Medmain Research, Medmain Inc., Fukuoka, 810-0042, Japan.
Medmain Inc., Fukuoka, 810-0042, Japan.
Sci Rep. 2021 Oct 14;11(1):20486. doi: 10.1038/s41598-021-99940-3.
Gastric diffuse-type adenocarcinoma represents a disproportionately high percentage of cases of gastric cancers occurring in the young, and its relative incidence seems to be on the rise. Usually it affects the body of the stomach, and it presents shorter duration and worse prognosis compared with the differentiated (intestinal) type adenocarcinoma. The main difficulty encountered in the differential diagnosis of gastric adenocarcinomas occurs with the diffuse-type. As the cancer cells of diffuse-type adenocarcinoma are often single and inconspicuous in a background desmoplaia and inflammation, it can often be mistaken for a wide variety of non-neoplastic lesions including gastritis or reactive endothelial cells seen in granulation tissue. In this study we trained deep learning models to classify gastric diffuse-type adenocarcinoma from WSIs. We evaluated the models on five test sets obtained from distinct sources, achieving receiver operator curve (ROC) area under the curves (AUCs) in the range of 0.95-0.99. The highly promising results demonstrate the potential of AI-based computational pathology for aiding pathologists in their diagnostic workflow system.
弥漫型胃腺癌在年轻人中所占的胃癌比例过高,其相对发病率似乎呈上升趋势。它通常影响胃体,与分化型(肠型)腺癌相比,其病程更短,预后更差。在胃腺癌的鉴别诊断中,弥漫型是主要的难点。弥漫型腺癌的癌细胞在背景性间质和炎症中往往是单个的,不明显,因此常被误诊为各种非肿瘤性病变,包括胃炎或肉芽组织中见到的反应性内皮细胞。在这项研究中,我们训练了深度学习模型来对胃弥漫型腺癌进行分类。我们在五个来自不同来源的测试集上评估了这些模型,其接收者操作特征曲线(ROC)下的曲线面积(AUC)在 0.95-0.99 之间。非常有前景的结果表明,基于人工智能的计算病理学有可能帮助病理学家在其诊断工作流程系统中辅助诊断。