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A systematic survey of deep learning in breast cancer

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journal contribution
posted on 2021-11-04, 10:59 authored by Xiang Yu, Qinghua Zhou, Shuihua Wang, Yu-Dong Zhang
In recent years, we witnessed a speeding development of deep learning in computer vision fields like categorization, detection, and semantic segmentation. Within several years after the emergence of AlexNet, the performance of deep neural networks has already surpassed human being experts in certain areas and showed great potential in applications such as medical image analysis. The development of automated breast cancer detection systems that integrate deep learning has received wide attention from the community. Breast cancer, a major killer of females that results in millions of deaths, can be controlled even be cured given that it is detected at an early stage with sophisticated systems. In this paper, we reviewed breast cancer diagnosis, detection, and segmentation computer-aided (CAD) systems based on state-of-the-art deep convolutional neural networks. The available data sets also indirectly determine CAD systems' performance, so we introduced and discussed the details of public data sets. The challenges remaining in CAD systems for breast cancer are discussed at the end of this paper. The highlights of this survey mainly come from three following aspects. First, we covered a wide range of the basics of breast cancer from imaging modalities to popular databases in the community; Second, we presented the key elements in deep learning to form the compactness for methods mentioned in reviewed papers; Third and lastly, the summative details in each reviewed paper are provided so that interested readers can have a refined version of these works without referring to original papers. Therefore, this systematic survey suits readers with varied backgrounds and will be beneficial to them.

Funding

Royal Society International Exchanges Cost Share Award. Grant Number: RP202G0230

Hope Foundation for Cancer Research, UK. Grant Number: RM60G0680

Medical Research Council Confidence in Concept Award, UK. Grant Number: MC_PC_17171

History

Author affiliation

School of Computing and Mathematical Sciences, University of Leicester

Version

  • AM (Accepted Manuscript)

Published in

International Journal of Intelligent Systems

Publisher

Wiley

issn

0884-8173

eissn

1098-111X

Acceptance date

2021-08-03

Copyright date

2021

Available date

2022-08-20

Language

English