Enhancing breast cancer histopathological image classification using attention-based high order covariance pooling

Muhammad Waqas, Amr Ahmed, Tomas Maul, Iman Yi Liao

Published: 2024, Last Modified: 27 Feb 2026Neural Comput. Appl. 2024EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Breast cancer, the most common cancer affecting female patients, presents serious challenges for proper detection. Although computer-aided diagnostic techniques have progressed, their accuracy and efficacy remain limited. To overcome these challenges, we introduce DHA-Net, a new deep learning system that combines an effective attention module (EAM) and a high-order pooling layer with a ResNet-18 backbone. DHA-Net is tested using three well-known breast cancer histopathology image datasets: BreakHis, BACH2018, and a closely related Kaggle-Breast cancer histopathology dataset. Our experiments show that DHA-Net not only improves on existing state-of-the-art approaches, but significantly outperforms them in classifying breast cancer images. This work emphasizes the novel combination of an EAM with high-order pooling, demonstrating DHA-Net’s potential to improve diagnostic accuracy and serve as a more effective tool for medical imaging applications.
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