4.5 Article

Virtual screening of dipeptidyl peptidase-4 inhibitors using quantitative structure-activity relationship-based artificial intelligence and molecular docking of hit compounds

期刊

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.compbiolchem.2021.107597

关键词

Artificial intelligence; DPP-4; KNIME; Machine learning; QSAR; Virtual screening

资金

  1. PITTA Indonesia (International Indexed Publication for UI Student Final Project) 2019 grant [NKB-0472/UN2. R3.1/HKP.05.00/2019]
  2. Directorate of Research and Community Service at the University of Indonesia

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In this study, a virtual screening workflow was developed using quantitative structure-activity relationship (QSAR) strategy based on artificial intelligence to identify DPP-4-inhibitor hit compounds selective against DPP-8 and DPP-9. The study utilized regression and classification machine learning algorithms to build the virtual screening workflows, resulting in the identification of potential hit compounds with high inhibitory potential against DPP-4 and low inhibitory potential against DPP-8 and DPP-9. This technique showed effectiveness in identifying DPP-4-inhibitor hit compounds and has potential applications for discovering hit compounds of other targets.
Dipeptidyl peptidase-4 (DPP-4) inhibitors are becoming an essential drug in the treatment of type 2 diabetes mellitus; however, some classes of these drugs exert side effects, including joint pain and pancreatitis. Studies suggest that these side effects might be related to secondary inhibition of DPP-8 and DPP-9. In this study, we identified DPP-4-inhibitor hit compounds selective against DPP-8 and DPP-9. We built a virtual screening workflow using a quantitative structure-activity relationship (QSAR) strategy based on artificial intelligence to allow faster screening of millions of molecules for the DPP-4 target relative to other screening methods. Five regression machine learning algorithms and four classification machine learning algorithms were applied to build virtual screening workflows, with the QSAR model applied using support vector regression (R2pred 0.78) and the classification QSAR model using the random forest algorithm with 92.2% accuracy. Virtual screening results of > 10 million molecules obtained 2 716 hits compounds with a pIC50 value of > 7.5. Additionally, molecular docking results of several potential hit compounds for DPP-4, DPP-8, and DPP-9 identified CH0002 as showing high inhibitory potential against DPP-4 and low inhibitory potential for DPP-8 and DPP-9 enzymes. These results demonstrated the effectiveness of this technique for identifying DPP-4-inhibitor hit compounds selective for DPP-4 and against DPP-8 and DPP-9 and suggest its potential efficacy for applications to discover hit compounds of other targets.

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