Synergistic integration of deep learning with protein docking in cardiovascular disease treatment strategies

IUBMB Life. 2024 Sep;76(9):666-696. doi: 10.1002/iub.2819. Epub 2024 May 15.

Abstract

This research delves into the exploration of the potential of tocopherol-based nanoemulsion as a therapeutic agent for cardiovascular diseases (CVD) through an in-depth molecular docking analysis. The study focuses on elucidating the molecular interactions between tocopherol and seven key proteins (1O8a, 4YAY, 4DLI, 1HW9, 2YCW, 1BO9 and 1CX2) that play pivotal roles in CVD development. Through rigorous in silico docking investigations, assessment was conducted on the binding affinities, inhibitory potentials and interaction patterns of tocopherol with these target proteins. The findings revealed significant interactions, particularly with 4YAY, displaying a robust binding energy of -6.39 kcal/mol and a promising Ki value of 20.84 μM. Notable interactions were also observed with 1HW9, 4DLI, 2YCW and 1CX2, further indicating tocopherol's potential therapeutic relevance. In contrast, no interaction was observed with 1BO9. Furthermore, an examination of the common residues of 4YAY bound to tocopherol was carried out, highlighting key intermolecular hydrophobic bonds that contribute to the interaction's stability. Tocopherol complies with pharmacokinetics (Lipinski's and Veber's) rules for oral bioavailability and proves safety non-toxic and non-carcinogenic. Thus, deep learning-based protein language models ESM1-b and ProtT5 were leveraged for input encodings to predict interaction sites between the 4YAY protein and tocopherol. Hence, highly accurate predictions of these critical protein-ligand interactions were achieved. This study not only advances the understanding of these interactions but also highlights deep learning's immense potential in molecular biology and drug discovery. It underscores tocopherol's promise as a cardiovascular disease management candidate, shedding light on its molecular interactions and compatibility with biomolecule-like characteristics.

Keywords: cardiovascular diseases; deep learning models; feature embedding; molecular docking; tocopherol‐based nanoemulsion; toxicity prediction.

MeSH terms

  • Cardiovascular Diseases* / drug therapy
  • Cardiovascular Diseases* / metabolism
  • Deep Learning*
  • Humans
  • Molecular Docking Simulation*
  • Protein Binding
  • Proteins / chemistry
  • Proteins / metabolism
  • Tocopherols / chemistry
  • Tocopherols / metabolism

Substances

  • Tocopherols
  • Proteins