Journal ArticleOpen Access
Segmentation for mammography classification utilizing deep convolutional neural network
Authors
Author Affiliations
Stamford University Bangladesh, Jahangirnagar University, King Saud University, American International University-Bangladesh, ...
Published InBMC Medical Imaging
Year2024
Citations19
Abstract
BACKGROUND: Mammography for the diagnosis of early breast cancer (BC) relies heavily on the identification of breast masses. However, in the early stages, it might be challenging to ascertain whether a breast mass is benign or malignant. Consequently, many deep learning (DL)-based computer-aided diagnosis (CAD) approaches for BC classification have been developed. METHODS: Recently, the transformer model has emerged as a method for overcoming the constraints of convolutional neural networks (CNN). Thus, our primary goal was to determine how well an improved transformer model could distinguish between benign and malignant breast tissues. In this instance, we drew on the Mendeley data repository's INbreast dataset, which includes benign and malignant breast types. Additionally, the segmentation anything model (SAM) method was used…
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