Deep Learning in Breast Cancer Imaging: A Decade of Progress and Future
Directions
- URL: http://arxiv.org/abs/2304.06662v4
- Date: Sat, 20 Jan 2024 07:10:57 GMT
- Title: Deep Learning in Breast Cancer Imaging: A Decade of Progress and Future
Directions
- Authors: Luyang Luo, Xi Wang, Yi Lin, Xiaoqi Ma, Andong Tan, Ronald Chan, Varut
Vardhanabhuti, Winnie CW Chu, Kwang-Ting Cheng, Hao Chen
- Abstract summary: Breast cancer has reached the highest incidence rate worldwide among all malignancies since 2020.
Deep learning has shown remarkable progress in breast cancer imaging analysis.
The major deep learning methods and applications on imaging-based screening, diagnosis, treatment response prediction, and prognosis are elaborated and discussed.
- Score: 28.334385132025822
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Breast cancer has reached the highest incidence rate worldwide among all
malignancies since 2020. Breast imaging plays a significant role in early
diagnosis and intervention to improve the outcome of breast cancer patients. In
the past decade, deep learning has shown remarkable progress in breast cancer
imaging analysis, holding great promise in interpreting the rich information
and complex context of breast imaging modalities. Considering the rapid
improvement in deep learning technology and the increasing severity of breast
cancer, it is critical to summarize past progress and identify future
challenges to be addressed. This paper provides an extensive review of deep
learning-based breast cancer imaging research, covering studies on mammogram,
ultrasound, magnetic resonance imaging, and digital pathology images over the
past decade. The major deep learning methods and applications on imaging-based
screening, diagnosis, treatment response prediction, and prognosis are
elaborated and discussed. Drawn from the findings of this survey, we present a
comprehensive discussion of the challenges and potential avenues for future
research in deep learning-based breast cancer imaging.
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