Application of molecular dynamics-based pharmacophore and machine learning approaches to identify novel Mcl1 inhibitors through drug repurposing and mechanics research

Myeloid cell leukemia 1 (Mcl1), a critical protein that regulates apoptosis, has been considered as a promising target for antitumor drugs. The conventional pharmacophore screening approach has limitations in conformation sampling and data mining. Here, we offered an innovative solution to identify...

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Veröffentlicht in:Physical chemistry chemical physics : PCCP 2024-06, Vol.26 (22), p.1617-16124
Hauptverfasser: Wang, Hanxun, Qi, Zhuo, Lian, Wenxiong, Ma, Lanyan, Wang, Shizun, Liu, Haihan, Jin, Yu, Yang, Huali, Wang, Jian, Cheng, Maosheng
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container_title Physical chemistry chemical physics : PCCP
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creator Wang, Hanxun
Qi, Zhuo
Lian, Wenxiong
Ma, Lanyan
Wang, Shizun
Liu, Haihan
Jin, Yu
Yang, Huali
Wang, Jian
Cheng, Maosheng
description Myeloid cell leukemia 1 (Mcl1), a critical protein that regulates apoptosis, has been considered as a promising target for antitumor drugs. The conventional pharmacophore screening approach has limitations in conformation sampling and data mining. Here, we offered an innovative solution to identify Mcl1 inhibitors with molecular dynamics-refined pharmacophore and machine learning methods. Considering the safety and druggability of FDA-approved drugs, virtual screening of the database was performed to discover Mcl1 inhibitors, and the hit was subsequently validated via TR-FRET, cytotoxicity, and flow cytometry assays. To reveal the binding characteristics shared by the hit and a typical Mcl1 selective inhibitor, we employed quantum mechanics and molecular mechanics (QM/MM) calculations, umbrella sampling, and metadynamics in this work. The combined studies suggested that fluvastatin had promising cell inhibitory potency and was suitable for further investigation. We believe that this research will shed light on the discovery of novel Mcl1 inhibitors that can be used as a supplemental treatment against leukemia and provide a possible method to improve the accuracy of drug repurposing with limited computational resources while balancing the costs of experimentation well. This work introduced an innovative drug repurposing solution involving MD-refined pharmacophore and machine learning methods. Fluvastatin was successfully identified as a potential Mcl1 inhibitor through flow cytometry and other in silico methods.
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The conventional pharmacophore screening approach has limitations in conformation sampling and data mining. Here, we offered an innovative solution to identify Mcl1 inhibitors with molecular dynamics-refined pharmacophore and machine learning methods. Considering the safety and druggability of FDA-approved drugs, virtual screening of the database was performed to discover Mcl1 inhibitors, and the hit was subsequently validated via TR-FRET, cytotoxicity, and flow cytometry assays. To reveal the binding characteristics shared by the hit and a typical Mcl1 selective inhibitor, we employed quantum mechanics and molecular mechanics (QM/MM) calculations, umbrella sampling, and metadynamics in this work. The combined studies suggested that fluvastatin had promising cell inhibitory potency and was suitable for further investigation. We believe that this research will shed light on the discovery of novel Mcl1 inhibitors that can be used as a supplemental treatment against leukemia and provide a possible method to improve the accuracy of drug repurposing with limited computational resources while balancing the costs of experimentation well. This work introduced an innovative drug repurposing solution involving MD-refined pharmacophore and machine learning methods. 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source Royal Society Of Chemistry Journals 2008-; Alma/SFX Local Collection
subjects Data mining
Drugs
Flow cytometry
Inhibitors
Leukemia
Machine learning
Mechanics
Molecular dynamics
Quantum mechanics
Sampling
Screening
title Application of molecular dynamics-based pharmacophore and machine learning approaches to identify novel Mcl1 inhibitors through drug repurposing and mechanics research
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