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Incorporating Target Protein Structure Flexibility and Dynamics in Computational Drug Discovery Using Ensemble-Based Docking Analysis
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PepScorer::RMSD: An Improved Machine Learning Scoring Function for Protein-Peptide Docking.

Andrea Giuseppe Cavalli1, Giulio Vistoli1, Alessandro Pedretti1

  • 1Department of Pharmaceutical Sciences, University of Milan, I-20133 Milan, Italy.

International Journal of Molecular Sciences
|January 28, 2026
PubMed
Summary
This summary is machine-generated.

A new machine learning tool, PepScorer::RMSD, improves peptide drug discovery by accurately predicting binding poses. This enhances virtual screening efficiency for peptide-based therapeutics, offering a powerful alternative to small molecules.

Keywords:
artificial intelligencemachine learningprotein-peptide dockingscoring functionvirtual screening

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Area of Science:

  • Computational chemistry
  • Drug discovery
  • Bioinformatics

Background:

  • Pharmaceutical peptides offer advantages over small molecules but require specialized computational tools.
  • Existing molecular docking methods struggle with peptide flexibility and scoring, limiting their effectiveness in drug discovery.
  • Current computational tools are primarily optimized for small molecules, necessitating adaptation for peptide-based drug candidates.

Purpose of the Study:

  • To develop a novel machine learning-based scoring function, PepScorer::RMSD, for accurate peptide pose prediction in molecular docking.
  • To enhance the docking power (DP) and pose selection capabilities for virtual screening of peptide libraries.
  • To address the limitations of current scoring functions in handling the conformational flexibility of peptides.

Main Methods:

  • Developed PepScorer::RMSD, a machine learning model predicting root-mean-squared deviation (RMSD) of peptide poses.
  • Utilized a curated dataset of protein-peptide complexes (3-10 amino acids) for model training and evaluation.
  • Benchmarked the PLANTS-based workflow, incorporating PepScorer::RMSD, against AlphaFold-Multimer predictions.

Main Results:

  • PepScorer::RMSD achieved a Pearson correlation of 0.70 and a mean absolute error of 1.77 Å.
  • Demonstrated high top-1 docking power (DP) of 92% on an evaluation set and 81% on an external test set.
  • Outperformed conventional, ML-based, and existing peptide-specific scoring functions in accuracy and efficiency.

Conclusions:

  • PepScorer::RMSD significantly improves the accuracy of peptide pose prediction and virtual screening.
  • The developed tool and dataset provide a robust solution for computational peptide drug discovery.
  • Freely available resources (PepScorer::RMSD and dataset) facilitate further research in peptide-based therapeutics.