Pulse Brain · Growing Health Evidence Index
Peer-reviewed

Machine learning and molecular dynamics simulations predict potential TGR5 agonists for type 2 diabetes treatment

Ojochenemi A. Enejoh, Chinelo H. Okonkwo, Hector Nortey, Olalekan Ademola Kemiki, Ali Moses, Florence N. Mbaoji, Abdulrazak S. Yusuf, Olaitan I. Awe

Frontiers in Chemistry · 2025

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Summary

Introduction: Treatment of type 2 diabetes (T2D) remains a significant challenge because of its multifactorial nature and complex metabolic pathways. There is growing interest in finding new therapeutic targets that could lead to safer and more effective treatment options. Takeda G protein-coupled receptor 5 (TGR5) is a promising antidiabetic target that plays a key role in metabolic regulation, especially in glucose homeostasis and energy expenditure. TGR5 agonists are attractive candidates for T2D therapy because of their ability to improve glycemic control. This study used machine learning-based models (ML), molecular docking (MD), and molecular dynamics simulations (MDS) to explore novel small molecules as potential TGR5 agonists. Methods: Bioactivity data for known TGR5 agonists were

Source type
Peer-reviewed study
DOI
10.3389/fchem.2024.1503593
Catalogue ID
SNmoj441d2-sunwhj
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