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Assist. mohamed mostafa mohamed :: Publications:

Title:
Enhanced prediction of hemolytic activity in antimicrobial peptides using deep learning-based sequence analysis
Authors: Ibrahim Abdelbaky, Mohamed Elhakeem, Hilal Tayara , Elsayed Badr , Mustafa Abdul Salam
Year: 2024
Keywords: Antimicrobial peptide; Deep learning; Hemolytic activity; Therapeutic peptides.
Journal: BMC Bioinformatics
Volume: 25
Issue: 1
Pages: 368
Publisher: Not Available
Local/International: International
Paper Link:
Full paper mohamed mostafa mohamed_s12859-024-05983-4.pdf
Supplementary materials Not Available
Abstract:

Antimicrobial peptides (AMPs) are a promising class of antimicrobial drugs due to their broad-spectrum activity against microorganisms. However, their clinical application is limited by their potential to cause hemolysis, the destruction of red blood cells. To address this issue, we propose a deep learning model based on convolutional neural networks (CNNs) for predicting the hemolytic activity of AMPs. Peptide sequences are represented using one-hot encoding, and the CNN architecture consists of multiple convolutional and fully connected layers. The model was trained on six different datasets: HemoPI-1, HemoPI-2, HemoPI-3, RNN-Hem, Hlppredfuse, and AMP-Combined, achieving Matthew's correlation coefficients of 0.9274, 0.5614, 0.6051, 0.6142, 0.8799, and 0.7484, respectively. Our model outperforms previously reported methods and can facilitate the development of novel AMPs with reduced hemolytic activity, which is crucial for their therapeutic use in treating bacterial infections.

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