1. Integration of 3D-QSAR, molecular docking, and machine learning techniques for rational design of nicotinamide-based SIRT2 inhibitors.
- Author
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Ilic A, Djokovic N, Djikic T, and Nikolic K
- Subjects
- Humans, Molecular Structure, Enzyme Inhibitors chemistry, Enzyme Inhibitors pharmacology, Sirtuin 2 antagonists & inhibitors, Sirtuin 2 metabolism, Sirtuin 2 chemistry, Quantitative Structure-Activity Relationship, Niacinamide chemistry, Niacinamide pharmacology, Niacinamide analogs & derivatives, Drug Design, Molecular Docking Simulation, Machine Learning
- Abstract
Selective inhibitors of sirtuin-2 (SIRT2) are increasingly recognized as potential therapeutics for cancer and neurodegenerative diseases. Derivatives of 5-((3-amidobenzyl)oxy)nicotinamides have been identified as some of the most potent and selective SIRT2 inhibitors reported to date (Ai et al., 2016; Ai et al., 2023, Baroni et al., 2007). In this study, a 3D-QSAR (3D-Quantitative Structure-Activity Relationship) model was developed using a dataset of 86 nicotinamide-based SIRT2 inhibitors from the literature, along with GRIND-derived pharmacophore models for selected inhibitors. External validation parameters emphasized the reliability of the 3D-QSAR model in predicting SIRT2 inhibition within the defined applicability domain. The interpretation of the 3D-QSAR model facilitated the generation of GRIND-derived pharmacophore models, which in turn enabled the design of novel SIRT2 inhibitors. Furthermore, based on molecular docking results for the SIRT1-3 isoforms, two classification models were developed: a SIRT1/2 model using the Naive Bayes algorithm and a SIRT2/3 model using the k-nearest neighbors algorithm, to predict the selectivity of inhibitors for SIRT1/2 and SIRT2/3. External validation parameters of the selectivity models confirmed their predictive power. Ultimately, the integration of 3D-QSAR, selectivity models and prediction of ADMET properties facilitated the identification of the most promising selective SIRT2 inhibitors for further development., Competing Interests: Declaration of Competing Interest The author declare no conflict of interest., (Copyright © 2024 Elsevier Ltd. All rights reserved.)
- Published
- 2024
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