» Articles » PMID: 23455341

Prediction of Antimicrobial Activity of Synthetic Peptides by a Decision Tree Model

Overview
Date 2013 Mar 5
PMID 23455341
Citations 13
Authors
Affiliations
Soon will be listed here.
Abstract

Antimicrobial resistance is a persistent problem in the public health sphere. However, recent attempts to find effective substitutes to combat infections have been directed at identifying natural antimicrobial peptides in order to circumvent resistance to commercial antibiotics. This study describes the development of synthetic peptides with antimicrobial activity, created in silico by site-directed mutation modeling using wild-type peptides as scaffolds for these mutations. Fragments of antimicrobial peptides were used for modeling with molecular modeling computational tools. To analyze these peptides, a decision tree model, which indicated the action range of peptides on the types of microorganisms on which they can exercise biological activity, was created. The decision tree model was processed using physicochemistry properties from known antimicrobial peptides available at the Antimicrobial Peptide Database (APD). The two most promising peptides were synthesized, and antimicrobial assays showed inhibitory activity against Gram-positive and Gram-negative bacteria. Colossomin C and colossomin D were the most inhibitory peptides at 5 μg/ml against Staphylococcus aureus and Escherichia coli. The methods described in this work and the results obtained are useful for the identification and development of new compounds with antimicrobial activity through the use of computational tools.

Citing Articles

Roles of Different β-Defensins in the Human Reproductive System: A Review Study.

Fesahat F, Firouzabadi A, Zare-Zardini H, Imani M Am J Mens Health. 2023; 17(3):15579883231182673.

PMID: 37381627 PMC: 10334010. DOI: 10.1177/15579883231182673.


Fermented mulberry leaf meal as fishmeal replacer in the formulation of feed for carp Labeo rohita and catfish Heteropneustes fossilis-optimization by mathematical programming.

Ali S, Saha S, Kaviraj A Trop Anim Health Prod. 2019; 52(2):839-849.

PMID: 31586318 DOI: 10.1007/s11250-019-02075-x.


An advanced approach to identify antimicrobial peptides and their function types for penaeus through machine learning strategies.

Lin Y, Cai Y, Liu J, Lin C, Liu X BMC Bioinformatics. 2019; 20(Suppl 8):291.

PMID: 31182007 PMC: 6557738. DOI: 10.1186/s12859-019-2766-9.


De Novo Design and In Vitro Testing of Antimicrobial Peptides against Gram-Negative Bacteria.

Vishnepolsky B, Zaalishvili G, Karapetian M, Nasrashvili T, Kuljanishvili N, Gabrielian A Pharmaceuticals (Basel). 2019; 12(2).

PMID: 31163671 PMC: 6631481. DOI: 10.3390/ph12020082.


Encodings and models for antimicrobial peptide classification for multi-resistant pathogens.

Spanig S, Heider D BioData Min. 2019; 12:7.

PMID: 30867681 PMC: 6399931. DOI: 10.1186/s13040-019-0196-x.


References
1.
Kourie J, Shorthouse A . Properties of cytotoxic peptide-formed ion channels. Am J Physiol Cell Physiol. 2000; 278(6):C1063-87. DOI: 10.1152/ajpcell.2000.278.6.C1063. View

2.
Tossi A, Tarantino C, Romeo D . Design of synthetic antimicrobial peptides based on sequence analogy and amphipathicity. Eur J Biochem. 1998; 250(2):549-58. DOI: 10.1111/j.1432-1033.1997.0549a.x. View

3.
Dathe M, Wieprecht T . Structural features of helical antimicrobial peptides: their potential to modulate activity on model membranes and biological cells. Biochim Biophys Acta. 1999; 1462(1-2):71-87. DOI: 10.1016/s0005-2736(99)00201-1. View

4.
Patrzykat A, Gallant J, Seo J, Pytyck J, Douglas S . Novel antimicrobial peptides derived from flatfish genes. Antimicrob Agents Chemother. 2003; 47(8):2464-70. PMC: 166104. DOI: 10.1128/AAC.47.8.2464-2470.2003. View

5.
Wang G, Li X, Wang Z . APD2: the updated antimicrobial peptide database and its application in peptide design. Nucleic Acids Res. 2008; 37(Database issue):D933-7. PMC: 2686604. DOI: 10.1093/nar/gkn823. View