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基于深度学习的计算机诊断算法在检测胃腺癌淋巴结转移中的应用

The Use of Deep Learning-Based Computer Diagnostic Algorithm for Detection of Lymph Node Metastases of Gastric Adenocarcinoma.

作者信息

Matsushima Jun, Sato Tamotsu, Ohnishi Takashi, Yoshimura Yuichiro, Mizutani Hiroyuki, Koto Shinichiro, Ikeda Jun-Ichiro, Kano Masayuki, Matsubara Hisahiro, Hayashi Hideki

机构信息

Department of Pathology, Saitama Medical Center, Dokkyo Medical University, Saitama, Japan.

Center for Frontier Medical Engineering, Chiba University, Chiba, Japan.

出版信息

Int J Surg Pathol. 2023 Sep;31(6):975-981. doi: 10.1177/10668969221113475. Epub 2022 Jul 27.

Abstract

The diversifying modalities of treatment for gastric cancer raise urgent demands for the rapid and precise diagnosis of metastases in regional lymph nodes, thereby significantly impact the workload of pathologists. Meanwhile, the recent advent of whole-slide scanners and deep-learning techniques have enabled the computer-assisted analysis of histopathological images, which could help to alleviate this impact. Thus, we developed a deep learning-based diagnostic algorithm to detect lymph node metastases of gastric adenocarcinoma and evaluated its performance. We randomly selected 20 patients with gastric adenocarcinoma who underwent surgery as definitive treatment and were found to be node metastasis-positive. HEMATOXYLIN-eosin (HE) stained glass slides, including a total of 51 metastasis-positive nodes, were retrieved from the specimens of these cases. Other slides with 776 metastasis-negative nodes were also retrieved from other twenty cases with the same disease that were diagnosed as metastasis-negative by the final pathological examinations. All glass slides were digitized using a whole-slide scanner. A deep-learning algorithm to detect metastases was developed using the data in which metastasis-positive parts of the images were annotated by a well-trained pathologist, and its performance in detecting metastases was evaluated. Cross-validation analysis indicated an area of 0.9994 under the receiver operating characteristic curve. Free-response receiver operating characteristic curve (FROC) analysis indicated a sensitivity of 1.00 with three false positives. Further evaluation using an independent dataset also showed similar level of accuracies. This deep learning-based diagnosis-aid system is a promising tool that can assist pathologists involved in gastric cancer care and reduce their workload.

摘要

胃癌治疗方式的多样化对区域淋巴结转移的快速精确诊断提出了迫切需求,从而显著增加了病理学家的工作量。与此同时,全玻片扫描仪和深度学习技术的最新出现使得对组织病理学图像进行计算机辅助分析成为可能,这有助于减轻这种影响。因此,我们开发了一种基于深度学习的诊断算法来检测胃腺癌的淋巴结转移,并评估其性能。我们随机选择了20例行手术作为确定性治疗且被发现有淋巴结转移阳性的胃腺癌患者。从这些病例的标本中获取苏木精-伊红(HE)染色的玻片,共包括51个转移阳性淋巴结。还从另外20例经最终病理检查诊断为转移阴性的同疾病例中获取了776个转移阴性淋巴结的其他玻片。所有玻片均使用全玻片扫描仪进行数字化处理。使用经过良好训练的病理学家对图像中转移阳性部分进行标注的数据开发了一种检测转移的深度学习算法,并评估其在检测转移方面的性能。交叉验证分析表明受试者操作特征曲线下面积为0.9994。自由响应受试者操作特征曲线(FROC)分析表明灵敏度为1.00,假阳性为3个。使用独立数据集的进一步评估也显示了相似的准确率水平。这种基于深度学习的诊断辅助系统是一种很有前景的工具,可以帮助参与胃癌治疗的病理学家并减轻他们的工作量。

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