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http://hdl.handle.net/10553/119299
Título: | Neural Networks-Based On-Site Dermatologic Diagnosis through Hyperspectral Epidermal Images | Autores/as: | La Salvia, Marco Torti, Emanuele León Martín, Sonia Raquel Fabelo Gómez, Himar Antonio Ortega, Samuel Balea Fernandez, Francisco Javier Martínez Vega, Beatriz Castaño González, Irene Almeida Martín, Pablo Julio Carretero Hernández, Gregorio Hernández, Javier A. Marrero Callicó, Gustavo Iván Leporati, Francesco |
Clasificación UNESCO: | 3314 Tecnología médica 320106 Dermatología |
Palabras clave: | Skin cancer Hyperspectral imaging Deep learning Disease diagnosis High-performance computing |
Fecha de publicación: | 2022 | Proyectos: | Talent Imágenes Hiperespectrales Para Aplicaciones de Inteligencia Artificial | Publicación seriada: | Sensors (Switzerland) | Resumen: | Cancer originates from the uncontrolled growth of healthy cells into a mass. Chromophores, such as hemoglobin and melanin, characterize skin spectral properties, allowing the classification of lesions into different etiologies. Hyperspectral imaging systems gather skin-reflected and transmitted light into several wavelength ranges of the electromagnetic spectrum, enabling potential skin-lesion differentiation through machine learning algorithms. Challenged by data availability and tiny inter and intra-tumoral variability, here we introduce a pipeline based on deep neural networks to diagnose hyperspectral skin cancer images, targeting a handheld device equipped with a low-power graphical processing unit for routine clinical testing. Enhanced by data augmentation, transfer learning, and hyperparameter tuning, the proposed architectures aim to meet and improve the well-known dermatologist-level detection performances concerning both benign-malignant and multiclass classification tasks, being able to diagnose hyperspectral data considering real-time constraints. Experiments show 87% sensitivity and 88% specificity for benign-malignant classification and specificity above 80% for the multiclass scenario. AUC measurements suggest classification performance improvement above 90% with adequate thresholding. Concerning binary segmentation, we measured skin DICE and IOU higher than 90%. We estimated 1.21 s, at most, consuming 5 Watts to segment the epidermal lesions with the U-Net++ architecture, meeting the imposed time limit. Hence, we can diagnose hyperspectral epidermal data assuming real-time constraints. | URI: | http://hdl.handle.net/10553/119299 | ISSN: | 1424-8220 | DOI: | 10.3390/s22197139 | Fuente: | Sensors (Switzerland) [ISSN 1424-8220], v. 22 (19), 7139, (Septiembre 2022) |
Colección: | Artículos |
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