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Paper Title

MLAFP-XN: Leveraging neural network model for development of antifungal peptide identification tool

Authors

Kawsar Ahmed
Kawsar Ahmed
Francis M. Bui
Francis M. Bui
Li Chen
Li Chen
Md. Fahim Sultan
Md. Fahim Sultan
Md. Shazzad Hossain Shaon
Md. Shazzad Hossain Shaon
Tasmin Karim
Tasmin Karim
Md. Mamun Ali
Md. Mamun Ali
Md. Zahid Hasan
Md. Zahid Hasan
Vigneswaran Dhasarathan
Vigneswaran Dhasarathan

Article Type

Research Article

Journal

Heliyon

Research Impact Tools

Issue

Volume : 10 | Issue : 18 | Page No : e37820

Published On

September, 2024

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Abstract

Infectious fungi have been an increasing global concern in the present era. A promising approach to tackle this pressing concern involves utilizing Antifungal peptides (AFP) to develop an antifungal drug that can selectively eliminate fungal pathogens from a host with minimal toxicity to the host. Accordingly, identifying precise therapeutic antifungal peptides is crucial for developing effective drugs and treatments. This study proposed MLAFP-XN, a neural network-based strategy for accurately detecting active AFP in sequencing data to achieve this objective. In this work, eight feature extraction techniques and the XGB feature selection strategy are utilized together to present an enhanced methodology. A total of 24 classification models were evaluated, and the most effective four have been selected. Each of these models demonstrated superior accuracy on independent test sets, with respective scores of 97.93 %, 99.47 %, and 99.48 %. Our model outperforms current state of the art methods. In addition, we created a companion website to demonstrate our AFP recognition process and use SHAP to identify the most influential properties.

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