Deep Learning Based Drug Metabolites Prediction
Author(s) -
Disha Wang,
Wenjun Liu,
Zihao Shen,
Lei Jiang,
Jie Wang,
Shiliang Li,
Honglin Li
Publication year - 2020
Publication title -
frontiers in pharmacology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.384
H-Index - 86
ISSN - 1663-9812
DOI - 10.3389/fphar.2019.01586
Subject(s) - computer science , drug discovery , key (lock) , artificial intelligence , set (abstract data type) , construct (python library) , machine learning , deep learning , data mining , bioinformatics , biology , computer security , programming language
Drug metabolism research plays a key role in the discovery and development of drugs. Based on the discovery of drug metabolites, new chemical entities can be identified and potential safety hazards caused by reactive or toxic metabolites can be minimized. Nowadays, computational methods are usually complementary tools for experiments. However, current metabolites prediction methods tend to have high false positive rates with low accuracy and are usually only used for specific enzyme systems. In order to overcome this difficulty, a method was developed in this paper by first establishing a database with broad coverage of SMARTS-coded metabolic reaction rule, and then extracting the molecular fingerprints of compounds to construct a classification model based on deep learning algorithms. The metabolic reaction rule database we built can supplement chemically reasonable negative reaction examples. Based on deep learning algorithms, the model could determine which reaction types are more likely to occur than the others. In the test set, our method can achieve the accuracy of 70% (Top-10), which is significantly higher than that of random guess and the rule-based method SyGMa. The results demonstrated that our method has a certain predictive ability and application value.
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