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    Multiclass classification of oral mucosal lesions by deep learning from clinical images without performing any restrictions

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    1-s2.0-S1746809425008481-main.pdf (2.004Mb)
    Date
    2026-01-31
    Author
    Redondo, Alejandro
    Ivaylova, Katerina
    Bachiller, Margarita
    Rincón, Mariano
    Cuadra, José Manuel
    Tamimi, Faleh
    López-Cedrún, José Luis
    Diniz-Freitas, Márcio
    Lago-Méndez, Lucía
    Rubín-Roger, Guillermo
    Torres, Jesús
    Bagán, Leticia
    Hernández, Gonzalo
    López-Pintor, Rosa María
    ...show more authors ...show less authors
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    Abstract
    Oral cancer is a frequently malignant tumor that can be detected during an oral examination. Unfortunately, it is often diagnosed in advanced stages, which leads to low survival rates of about 50% at five years. Due to the low survival rate, it is crucial to develop automated systems that allow the classification of oral lesions according to their severity, aiding in the early diagnosis of oral cancer.This study aims to investigate the effectiveness of using clinical images and deep learning based models to perform a multiclass classification of oral mucosal lesions in color photographs taken without following any acquisition protocol. The classification differentiated four classes: malignant, potentially malignant, benign and healthy. The dataset included a total of 3246 images from 1013 patients, with 40 different categories of oral lesions, including healthy oral mucosa. The images showed different areas of the oral cavity and were captured from different perspectives by diverse dentists and maxillofacial surgeons in the practice.For the classification, different deep learning architectures were applied and compared, from the best known convolutional neural networks (CNN) and skip connection networks (SCN), to more innovative architectures such as visual transformers and a recent hybrid architecture, ConvNeXt v2. The ConvNeXt v2 Tiny architecture, with 85.53% accuracy, 85.02% precision, 85.50% recall, 84.92% F1-score, and 97.40% ROC AUC for an input image size of 354 × 354 pixels, outperformed the other architectures on the same database. The present model improved on previous proposals by considering a greater number of oral lesions and output classes.
    URI
    https://www.sciencedirect.com/science/article/pii/S1746809425008481
    DOI/handle
    http://dx.doi.org/10.1016/j.bspc.2025.108337
    http://hdl.handle.net/10576/68828
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    • Dental Medicine Research [‎471‎ items ]

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