Segmentation Techniques Applied to CNNs for Cervical Cancer Classification
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Ortiz González, Ana; Martínez España, Raquel; Morales García, Juan; Imbernón Tudela, Baldomero; Martínez Más, José; [et al.]Fecha
2025-04-21Disciplina/s
Ingeniería, Industria y ConstrucciónMedicina
Materia/s
Artificial IntelligenceDeep Learning
Artificial Vision
Supervised Classification
Convolutional Neural Networks
Segmentation
Cervical Cancer
Papanicolaou smear
Resumen
Cervical cancer continues to be a significant global health issue, ranking as the fourth most prevalent cancer affecting women. Enhancing population screening programs by refining the examination of cervical samples conducted by skilled pathologists offers a compelling alternative for early detection of this disease. Deep Learning facilitates the development of automatic classification models to aid experts in this task. However, it is increasingly important to bring explainability to the model both to understand how the network learns to identify pathology and to bring confidence to the diagnosis. In this paper, we design an automatic segmentation masks for the classification of cervicovaginal cell images. This automatic segmentation is combined in a classification model that allows the models to improve their performance thanks to the morphological information provided by the combined segmentation in a Global Average Pooling layer with the convolutional network analysis of the origin...





