Machine learning and deep learning techniques for breast cancer diagnosis and classification: a comprehensive review of medical imaging studies
- 06.06.2023
- Review
- Verfasst von
- Mehran Radak
- Haider Yabr Lafta
- Hossein Fallahi
- Erschienen in
- Journal of Cancer Research and Clinical Oncology | Ausgabe 12/2023
Abstract
Background
Breast cancer is a major public health concern, and early diagnosis and classification are critical for effective treatment. Machine learning and deep learning techniques have shown great promise in the classification and diagnosis of breast cancer.
Purpose
In this review, we examine studies that have used these techniques for breast cancer classification and diagnosis, focusing on five groups of medical images: mammography, ultrasound, MRI, histology, and thermography. We discuss the use of five popular machine learning techniques, including Nearest Neighbor, SVM, Naive Bayesian Network, DT, and ANN, as well as deep learning architectures and convolutional neural networks.
Conclusion
Our review finds that machine learning and deep learning techniques have achieved high accuracy rates in breast cancer classification and diagnosis across various medical imaging modalities. Furthermore, these techniques have the potential to improve clinical decision-making and ultimately lead to better patient outcomes.
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- Titel
- Machine learning and deep learning techniques for breast cancer diagnosis and classification: a comprehensive review of medical imaging studies
- Verfasst von
-
Mehran Radak
Haider Yabr Lafta
Hossein Fallahi
- Publikationsdatum
- 06.06.2023
- Verlag
- Springer Berlin Heidelberg
- Erschienen in
-
Journal of Cancer Research and Clinical Oncology / Ausgabe 12/2023
Print ISSN: 0171-5216
Elektronische ISSN: 1432-1335 - DOI
- https://doi.org/10.1007/s00432-023-04956-z
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