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DILI-Stk: An Ensemble Model for the Prediction of Drug-induced Liver Injury of Drug Candidates

Authors
Lee, JingyuYu, Myeong-SangNa, Dokyun
Issue Date
Mar-2022
Publisher
Bentham Science Publishers
Keywords
Drug discovery; drug-induced liver injury; hepatotoxicity; machine learning; quantitative structure-activity relationship model; xenobiotic metabolism; xenobiotics metabolism
Citation
Current Bioinformatics, v.17, no.3, pp 296 - 303
Pages
8
Journal Title
Current Bioinformatics
Volume
17
Number
3
Start Page
296
End Page
303
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/58483
DOI
10.2174/1574893617666211228113939
ISSN
1574-8936
2212-392X
Abstract
Background: Drug-induced Liver Injury (DILI) is a leading cause of drug failure, account-ing for nearly 20% of drug withdrawal. Thus, there has been a great demand for in silico DILI prediction models for successful drug discovery. To date, various models have been developed for DILI pre-diction; however, building an accurate model for practical use in drug discovery remains challenging. Methods: We constructed an ensemble model composed of three high-performance DILI prediction models to utilize the unique advantage of each machine learning algorithm. Results: The ensemble model exhibited high predictive performance, with an area under the curve of 0.88, sensitivity of 0.83, specificity of 0.77, F1-score of 0.82, and accuracy of 0.80. When a test dataset collected from the literature was used to compare the performance of our model with publicly available DILI prediction models, our model achieved an accuracy of 0.77, sensitivity of 0.82, specificity of 0.72, and F1-score of 0.79, which were higher than those of the other DILI prediction models. As many pub-lished DILI prediction models are not available for public access, which hinders in silico drug discov-ery, we made our DILI prediction model publicly accessible (http://ssbio.cau.ac.kr/software/dili/). Conclusion: We expect that our ensemble model may facilitate advancements in drug discovery by providing a highly predictive model and reducing the drug withdrawal rate. © 2022 Bentham Science Publishers.
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