iDNS3IP: Identification and Characterization of HCV NS3 Protease Inhibitory Peptides

Hui-Ju Kao(Mackay Memorial Hospital), Tzu‐Hsiang Weng(Mackay Memorial Hospital), Chia‐Hung Chen(Mackay Memorial Hospital), Chen‐Lin Yu(Mackay Memorial Hospital), Yu‐Chi Chen(Mackay Memorial Hospital), Chenchen Huang(Mackay Memorial Hospital), Kai‐Yao Huang(Mackay Memorial Hospital), Shun‐Long Weng(National Yang Ming Chiao Tung University)
International Journal of Molecular Sciences
June 3, 2025
Cited by 0Open Access
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Abstract

Hepatitis C virus (HCV) infection remains a significant global health burden, driven by the emergence of drug-resistant strains and the limited efficacy of current antiviral therapies. A promising strategy for therapeutic intervention involves targeting the NS3 protease, a viral enzyme essential for replication. In this study, we present the first computational model specifically designed to identify NS3 protease inhibitory peptides (NS3IPs). Using amino acid composition (AAC) and K-spaced amino acid pair composition (CKSAAP) features, we developed machine learning classifiers based on support vector machine (SVM) and random forest (RF), achieving accuracies of 98.85% and 97.83%, respectively, validated through 5-fold cross-validation and independent testing. To support the accessibility of the strategy, we implemented a web-based tool, iDNS3IP, which enables real-time prediction of NS3IPs. In addition, we performed feature space analyses using PCA, t-SNE, and LDA based on AAindex descriptors. The resulting visualizations showed a distinguishable clustering between NS3IPs and non-inhibitory peptides, suggesting that inhibitory activity may correlate with characteristic physicochemical patterns. This study provides a reliable and interpretable platform to assist in the discovery of therapeutic peptides and supports continued research into peptide-based antiviral strategies for drug-resistant HCV. To enhance its flexibility, the iDNS3IP web tool also incorporates a BLAST-based similarity search function, enabling users to evaluate inhibitory candidates from both predictive and homology-based perspectives.


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