Novel 3D Structure Based Model for Activity Prediction and Design of Antimicrobial Peptides

The emergence and worldwide spread of multi-drug resistant bacteria makes an urgent challenge for the development of novel antibacterial agents. A perspective weapon to fight against severe infections caused by drug-resistant microorganisms is antimicrobial peptides (AMPs). AMPs are a diverse class...

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Veröffentlicht in:Scientific reports 2018-07, Vol.8 (1), p.11189-12, Article 11189
Hauptverfasser: Liu, Shicai, Bao, Jingxiao, Lao, Xingzhen, Zheng, Heng
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Bao, Jingxiao
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Zheng, Heng
description The emergence and worldwide spread of multi-drug resistant bacteria makes an urgent challenge for the development of novel antibacterial agents. A perspective weapon to fight against severe infections caused by drug-resistant microorganisms is antimicrobial peptides (AMPs). AMPs are a diverse class of naturally occurring molecules that are produced as a first line of defense by all multi-cellular organisms. Limited by the number of experimental determinate 3D structure, most of the prediction or classification methods of AMPs were based on 2D descriptors, including sequence, amino acid composition, peptide net charge, hydrophobicity, amphiphilic, etc. Due to the rapid development of structural simulation methods, predicted models of proteins (or peptides) have been successfully applied in structure based drug design, for example as targets of virtual ligand screening. Here, we establish the activity prediction model based on the predicted 3D structure of AMPs molecule. To our knowledge, it is the first report of prediction method based on 3D descriptors of AMPs. Novel AMPs were designed by using the model, and their antibacterial effect was measured by in vitro experiments.
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subjects 119/118
631/114/1305
631/114/469
Amino acid composition
Amino acid sequence
Amino acids
Antibacterial agents
Antimicrobial agents
Antimicrobial peptides
Drug development
Drug resistance
Humanities and Social Sciences
Hydrophobicity
Microorganisms
multidisciplinary
Multidrug resistance
Peptides
Prediction models
Science
Science (multidisciplinary)
title Novel 3D Structure Based Model for Activity Prediction and Design of Antimicrobial Peptides
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