Title of article :
A Technical Review of Convolutional Neural Network-Based Mammographic Breast Cancer Diagnosis
Author/Authors :
Zou, Lian Shenzhen Institutes of Advanced Technology - Chinese Academy of Sciences - Shenzhen, China , Yu, Shaode Shenzhen Institutes of Advanced Technology - Chinese Academy of Sciences - Shenzhen, China , Meng, Tiebao Department of Medical Imaging - Sun Yat-sen University Cancer Center - Guangzhou, China , Zhang, Zhicheng Shenzhen Institutes of Advanced Technology - Chinese Academy of Sciences - Shenzhen, China , Liang, Xiaokun Shenzhen Institutes of Advanced Technology - Chinese Academy of Sciences - Shenzhen, China , Xie, Yaoqin Shenzhen Institutes of Advanced Technology - Chinese Academy of Sciences - Shenzhen, China
Abstract :
This study reviews the technique of convolutional neural network (CNN) applied in a specific field of mammographic breast
cancer diagnosis (MBCD). It aims to provide several clues on how to use CNN for related tasks. MBCD is a long-standing
problem, and massive computer-aided diagnosis models have been proposed. ,e models of CNN-based MBCD can be broadly
categorized into three groups. One is to design shallow or to modify existing models to decrease the time cost as well as the number
of instances for training; another is to make the best use of a pretrained CNN by transfer learning and fine-tuning; the third is to
take advantage of CNN models for feature extraction, and the differentiation of malignant lesions from benign ones is fulfilled by
using machine learning classifiers. This study enrolls peer-reviewed journal publications and presents technical details and pros
and cons of each model. Furthermore, the findings, challenges and limitations are summarized and some clues on the future work
are also given. Conclusively, CNN-based MBCD is at its early stage, and there is still a long way ahead in achieving the ultimate
goal of using deep learning tools to facilitate clinical practice. ,is review benefits scientific researchers, industrial engineers, and
those who are devoted to intelligent cancer diagnosis.
Keywords :
Mammographic , Network-Based , Convolutional , CNN
Journal title :
Computational and Mathematical Methods in Medicine