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Automated engineered-stone silicosis screening and staging using Deep Learning with X-rays

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URI: http://hdl.handle.net/10498/36175

DOI: 10.1016/j.compbiomed.2025.110153

ISSN: 1879-0534

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Autor/es
Priego Torres, Blanca MaríaAutoridad UCA; Sánchez Morillo, DanielAutoridad UCA; Khalili Khalili, EbrahimAutoridad UCA; Conde-Sánchez, Miguel Ángel; Garcia Gámez, Andrés; León Jiménez, Antonio
Fecha
2025-04-17
Departamento/s
Ingeniería en Automática, Electrónica, Arquitectura y Redes de Computadores
Fuente
Computers in Biology and Medicine - 2025, Vol. 191 (110153) pp. 1-15
Resumen
Silicosis, a debilitating occupational lung disease caused by inhaling crystalline silica, continues to be a significant global health issue, especially with the increasing use of engineered stone (ES) surfaces containing high silica content. Traditional diagnostic methods, dependent on radiological interpretation, have low sensitivity, especially, in the early stages of the disease, and present variability between evaluators. This study explores the efficacy of deep learning techniques in automating the screening and staging of silicosis using chest X-ray images. Utilizing a comprehensive dataset, obtained from the medical records of a cohort of workers exposed to artificial quartz conglomerates, we implemented a preprocessing stage for rib-cage segmentation, followed by classification using state-of-the-art deep learning models. The segmentation model exhibited high precision, ensuring accurate identification of thoracic structures. In the screening phase, our models achieved near-perfect accuracy, with ROC AUC values reaching 1.0, effectively distinguishing between healthy individuals and those with silicosis. The models demonstrated remarkable precision in the staging of the disease. Nevertheless, differentiating between simple silicosis and progressive massive fibrosis, the evolved and complicated form of the disease, presented certain difficulties, especially during the transitional period, when assessment can be significantly subjective. Notwithstanding these difficulties, the models achieved an accuracy of around 81% and ROC AUC scores nearing 0.93. This study highlights the potential of deep learning to generate clinical decision support tools to increase the accuracy and effectiveness in the diagnosis and staging of silicosis, whose early detection would allow the patient to be moved away from all sources of occupational exposure, therefore constituting a substantial advancement in occupational health diagnostics.
Materias
Silicosis; Deep Learning; Chest X-Ray; Progressive Massive Fibrosis; Simple Silicosis; Engineered Stone
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  • Artículos Científicos [11595]
  • Articulos Científicos Ing. Sis. Aut. [180]
Attribution-NonCommercial-NoDerivatives 4.0 Internacional
Esta obra está bajo una Licencia Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 Internacional

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