Integrative machine learning and molecular simulation approaches identify GSK3β inhibitors for neurodegenerative disease therapy.

Publication date: Jul 01, 2025

Neurodegenerative diseases (NDDs), including Alzheimer’s disease (AD) and Parkinson’s disease (PD), are a growing global health concern, especially among the elderly, posing significant challenges to well-being and survival. GSK3β, a serine/threonine kinase, is a key molecular player in the pathogenesis of NDDs. Dysregulated activity of GSK3β has been linked to neurodegenerative complications. Targeting GSK3β with active-site-specific inhibitors presents a promising therapeutic strategy for mitigating its pathological effects and potentially intercepting NDD progression. This study aimed to identify potential GSK3β inhibitors through an integrated in silico approach combining machine learning (ML)-based virtual screening, molecular docking, molecular dynamics (MD) simulations, and MM/GBSA binding free energy calculations. ML models were trained using known GSK3β inhibitors from BindingDB. Among all models, the Random Forest (RF) algorithm had the best prediction accuracy, with a value of 0. 6832 on the test set and 0. 7432 on the training set, and was employed to screen the target library of 11,032 phytochemicals. The ML-based screening identified 2,898 compounds with potential inhibitory action against GSK3β. Further screening based on Lipinski’s Rule of Five gave 221 drug-like candidates. These compounds were further evaluated for GSK3β interaction via molecular docking. The analyses found ZINC136900288, ZINC7267, and ZINC519549 bind strongly and interact well with key residues in GSK3β active site with their binding scores being - 9. 9, -8. 8, and - 8. 7 kcal/mol, respectively. MD simulations were conducted for both ligand-bound and apo GSK3β to assess structural stability. The simulation results showed that the ligand bound complexes were structurally stable with less fluctuations and higher conformational stability. In addition, (MM/GBSA) binding free energy calculations were carried out to quantify the affinity of the candidate compounds, and the candidate compound ZINC136900288 has the strongest binding affinity (-24. 86 kcal/mol) of the three. Notably, these identified compounds feature novel chemical scaffolds that are structurally distinct from previously reported GSK3β inhibitors, emphasizing the originality and therapeutic potential of this study. These results show that ZINC136900288 may serve as suitable GSK3β inhibitors. Nevertheless, the efficacy and safety of these compounds need to be further validated experimentally and further studied in vivo for possible therapeutic application in NDDs.

Open Access PDF

Concepts Keywords
Alzheimer Alzheimer’s’ disease
Free Humans
Library Inhibitors
Neurodegenerative Machine Learning
Zinc136900288 Machine learning
Molecular docking
Molecular Docking Simulation
Molecular Dynamics Simulation
Molecular dynamics simulation
Neurodegenerative Diseases
Parkinson’s disease
Protein Kinase Inhibitors
Protein Kinase Inhibitors

Semantics

Type Source Name
disease MESH neurodegenerative disease
pathway REACTOME Neurodegenerative Diseases
disease MESH Alzheimer’s disease
disease MESH Parkinson’s disease
drug DRUGBANK Serine
disease MESH pathogenesis
disease MESH complications
disease MESH abnormalities
drug DRUGBANK Coenzyme M
drug DRUGBANK L-Tyrosine
disease MESH neurofibrillary tangles
drug DRUGBANK Dopamine
disease MESH oxidative stress
disease MESH mitochondrial dysfunction
disease MESH death
drug DRUGBANK Glycine
disease MESH neuroinflammation
drug DRUGBANK Amino acids
drug DRUGBANK Phosphate ion
drug DRUGBANK ATP
drug DRUGBANK L-Threonine
drug DRUGBANK L-Aspartic Acid
drug DRUGBANK L-Phenylalanine
drug DRUGBANK Alpha-Linolenic Acid
drug DRUGBANK Glutamic Acid
drug DRUGBANK Indirubin
drug DRUGBANK Tideglusib
disease MESH neurological disorder
drug DRUGBANK Pidolic Acid
drug DRUGBANK Flunarizine
drug DRUGBANK Pentaerythritol tetranitrate
drug DRUGBANK MCC
drug DRUGBANK Zinc
drug DRUGBANK Methionine
drug DRUGBANK Water
pathway REACTOME Metabolism
drug DRUGBANK Saquinavir
drug DRUGBANK Spinosad
pathway REACTOME Intestinal absorption
disease MESH drug interactions
drug DRUGBANK Oxygen
drug DRUGBANK Nitrogen
drug DRUGBANK L-Asparagine
pathway REACTOME Apoptosis
disease MESH Parkinsonism
drug DRUGBANK Isoxaflutole
pathway REACTOME Acetylation
pathway KEGG Alzheimer disease
pathway KEGG Parkinson disease
disease MESH memory deficits
disease MESH renal carcinoma
disease MESH Cancer
disease MESH Staphylococcal infections
drug DRUGBANK Guanosine
disease MESH epilepsy
disease MESH Venezuelan equine encephalitis
pathway REACTOME Reproduction

Original Article

(Visited 11 times, 1 visits today)

Leave a Comment

Your email address will not be published. Required fields are marked *