Nguyen_2022_ACS.Omega_7_20673

Reference

Title : Identifying Possible AChE Inhibitors from Drug-like Molecules via Machine Learning and Experimental Studies - Nguyen_2022_ACS.Omega_7_20673
Author(s) : Nguyen TH , Tran PT , Pham NQA , Hoang VH , Hiep DM , Ngo ST
Ref : ACS Omega , 7 :20673 , 2022
Abstract :

Acetylcholinesterase (AChE) is one of the most important drug targets for Alzheimer's disease (AD) treatment. In this work, a machine learning model was trained to rapidly and accurately screen large chemical databases for the potential inhibitors of AChE. The obtained results were then validated via in vitro enzyme assay. Moreover, atomistic simulations including molecular docking and molecular dynamics simulations were then used to understand molecular insights into the binding process of ligands to AChE. In particular, two compounds including benzyl trifluoromethyl ketone and trifluoromethylstyryl ketone were indicated as highly potent inhibitors of AChE because they established IC(50) values of 0.51 and 0.33 microM, respectively. The obtained IC(50) of two compounds is significantly lower than that of galantamine (2.10 microM). The predicted log(BB) suggests that the compounds may be able to traverse the blood-brain barrier. A good agreement between computational and experimental studies was observed, indicating that the hybrid approach can enhance AD therapy.

PubMedSearch : Nguyen_2022_ACS.Omega_7_20673
PubMedID: 35755364

Related information

Citations formats

Nguyen TH, Tran PT, Pham NQA, Hoang VH, Hiep DM, Ngo ST (2022)
Identifying Possible AChE Inhibitors from Drug-like Molecules via Machine Learning and Experimental Studies
ACS Omega 7 :20673

Nguyen TH, Tran PT, Pham NQA, Hoang VH, Hiep DM, Ngo ST (2022)
ACS Omega 7 :20673