Abstract
Microbial resistance to antibiotics is a rising concern among health care professionals, driving them to search for alternative therapies. In the past few years, antimicrobial peptides (AMPs) have attracted a lot of attention as a substitute for conventional antibiotics. Antimicrobial peptides have a broad spectrum of activity and can act as antibacterial, antifungal, antiviral and sometimes even as anticancer drugs. The antibacterial peptides have little sequence homology, despite common properties. Since there is a need to develop a computational method for predicting the antibacterial peptides, in the present study, we have applied the concept of Chou’s pseudo-amino acid composition (PseAAC) and machine learning methods for their classification. Our results demonstrate that using the concept of PseAAC and applying Support Vector Machine (SVM) can provide useful information to predict antibacterial peptides.
Keywords: Antibacterial peptides, bioinformatics, Chou’s pseudo amino acid composition, machine learning methods, clustering, fivefold cross-validation
Protein & Peptide Letters
Title:Predicting Antibacterial Peptides by the Concept of Chou’s Pseudo-amino Acid Composition and Machine Learning Methods
Volume: 20 Issue: 2
Author(s): Maede Khosravian, Fateme Kazemi Faramarzi, Majid Mohammad Beigi, Mandana Behbahani and Hassan Mohabatkar
Affiliation:
Keywords: Antibacterial peptides, bioinformatics, Chou’s pseudo amino acid composition, machine learning methods, clustering, fivefold cross-validation
Abstract: Microbial resistance to antibiotics is a rising concern among health care professionals, driving them to search for alternative therapies. In the past few years, antimicrobial peptides (AMPs) have attracted a lot of attention as a substitute for conventional antibiotics. Antimicrobial peptides have a broad spectrum of activity and can act as antibacterial, antifungal, antiviral and sometimes even as anticancer drugs. The antibacterial peptides have little sequence homology, despite common properties. Since there is a need to develop a computational method for predicting the antibacterial peptides, in the present study, we have applied the concept of Chou’s pseudo-amino acid composition (PseAAC) and machine learning methods for their classification. Our results demonstrate that using the concept of PseAAC and applying Support Vector Machine (SVM) can provide useful information to predict antibacterial peptides.
Export Options
About this article
Cite this article as:
Khosravian Maede, Kazemi Faramarzi Fateme, Mohammad Beigi Majid, Behbahani Mandana and Mohabatkar Hassan, Predicting Antibacterial Peptides by the Concept of Chou’s Pseudo-amino Acid Composition and Machine Learning Methods, Protein & Peptide Letters 2013; 20 (2) . https://dx.doi.org/10.2174/0929866511320020009
DOI https://dx.doi.org/10.2174/0929866511320020009 |
Print ISSN 0929-8665 |
Publisher Name Bentham Science Publisher |
Online ISSN 1875-5305 |
- Author Guidelines
- Graphical Abstracts
- Fabricating and Stating False Information
- Research Misconduct
- Post Publication Discussions and Corrections
- Publishing Ethics and Rectitude
- Increase Visibility of Your Article
- Archiving Policies
- Peer Review Workflow
- Order Your Article Before Print
- Promote Your Article
- Manuscript Transfer Facility
- Editorial Policies
- Allegations from Whistleblowers
Related Articles
-
Preparation of Quercetin Loaded Microparticles and their Antitumor Activity against Human Lung Cancer Cells (A549) in vitro
Current Pharmaceutical Biotechnology Interactions of Cisplatin with non-DNA Targets and their Influence on Anticancer Activity and Drug Toxicity: The Complex World of the Platinum Complex
Current Cancer Drug Targets Leveraging Structural Diversity and Allosteric Regulatory Mechanisms of Protein Kinases in the Discovery of Small Molecule Inhibitors
Current Medicinal Chemistry Estrogenic Phenol and Catechol Metabolites of PCBs Modulate Catechol-Omethyltransferase Expression Via the Estrogen Receptor: Potential Contribution to Cancer Risk
Current Drug Metabolism Synthesis, Characterization, Biological Activity and Voltammetric Behavior and Determination of Cefaclor Metal Complexes
Current Analytical Chemistry Cannabinoid Receptor Activation and the Endocannabinoid System in the Gastrointestinal Tract
Current Neuropharmacology Strategies Targeting DNA Topoisomerase I in Cancer Chemotherapy: Camptothecins, Nanocarriers for Camptothecins, Organic Non-Camptothecin Compounds and Metal Complexes
Current Drug Targets Interference of Metals and Medications with the Detection of Lipid Peroxidation in Humans by Photometric TBARS Assay
Current Analytical Chemistry Phenylboronic Acid-polymers for Biomedical Applications
Current Medicinal Chemistry Anti-Cancer Properties of Nigella spp. Essential Oils and their Major Constituents, Thymoquinone and β-Elemene
Current Clinical Pharmacology Endothelial Dysfunction Induced by Cadmium and Mercury and its Relationship to Hypertension
Current Hypertension Reviews A SELDI-TOF-MS Study in Lacunar Stroke with Subsequent Haptoglobin Phenotyping
Current Neurovascular Research Molecular Imaging Strategies for In Vivo Tracking of MicroRNAs: A Comprehensive Review
Current Medicinal Chemistry Dimethyloxallyl Glycine-Incorporated Borosilicate Bioactive Glass Scaffolds for Improving Angiogenesis and Osteogenesis in Critical-Sized Calvarial Defects
Current Drug Delivery Studies on the Biotransformations and Biodistributions of Metal-Containing Drugs Using X-Ray Absorption Spectroscopy
Current Topics in Medicinal Chemistry Natural Products Triggering Biological Targets- A Review of the Anti-Inflammatory Phytochemicals Targeting the Arachidonic Acid Pathway in Allergy Asthma and Rheumatoid Arthritis
Current Drug Targets Towards Computational Models of Identifying Protein Ubiquitination Sites
Current Drug Targets Recent Insights into COVID-19 in Children and Clinical Recommendations
Current Pediatric Reviews Neuroinflammation and its Modulation by Flavonoids
Endocrine, Metabolic & Immune Disorders - Drug Targets Dendrimers - Nanoparticles with Precisely Engineered Surfaces
Current Organic Chemistry