The application of traditional machine learning and deep learning techniques in mammography: a review

Breast cancer, the most prevalent malignant tumor among women, poses a significant threat to patients’ physical and mental well-being. Recent advances in early screening technology have facilitated the early detection of an increasing number of breast cancers, resulting in a substantial improvement...

Full description

Saved in:
Bibliographic Details
Published inFrontiers in oncology Vol. 13; p. 1213045
Main Authors Gao, Ying’e, Lin, Jingjing, Zhou, Yuzhuo, Lin, Rongjin
Format Journal Article
LanguageEnglish
Published Frontiers Media S.A 11.08.2023
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:Breast cancer, the most prevalent malignant tumor among women, poses a significant threat to patients’ physical and mental well-being. Recent advances in early screening technology have facilitated the early detection of an increasing number of breast cancers, resulting in a substantial improvement in patients’ overall survival rates. The primary techniques used for early breast cancer diagnosis include mammography, breast ultrasound, breast MRI, and pathological examination. However, the clinical interpretation and analysis of the images produced by these technologies often involve significant labor costs and rely heavily on the expertise of clinicians, leading to inherent deviations. Consequently, artificial intelligence(AI) has emerged as a valuable technology in breast cancer diagnosis. Artificial intelligence includes Machine Learning(ML) and Deep Learning(DL). By simulating human behavior to learn from and process data, ML and DL aid in lesion localization reduce misdiagnosis rates, and improve accuracy. This narrative review provides a comprehensive review of the current research status of mammography using traditional ML and DL algorithms. It particularly highlights the latest advancements in DL methods for mammogram image analysis and offers insights into future development directions.
Bibliography:ObjectType-Article-2
SourceType-Scholarly Journals-1
ObjectType-Feature-3
content type line 23
ObjectType-Review-1
These authors contributed equally to this work and share first authorship
Reviewed by: Aimilia Gastounioti, Washington University in St. Louis, United States
Edited by: Quing Zhu, Washington University in St. Louis, United States
ISSN:2234-943X
2234-943X
DOI:10.3389/fonc.2023.1213045