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악성 췌장 병변 진단에서 인공지능기술을 이용한 초음파내시경의 응용
Application of Endoscopic Ultrasound-based Artificial Intelligence in Diagnosis of Pancreatic Malignancies 원문보기

Journal of digestive cancer research, v.12 no.1, 2024년, pp.31 - 37  

안재희 (한림대학교 의과대학 강남성심병원 소화기내과) ,  정회훈 (한림대학교 의과대학 강남성심병원 소화기내과) ,  박재근 (한림대학교 의과대학 강남성심병원 소화기내과)

Abstract AI-Helper 아이콘AI-Helper

Pancreatic cancer is a highly fatal malignancy with a 5-year survival rate of < 10%. Endoscopic ultrasound (EUS) is a useful noninvasive tool for differential diagnosis of pancreatic malignancy and treatment decision-making. However, the performance of EUS is suboptimal, and its accuracy for differe...

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참고문헌 (23)

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