The Potential Diagnostic Application of Artificial Intelligence in Breast Cancer.

Journal: Current Pharmaceutical Design
Published:
Abstract

Breast cancer poses a significant global health challenge, necessitating improved diagnostic and treatment strategies. This review explores the role of artificial intelligence (AI) in enhancing breast cancer pathology, emphasizing risk assessment, early detection, and analysis of histopathological and mammographic data. AI platforms show promise in predicting breast cancer risks and identifying tumors up to three years before clinical diagnosis. Deep learning techniques, particularly convolutional neural networks (CNNs), effectively classify cancer subtypes and grade tumor risk, achieving accuracy comparable to expert radiologists. Despite these advancements, challenges, such as the need for high-quality datasets and integration into clinical workflows, persist. Continued research on AI technologies is essential for advancing breast cancer detection and improving patient outcomes.

Authors
Matineh Behzadi, Anahita Azinfar, Hawraa Alshakarchi, Yeganeh Khazaei, Ibrahim Gataa, Gordon Ferns, Hamid Naderi, Amir Avan, Hamid Fiuji, Masoud Rad
Relevant Conditions

Metabolic Syndrome, Breast Cancer