Scientific Reports (Jan 2024)

Using deep learning and molecular dynamics simulations to unravel the regulation mechanism of peptides as noncompetitive inhibitor of xanthine oxidase

  • Yi He,
  • Kaifeng Liu,
  • Fuyan Cao,
  • Renxiu Song,
  • Jianxuan Liu,
  • Yinghua Zhang,
  • Wannan Li,
  • Weiwei Han

DOI
https://doi.org/10.1038/s41598-023-50686-0
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 12

Abstract

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Abstract Xanthine oxidase (XO) is a crucial enzyme in the development of hyperuricemia and gout. This study focuses on LWM and ALPM, two food-derived inhibitors of XO. We used molecular docking to obtain three systems and then conducted 200 ns molecular dynamics simulations for the Apo, LWM, and ALPM systems. The results reveal a stronger binding affinity of the LWM peptide to XO, potentially due to increased hydrogen bond formation. Notable changes were observed in the XO tunnel upon inhibitor binding, particularly with LWM, which showed a thinner, longer, and more twisted configuration compared to ALPM. The study highlights the importance of residue F914 in the allosteric pathway. Methodologically, we utilized the perturbed response scan (PRS) based on Python, enhancing tools for MD analysis. These findings deepen our understanding of food-derived anti-XO inhibitors and could inform the development of food-based therapeutics for reducing uric acid levels with minimal side effects.