Convolutional neural network based on SMILES representation of compounds for detecting chemical motif

被引:148
作者
Hirohara, Maya [1 ]
Saito, Yutaka [2 ,3 ]
Koda, Yuki [1 ]
Sato, Kengo [1 ]
Sakakibara, Yasubumi [1 ]
机构
[1] Keio Univ, Dept Biosci & Informat, Yokohama, Kanagawa 2238522, Japan
[2] Natl Inst Adv Ind Sci & Technol, Artificial Intelligence Res Ctr, Tokyo 1350064, Japan
[3] Natl Inst Adv Ind Sci & Technol, CBBD OIL, Tokyo 1698555, Japan
关键词
Convolutional neural network; Chemical compound; Virtual screening; SMILES; TOX; 21; Challenge; DEEP; PREDICTION; ARCHITECTURES; BINDING;
D O I
10.1186/s12859-018-2523-5
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
BackgroundPrevious studies have suggested deep learning to be a highly effective approach for screening lead compounds for new drugs. Several deep learning models have been developed by addressing the use of various kinds of fingerprints and graph convolution architectures. However, these methods are either advantageous or disadvantageous depending on whether they (1) can distinguish structural differences including chirality of compounds, and (2) can automatically discover effective features.ResultsWe developed another deep learning model for compound classification. In this method, we constructed a distributed representation of compounds based on the SMILES notation, which linearly represents a compound structure, and applied the SMILES-based representation to a convolutional neural network (CNN). The use of SMILES allows us to process all types of compounds while incorporating a broad range of structure information, and representation learning by CNN automatically acquires a low-dimensional representation of input features. In a benchmark experiment using the TOX 21 dataset, our method outperformed conventional fingerprint methods, and performed comparably against the winning model of the TOX 21 Challenge. Multivariate analysis confirmed that the chemical space consisting of the features learned by SMILES-based representation learning adequately expressed a richer feature space that enabled the accurate discrimination of compounds. Using motif detection with the learned filters, not only important known structures (motifs) such as protein-binding sites but also structures of unknown functional groups were detected.ConclusionsThe source code of our SMILES-based convolutional neural network software in the deep learning framework Chainer is available at http://www.dna.bio.keio.ac.jp/smiles/, and the dataset used for performance evaluation in this work is available at the same URL.
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页数:12
相关论文
共 22 条
[1]   Predicting the sequence specificities of DNA- and RNA-binding proteins by deep learning [J].
Alipanahi, Babak ;
Delong, Andrew ;
Weirauch, Matthew T. ;
Frey, Brendan J. .
NATURE BIOTECHNOLOGY, 2015, 33 (08) :831-+
[2]  
Ballester PJ, 2007, J COMPUT CHEM, V28, P1711, DOI [10.1002/jcc.20681, 10.1002/JCC.20681]
[3]   Representation Learning: A Review and New Perspectives [J].
Bengio, Yoshua ;
Courville, Aaron ;
Vincent, Pascal .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2013, 35 (08) :1798-1828
[4]   In Silico Prediction of Chemicals Binding to Aromatase with Machine Learning Methods [J].
Du, Hanwen ;
Cai, Yingchun ;
Yang, Hongbin ;
Zhang, Hongxiao ;
Xue, Yuhan ;
Liu, Guixia ;
Tang, Yun ;
Li, Weihua .
CHEMICAL RESEARCH IN TOXICOLOGY, 2017, 30 (05) :1209-1218
[5]  
Duvenaudt D, 2015, ADV NEUR IN, V28
[6]   Comparison of shape-matching and docking as virtual screening tools [J].
Hawkins, Paul C. D. ;
Skillman, A. Geoffrey ;
Nicholls, Anthony .
JOURNAL OF MEDICINAL CHEMISTRY, 2007, 50 (01) :74-82
[7]   Tox21 Challenge to Build Predictive Models of Nuclear Receptor and Stress Response Pathways as Mediated by Exposure to Environmental Chemicals and Drugs [J].
Huang, Ruili ;
Xia, Menghang ;
Nguyen, Dac-Trung ;
Zhao, Tongan ;
Sakamuru, Srilatha ;
Zhao, Jinghua ;
Shahane, Sampada A. ;
Rossoshek, Anna ;
Simeonov, Anton .
FRONTIERS IN ENVIRONMENTAL SCIENCE, 2016, 3
[8]   Molecular graph convolutions: moving beyond fingerprints [J].
Kearnes, Steven ;
McCloskey, Kevin ;
Berndl, Marc ;
Pande, Vijay ;
Riley, Patrick .
JOURNAL OF COMPUTER-AIDED MOLECULAR DESIGN, 2016, 30 (08) :595-608
[9]   Basset: learning the regulatory code of the accessible genome with deep convolutional neural networks [J].
Kelley, David R. ;
Snoek, Jasper ;
Rinn, John L. .
GENOME RESEARCH, 2016, 26 (07) :990-999
[10]  
King DB, 2015, ACS SYM SER, V1214, P1