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In Silico Searching for Alternative Lead Compounds to Treat Type 2 Diabetes through a QSAR and Molecular Dynamics Study

N. Cabrera, Sebastián A. Cuesta, José R. Mora, Luis Calle, Edgar Márquez, Roland Kaunas, J. L. Paz

2022Pharmaceutics17 citationsDOIOpen Access PDF

Abstract

Free fatty acid receptor 1 (FFA1) stimulates insulin secretion in pancreatic β-cells. An advantage of therapies that target FFA1 is their reduced risk of hypoglycemia relative to common type 2 diabetes treatments. In this work, quantitative structure–activity relationship (QSAR) approach was used to construct models to identify possible FFA1 agonists by applying four different machine-learning algorithms. The best model (M2) meets the Tropsha’s test requirements and has the statistics parameters R2 = 0.843, Q2CV = 0.785, and Q2ext = 0.855. Also, coverage of 100% of the test set based on the applicability domain analysis was obtained. Furthermore, a deep analysis based on the ADME predictions, molecular docking, and molecular dynamics simulations was performed. The lipophilicity and the residue interactions were used as relevant criteria for selecting a candidate from the screening of the DiaNat and DrugBank databases. Finally, the FDA-approved drugs bilastine, bromfenac, and fenofibric acid are suggested as potential and lead FFA1 agonists.

Topics & Concepts

DrugBankIn silicoADMEQuantitative structure–activity relationshipFree fatty acid receptor 1Computational biologyLipophilicityComputer scienceDrugChemistryMachine learningPharmacologyMedicineAgonistBiochemistryBiologyReceptorGeneComputational Drug Discovery MethodsSynthesis and biological activityInflammatory mediators and NSAID effects