Abstract
Background: Managing chronic viral infections like Hepatitis C virus (HCV) often requires expensive healthcare resources and highly qualified personnel,
making e cient diagnostic methods essential. Despite remarkable therapeutic advancements for the treatment of HCV, several challenges remain, such as improved fast diagnostic procedures allowing universal screening.
Objective: We propose a novel approach that combines Near-Infrared Spectroscopy (NIRS) and clinical data with machine learning (ML) to improve Hepatitis C Virus (HCV) detection in serum samples.
Methods: NIRS offers a fast, non-destructive, and residue-free alternative to traditional diagnostic methods, while ML models enable feature selection and
predictive analysis. We applied L1-regularized Logistic Regression (L1-LR) to identify the most informative wavelengths for HCV detection within the 1,000–
2,500 nm range, and then integrated these spectral features with routine clinical markers using a Random Forest (RF) model. Our dataset comprised 137 serum
samples from38 patients, each represented by a NIRS spectrumand clinical data from blood tests.
Results: After preprocessing with Standard Normal Variate (SNV) correction and downsampling, the best-performing RF model, which combined NIRS features
and clinical data, achieved an accuracy of 72.2% and an AUC-ROC of 0.850, outperforming models using only clinical or spectral data. Feature importance
analysis highlighted specific wavelengths near 1,150 nm, 1,410 nm, and 1,927 nm, associated with water molecular states and liver function biomarkers (GPT,
GOT, GGT), reinforcing the biological relevance of this approach
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Frontiers in Medicine
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This repository presents a machine learning approach for improving Hepatitis C Virus (HCV) detection by integrating Near-Infrared Spectroscopy (NIRS) of serum samples with routine clinical biomarkers.
The workflow leverages L1-regularized models for spectral feature selection and Random Forest classifiers for multimodal prediction, enabling a rapid, non-invasive, and resource-efficient diagnostic strategy with potential applications in large-scale screening programs.
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Pérez-Gómez E, Gómez J, Gonzalo J, Salgüero S, Riado D, Casas ML, Gutiérrez ML, Jaime E, Pérez-Martínez E, García-Carretero R, Ramos J, Fernández-Rodríguez C, Catalá M, Martino L, Barquero-Pérez Ó. Exploratory integration of near-infrared spectroscopy with clinical data: a machine learning approach for HCV detection in serum samples. Front Med (Lausanne). 2025 Jun 9;12:1596476. doi: 10.3389/fmed.2025.1596476. PMID: 40552174; PMCID: PMC12183225.
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