Authors
Muhammad Haider Zeb, Feras Al-Obeidat, Abdallah Tubaishat, Fawad Qayum, Ahsan Fazeel, Muhammad Amin
Publication date
2023/7/9
Journal
Neural Computing and Applications
Pages
1-15
Publisher
Springer London
Description
One of the leading causes of mortality for women worldwide, both in developing and developed economies, is breast cancer. The gold standard for diagnosing cancer is still histological diagnosis, despite major advances in medical understanding. Admittedly, due to the sophistication of histopathology images and the significant increase in workload, this process takes a long time. Therefore, this field requires the development of automated and precise histopathology image analysis tools. Using deep learning, we proposed a system for denoising, detecting, and classifying breast cancer using deep learning architectures that are designed to solve certain related problems. CNN-based architectures are used to extract features from images, which are then put into a fully connected layer for the classification of malignant and benign cells, as well as their subclasses, in the suggested framework. The effectiveness of the …
Scholar articles
MH Zeb, F Al-Obeidat, A Tubaishat, F Qayum, A Fazeel… - Neural Computing and Applications, 2023