Performance evaluation of molecular docking and free energy calculations protocols using the D3R Grand Challenge 4 dataset

被引:0
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作者
Eddy Elisée
Vytautas Gapsys
Nawel Mele
Ludovic Chaput
Edithe Selwa
Bert L. de Groot
Bogdan I. Iorga
机构
[1] Institut de Chimie des Substances Naturelles,
[2] CNRS UPR 2301,undefined
[3] Université Paris-Saclay,undefined
[4] Labex LERMIT,undefined
[5] Max Planck Institute for Biophysical Chemistry,undefined
[6] Sorbonne Université,undefined
[7] UPMC Paris 06,undefined
[8] Institut National de la Santé et de la Recherche Médicale,undefined
关键词
Molecular docking; Free energy calculations; Molecular dynamics; Pmx; D3R challenge; Beta secretase 1; Cathepsin S; Inhibitors;
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学科分类号
摘要
Using the D3R Grand Challenge 4 dataset containing Beta-secretase 1 (BACE) and Cathepsin S (CatS) inhibitors, we have evaluated the performance of our in-house docking workflow that involves in the first step the selection of the most suitable docking software for the system of interest based on structural and functional information available in public databases, followed by the docking of the dataset to predict the binding modes and ranking of ligands. The macrocyclic nature of the BACE ligands brought additional challenges, which were dealt with by a careful preparation of the three-dimensional input structures for ligands. This provided top-performing predictions for BACE, in contrast with CatS, where the predictions in the absence of guiding constraints provided poor results. These results highlight the importance of previous structural knowledge that is needed for correct predictions on some challenging targets. After the end of the challenge, we also carried out free energy calculations (i.e. in a non-blinded manner) for CatS using the pmx software and several force fields (AMBER, Charmm). Using knowledge-based starting pose construction allowed reaching remarkable accuracy for the CatS free energy estimates. Interestingly, we show that the use of a consensus result, by averaging the results from different force fields, increases the prediction accuracy.
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页码:1031 / 1043
页数:12
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