Autores
Sossa Azuela Juan Humberto
Título Cross-Domain Transfer Learning Architecture for Microcalcification Cluster Detection Using the MEXBreast Multiresolution Mammography Dataset
Tipo Revista
Sub-tipo JCR
Descripción Mathematics
Resumen Microcalcification clusters (MCCs) are key indicators of breast cancer, with studies showing that approximately 50% of mammograms with MCCs confirm a cancer diagnosis. Early detection is critical, as it ensures a five-year survival rate of up to 99%. However, MCC detection remains challenging due to their features, such as small size, texture, shape, and impalpability. Convolutional neural networks (CNNs) offer a solution for MCC detection. Nevertheless, CNNs are typically trained on single-resolution images, limiting their generalizability across different image resolutions. We propose a CNN trained on digital mammograms with three common resolutions: 50, 70, and 100 (Formula presented.) m. The architecture processes individual 1 cm2 patches extracted from the mammograms as input samples and includes a MobileNetV2 backbone, followed by a flattening layer, a dense layer, and a sigmoid activation function. This architecture was trained to detect MCCs using patches extracted from the INbreast database, which has a resolution of 70 (Formula presented.) m, and achieved an accuracy of 99.84%. We applied transfer learning (TL) and trained on 50, 70, and 100 (Formula presented.) m resolution patches from the MEXBreast database, achieving accuracies of 98.32%, 99.27%, and 89.17%, respectively. For comparison purposes, models trained from scratch, without leveraging knowledge from the pretrained model, achieved 96.07%, 99.20%, and 83.59% accuracy for 50, 70, and 100 (Formula presented.) m, respectively. Results demonstrate that TL improves MCC detection across resolutions by reusing pretrained knowledge. © 2025 by the authors.
Observaciones DOI 10.3390/math13152422
Lugar Basel
País Suiza
No. de páginas Article number 2422
Vol. / Cap. v. 13 no. 15
Inicio 2025-07-28
Fin
ISBN/ISSN