Novel Antimicrobial Peptide Design Using Motif Match Score Representation

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Date

2024

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IEEE Computer Soc

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Green Open Access

Yes

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Abstract

Antimicrobial peptides (AMPs) have drawn the interest of the researchers since they offer an alternative to the traditional antibiotics in the fight against antibiotic resistance and they exhibit additional pharmaceutically significant properties. Recently, computational approaches attemp to reveal how antibacterial activity is determined from a machine learning perspective and they aim to search and find the biological cues or characteristics that control antimicrobial activity via incorporating motif match scores. This study is dedicated to the development of a machine learning framework aimed at devising novel antimicrobial peptide (AMP) sequences potentially effective against Gram-positive/Gram-negative bacteria. In order to design newly generated sequences classified as either AMP or non-AMP, various classification models were trained. These novel sequences underwent validation utilizing the "DBAASP: strain-specific antibacterial prediction based on machine learning approaches and data on AMP sequences" tool. The findings presented herein represent a significant stride in this computational research, streamlining the process of AMP creation or modification within wet lab environments.

Description

Yousef, Malik/0000-0001-8780-6303; Bakir-Gungor, Burcu/0000-0002-2272-6270

Keywords

Peptides, Amino Acids, Microorganisms, Machine Learning, Computational Modeling, Support Vector Machines, Immune System, Antimicrobial Peptide (Amp) Prediction, Novel Peptides, Gram-Negative Bacteria, Gram-Positive Bacteria, Motif Match Score, Support vector machines, Amino Acid Motifs, Microorganisms, Computational Biology, Antimicrobial peptide prediction, Computational modeling, Gram-positive bacteria, novel peptides, Anti-Bacterial Agents, Machine Learning, Immune system, Gram-negative bacteria, Drug Design, Machine learning, Amino acids, Peptides, motif match score, Antimicrobial Peptides, Algorithms, Amino Acid Sequence

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Source

IEEE-Acm Transactions on Computational Biology and Bioinformatics

Volume

21

Issue

6

Start Page

1656

End Page

1666
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CrossRef : 1

Scopus : 4

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4

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