensed Graph of Reaction.

Authors:  Esther Heid; William H Green
Journal:  J Chem Inf Model       Date:  2021-11-04       Impact factor: 6.162

4.  Proteome-Wide Profiling of the Covalent-Druggable Cysteines with a Structure-Based Deep Graph Learning Network.

Authors:  Hongyan Du; Dejun Jiang; Junbo Gao; Xujun Zhang; Lingxiao Jiang; Yundian Zeng; Zhenxing Wu; Chao Shen; Lei Xu; Dongsheng Cao; Tingjun Hou; Peichen Pan
Journal:  Research (Wash D C)       Date:  2022-07-21

Review 5.  On modeling and utilizing chemical compound information with deep learning technologies: A task-oriented approach.

Authors:  Sangsoo Lim; Sangseon Lee; Yinhua Piao; MinGyu Choi; Dongmin Bang; Jeonghyeon Gu; Sun Kim
Journal:  Comput Struct Biotechnol J       Date:  2022-08-05       Impact factor: 6.155

  5 in total

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