본문 바로가기

추천 검색어

실시간 인기 검색어

학술논문

Feasibility of fully automated classification of whole slide images based on deep learning

이용수  10

영문명
발행기관
대한생리학회-대한약리학회
저자명
Kyung-Ok Cho Sung Hak Lee Hyun-Jong Jang
간행물 정보
『The Korean Journal of Physiology & Pharmacology』제24권 제1호, 89~99쪽, 전체 11쪽
주제분류
의약학 > 의학일반
파일형태
PDF
발행일자
2020.01.31
4,120

구매일시로부터 72시간 이내에 다운로드 가능합니다.
이 학술논문 정보는 (주)교보문고와 각 발행기관 사이에 저작물 이용 계약이 체결된 것으로, 교보문고를 통해 제공되고 있습니다.

1:1 문의
논문 표지

국문 초록

영문 초록

Although microscopic analysis of tissue slides has been the basis for disease diagnosis for decades, intra- and inter-observer variabilities remain issues to be resolved. The recent introduction of digital scanners has allowed for using deep learning in the analysis of tissue images because many whole slide images (WSIs) are accessible to researchers. In the present study, we investigated the possibility of a deep learning-based, fully automated, computer-aided diagnosis system with WSIs from a stomach adenocarcinoma dataset. Three different convolutional neural network architectures were tested to determine the better architecture for tissue classifier. Each network was trained to classify small tissue patches into normal or tumor. Based on the patch-level classification, tumor probability heatmaps can be overlaid on tissue images. We observed three different tissue patterns, including clear normal, clear tumor and ambiguous cases. We suggest that longer inspection time can be assigned to ambiguous cases compared to clear normal cases, increasing the accuracy and efficiency of histopathologic diagnosis by pre-evaluating the status of the WSIs. When the classifier was tested with completely different WSI dataset, the performance was not optimal because of the different tissue preparation quality. By including a small amount of data from the new dataset for training, the performance for the new dataset was much enhanced. These results indicated that WSI dataset should include tissues prepared from many different preparation conditions to construct a generalized tissue classifier. Thus, multi-national/multi-center dataset should be built for the application of deep learning in the real world medical practice.

목차

INTRODUCTION
METHODS
RESULTS
DISCUSSION

키워드

해당간행물 수록 논문

참고문헌

교보eBook 첫 방문을 환영 합니다!

신규가입 혜택 지급이 완료 되었습니다.

바로 사용 가능한 교보e캐시 1,000원 (유효기간 7일)
지금 바로 교보eBook의 다양한 콘텐츠를 이용해 보세요!

교보e캐시 1,000원
TOP
인용하기
APA

Kyung-Ok Cho,Sung Hak Lee,Hyun-Jong Jang. (2020).Feasibility of fully automated classification of whole slide images based on deep learning. The Korean Journal of Physiology & Pharmacology, 24 (1), 89-99

MLA

Kyung-Ok Cho,Sung Hak Lee,Hyun-Jong Jang. "Feasibility of fully automated classification of whole slide images based on deep learning." The Korean Journal of Physiology & Pharmacology, 24.1(2020): 89-99

결제완료
e캐시 원 결제 계속 하시겠습니까?
교보 e캐시 간편 결제