病理
淋巴
癌症检测
癌症
医学
解剖病理学
内科学
免疫组织化学
作者
Yi Pan,Hongtian Dai,Shuhao Wang,Lang Wang,Qiting Li,Wenmiao Wang,Jiangtao Li,Dan Qi,Zhaoyang Yang,Jia Jia,Yaxi Wang,Qing Fang,Lin Li,Zhou Wei-xun,Zhigang Song,Shuangmei Zou
出处
期刊:Pathobiology
[S. Karger AG]
日期:2024-05-08
卷期号:91 (5): 345-358
摘要
Introduction: Lymph node metastasis is one of the most common ways of tumour metastasis. The presence or absence of lymph node involvement influences the cancer’s stage, therapy, and prognosis. The integration of artificial intelligence systems in the histopathological diagnosis of lymph nodes after surgery is urgent. Methods: Here, we propose a pan-origin lymph node cancer metastasis detection system. The system is trained by over 700 whole-slide images (WSIs) and is composed of two deep learning models to locate the lymph nodes and detect cancers. Results: It achieved an area under the receiver operating characteristic curve (AUC) of 0.958, with a 95.2% sensitivity and 72.2% specificity, on 1,402 WSIs from 49 organs at the National Cancer Center, China. Moreover, we demonstrated that the system could perform robustly with 1,051 WSIs from 52 organs from another medical centre, with an AUC of 0.925. Conclusion: Our research represents a step forward in a pan-origin lymph node metastasis detection system, providing accurate pathological guidance by reducing the probability of missed diagnosis in routine clinical practice.
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