International Journal of Molecular Sciences (Apr 2022)

Development of an Automatic Pipeline for Participation in the CELPP Challenge

  • Marina Miñarro-Lleonar,
  • Sergio Ruiz-Carmona,
  • Daniel Alvarez-Garcia,
  • Peter Schmidtke,
  • Xavier Barril

DOI
https://doi.org/10.3390/ijms23094756
Journal volume & issue
Vol. 23, no. 9
p. 4756

Abstract

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The prediction of how a ligand binds to its target is an essential step for Structure-Based Drug Design (SBDD) methods. Molecular docking is a standard tool to predict the binding mode of a ligand to its macromolecular receptor and to quantify their mutual complementarity, with multiple applications in drug design. However, docking programs do not always find correct solutions, either because they are not sampled or due to inaccuracies in the scoring functions. Quantifying the docking performance in real scenarios is essential to understanding their limitations, managing expectations and guiding future developments. Here, we present a fully automated pipeline for pose prediction validated by participating in the Continuous Evaluation of Ligand Pose Prediction (CELPP) Challenge. Acknowledging the intrinsic limitations of the docking method, we devised a strategy to automatically mine and exploit pre-existing data, defining—whenever possible—empirical restraints to guide the docking process. We prove that the pipeline is able to generate predictions for most of the proposed targets as well as obtain poses with low RMSD values when compared to the crystal structure. All things considered, our pipeline highlights some major challenges in the automatic prediction of protein–ligand complexes, which will be addressed in future versions of the pipeline.

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