医学
病态的
工作量
注释
癌症
人工智能
内科学
计算机科学
操作系统
作者
Junlin Lan,Musheng Chen,Jianchao Wang,Min Du,Zhida Wu,Hejun Zhang,Yuyang Xue,Tao Wang,Lifan Chen,Chaohui Xu,Zixin Han,Ziwei Hu,Yuanbo Zhou,Xiaogen Zhou,Tong Tong,Gang Chen
标识
DOI:10.1016/j.xcrm.2023.101004
摘要
Pathological diagnosis of gastric cancer requires pathologists to have extensive clinical experience. To help pathologists improve diagnostic accuracy and efficiency, we collected 1,514 cases of stomach H&E-stained specimens with complete diagnostic information to establish a pathological auxiliary diagnosis system based on deep learning. At the slide level, our system achieves a specificity of 0.8878 while maintaining a high sensitivity close to 1.0 on 269 biopsy specimens (147 malignancies) and 163 surgical specimens (80 malignancies). The classified accuracy of our system is 0.9034 at the slide level for 352 biopsy specimens (201 malignancies) from 50 medical centers. With the help of our system, the pathologists' average false-negative rate and average false-positive rate on 100 biopsy specimens (50 malignancies) are reduced to 1/5 and 1/2 of the original rates, respectively. At the same time, the average uncertainty rate and the average diagnosis time are reduced by approximately 22% and 20%, respectively.
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