Prediction of Linear Cationic Antimicrobial Peptides Active Against Gram-Negative and Gram-Positive Bacteria Based on Machine Learning Models

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Date

2022

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Volume Title

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MDPI

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GOLD

Green Open Access

Yes

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107

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220

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Top 10%
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Top 10%

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Abstract

Antimicrobial peptides (AMPs) are considered as promising alternatives to conventional antibiotics in order to overcome the growing problems of antibiotic resistance. Computational prediction approaches receive an increasing interest to identify and design the best candidate AMPs prior to the in vitro tests. In this study, we focused on the linear cationic peptides with non-hemolytic activity, which are downloaded from the Database of Antimicrobial Activity and Structure of Peptides (DBAASP). Referring to the MIC (Minimum inhibition concentration) values, we have assigned a positive label to a peptide if it shows antimicrobial activity; otherwise, the peptide is labeled as negative. Here, we focused on the peptides showing antimicrobial activity against Gram-negative and against Gram-positive bacteria separately, and we created two datasets accordingly. Ten different physico-chemical properties of the peptides are calculated and used as features in our study. Following data exploration and data preprocessing steps, a variety of classification algorithms are used with 100-fold Monte Carlo Cross-Validation to build models and to predict the antimicrobial activity of the peptides. Among the generated models, Random Forest has resulted in the best performance metrics for both Gram-negative dataset (Accuracy: 0.98, Recall: 0.99, Specificity: 0.97, Precision: 0.97, AUC: 0.99, F1: 0.98) and Gram-positive dataset (Accuracy: 0.95, Recall: 0.95, Specificity: 0.95, Precision: 0.90, AUC: 0.97, F1: 0.92) after outlier elimination is applied. This prediction approach might be useful to evaluate the antibacterial potential of a candidate peptide sequence before moving to the experimental studies.

Description

Erdem Buyukkiraz, Mine/0000-0002-8724-0466; Yousef, Malik/0000-0001-8780-6303; Bakir-Gungor, Burcu/0000-0002-2272-6270; Kesmen, Zulal/0000-0002-4505-6871; Soylemez, Ummu Gulsum/0000-0002-6602-772X;

Keywords

Antimicrobial Peptide (Amp), Machine Learning, Classification Model, Antimicrobial Peptide Prediction, Antimicrobial Activity, Physico-Chemical Properties, Linear Cationic Antimicrobial Peptides, linear cationic antimicrobial peptides, Technology, antimicrobial activity, classification model, QH301-705.5, antimicrobial peptide (AMP), T, Physics, QC1-999, Engineering (General). Civil engineering (General), physico-chemical properties, Design; Discovery; Protein; Classifier; Algorithms; Defensin; Systems; Tool, antimicrobial peptide prediction, Chemistry, machine learning, TA1-2040, Biology (General), antimicrobial peptide (AMP); machine learning; classification model; antimicrobial peptide prediction; antimicrobial activity; physico-chemical properties; linear cationic antimicrobial peptides, QD1-999, biotechnology

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Fields of Science

0301 basic medicine, 03 medical and health sciences

Citation

WoS Q

Q2

Scopus Q

Q2
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OpenCitations Citation Count
18

Source

Applied Sciences-Basel

Volume

12

Issue

7

Start Page

3631

End Page

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CrossRef : 22

Scopus : 26

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Mendeley Readers : 44

SCOPUS™ Citations

26

checked on Feb 03, 2026

Web of Science™ Citations

20

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3

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