Literature DB >> 29738247

Hierarchical Flexible Peptide Docking by Conformer Generation and Ensemble Docking of Peptides.

Pei Zhou1, Botong Li1, Yumeng Yan1, Bowen Jin1, Libang Wang1, Sheng-You Huang1.   

Abstract

Given the importance of peptide-mediated protein interactions in cellular processes, protein-peptide docking has received increasing attention. Here, we have developed a Hierarchical flexible Peptide Docking approach through fast generation and ensemble docking of peptide conformations, which is referred to as HPepDock. Tested on the LEADS-PEP benchmark data set of 53 diverse complexes with peptides of 3-12 residues, HPepDock performed significantly better than the 11 docking protocols of five small-molecule docking programs (DOCK, AutoDock, AutoDock Vina, Surflex, and GOLD) in predicting near-native binding conformations. HPepDock was also evaluated on the 19 bound/unbound and 10 unbound/unbound protein-peptide complexes of the Glide SP-PEP benchmark and showed an overall better performance than Glide SP-PEP+MM-GBSA and FlexPepDock in both bound and unbound docking. HPepDock is computationally efficient, and the average running time for docking a peptide is ∼15 min with the range from about 1 min for short peptides to around 40 min for long peptides.

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Year:  2018        PMID: 29738247     DOI: 10.1021/acs.jcim.8b00142

Source DB:  PubMed          Journal:  J Chem Inf Model        ISSN: 1549-9596            Impact factor:   4.956


  14 in total

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4.  PepPro: A Nonredundant Structure Data Set for Benchmarking Peptide-Protein Computational Docking.

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Authors:  Ajay N Jain; Ann E Cleves; Qi Gao; Xiao Wang; Yizhou Liu; Edward C Sherer; Mikhail Y Reibarkh
Journal:  J Comput Aided Mol Des       Date:  2019-05-03       Impact factor: 3.686

9.  Peptide Combination Generator: a Tool for Generating Peptide Combinations.

Authors:  Naseem Ali; Arzoo Shamoon; Neelesh Yadav; Tanuj Sharma
Journal:  ACS Omega       Date:  2020-03-16

10.  A Novel Machine Learning Strategy for the Prediction of Antihypertensive Peptides Derived from Food with High Efficiency.

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Journal:  Foods       Date:  2021-03-06
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