Thai_2022_J.Mol.Graph.Model_115_108230

Reference

Title : Searching for AChE inhibitors from natural compounds by using machine learning and atomistic simulations - Thai_2022_J.Mol.Graph.Model_115_108230
Author(s) : Thai QM , Pham TNH , Hiep DM , Pham MQ , Tran PT , Nguyen TH , Ngo ST
Ref : J Mol Graph Model , 115 :108230 , 2022
Abstract :

Acetylcholinesterase (AChE) is one of the most important drug targets for Alzheimer's disease treatment. In this work, a combined approach involving machine-learning (ML) model and atomistic simulations was established to predict the ligand-binding affinity to AChE of the natural compounds from VIETHERB database. The trained ML model was first utilized to rapidly and accurately screen the natural compound database for potential AChE inhibitors. Atomistic simulations including molecular docking and steered-molecular dynamics simulations were then used to confirm the ML outcome. Good agreement between ML and atomistic simulations was observed. Twenty compounds were suggested to be able to inhibit AChE. Especially, four of them including geranylgeranyl diphosphate, 2-phosphoglyceric acid, and 2-carboxy-d-arabinitol 1-phosphate, and farnesyl diphosphate are highly potent inhibitors with sub-nanomolar affinities.

PubMedSearch : Thai_2022_J.Mol.Graph.Model_115_108230
PubMedID: 35661591

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Citations formats

Thai QM, Pham TNH, Hiep DM, Pham MQ, Tran PT, Nguyen TH, Ngo ST (2022)
Searching for AChE inhibitors from natural compounds by using machine learning and atomistic simulations
J Mol Graph Model 115 :108230

Thai QM, Pham TNH, Hiep DM, Pham MQ, Tran PT, Nguyen TH, Ngo ST (2022)
J Mol Graph Model 115 :108230