- Author:
John BAEK
1
;
Jaeil KIM
;
Hye Jung KIM
;
Jung Hyun YOON
;
Ho Yong PARK
;
Jeeyeon LEE
;
Byeongju KANG
;
Iliya ZAKIRYAROV
;
Askhat KULTAEV
;
Bolat SAKTASHEV
;
Won Hwa KIM
Author Information
- Publication Type:Review Article
- From: Journal of the Korean Society of Radiology 2025;86(2):216-226
- CountryRepublic of Korea
- Language:English
- Abstract: Breast cancer is the most common cancer in women worldwide, and its early detection is critical for improving survival outcomes. As a diagnostic and screening tool, mammography can be less effective owing to the masking effect of fibroglandular tissue, but breast US has good sensitivity even in dense breasts. However, breast US is highly operator dependent, highlighting the need for artificial intelligence (AI)-driven solutions. Unlike other modalities, US is performed using a handheld device that produces a continuous real-time video stream, yielding 12000–48000 frames per examination. This can be significantly challenging for AI development and requires real-time AI inference capabilities. In this review, we classified AI solutions as computer-aided diagnosis and computer-aided detection to facilitate a functional understanding and review commercial software supported by clinical evidence.In addition, to bridge healthcare gaps and enhance patient outcomes in geographically under resourced areas, we propose a novel framework by reviewing the existing AI-based triage workflows including mobile ultrasound.