Journal ArticleOpen Access
MultiNet: A deep neural network approach for detecting breast cancer through multi-scale feature fusion
Authors
Author Affiliations
Mawlana Bhashani Science and Technology University, National Institute of Textile Engineering and Research, Bangladesh University of Textiles
Published InJournal of King Saud University - Computer and Information Sciences
Year2021
Citations83
Abstract
Breast cancer diagnosis from biopsy tissue images conducted manually by pathologists is costly, time-consuming, and disagreements among specialists. Nowadays, the advancement of the Computer-Aided Diagnosis (CAD) system allows pathologists to identify breast cancer more reliably and quickly.For this reason, interest in CAD-based deep learning models has been increased significantly. In this study, we propose a “MultiNet” framework based on the transfer learning concept to classify different breast cancer types using two publicly available datasets that include 7909 and 400 microscopic breast images, respectively. The proposed “MultiNet” framework is designed to provide fast and accurate diagnostics for breast cancer with binary classification (benign and malignant) and multi-class classification (benign, in situ, invasive, and normal). In the proposed framework, features from microscopy…
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