作者
Agaba Ameh Joseph, Mohammed Abdullahi, Sahalu Balarabe Junaidu, Hayatu Hassan Ibrahim, Haruna Chiroma
发表日期
2022/5/1
期刊
Intelligent Systems with Applications
卷号
14
页码范围
200066
出版商
Elsevier
简介
Breast cancer (BC) classification has become a point of concern within the field of biomedical informatics in the health care sector in recent years. This is because it is the second-largest cause of cancer-related fatalities among women. The medical field has attracted the attention of researchers in applying machine learning techniques to the detection, and monitoring of life-threatening diseases such as breast cancer (BC). Proper detection and monitoring contribute immensely to the survival of BC patients, which is largely dependent on the analysis of pathological images. Automatic detection of BC based on pathological images and the use of a Computer-Aided Diagnosis (CAD) system allow doctors to make a more reliable decision. Recently, Deep Learning algorithms like Convolution Neural Network have been proven to be reliable in detecting BC targets from pathological images. Several research efforts have …
引用总数