Breast cancer detection using artificial intelligence techniques: A systematic literature review
Ali Bou Nassif, Manar Abu Talib, Qassim Nasir, Yaman Afadar, Omar, Elgendy

TL;DR
This paper systematically reviews the use of artificial intelligence and machine learning, especially deep learning, in breast cancer detection through genetic and histopathological imaging, highlighting recent advances and future directions.
Contribution
It provides a comprehensive overview of AI techniques applied to breast cancer detection and offers recommendations for future research in this field.
Findings
Deep learning improves accuracy in breast cancer detection.
Histopathological imaging is the most common diagnostic approach.
AI techniques enhance early diagnosis and treatment planning.
Abstract
Cancer is one of the most dangerous diseases to humans, and yet no permanent cure has been developed for it. Breast cancer is one of the most common cancer types. According to the National Breast Cancer foundation, in 2020 alone, more than 276,000 new cases of invasive breast cancer and more than 48,000 non-invasive cases were diagnosed in the US. To put these figures in perspective, 64% of these cases are diagnosed early in the disease's cycle, giving patients a 99% chance of survival. Artificial intelligence and machine learning have been used effectively in detection and treatment of several dangerous diseases, helping in early diagnosis and treatment, and thus increasing the patient's chance of survival. Deep learning has been designed to analyze the most important features affecting detection and treatment of serious diseases. For example, breast cancer can be detected using genes…
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