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深度学习检测到早期食管癌浸润区和非浸润区之间的组织学差异。

Deep learning detected histological differences between invasive and non-invasive areas of early esophageal cancer.

作者信息

Urabe Akiko, Adachi Masahiro, Sakamoto Naoya, Kojima Motohiro, Ishikawa Shumpei, Ishii Genichiro, Yano Tomonori, Sakashita Shingo

机构信息

Department of Pathology and Clinical Laboratories, National Cancer Center Hospital East, Kashiwa, Chiba, Japan.

Department of Gastroenterology and Endoscopy, National Cancer Center Hospital East, Kashiwa, Chiba, Japan.

出版信息

Cancer Sci. 2025 Mar;116(3):824-834. doi: 10.1111/cas.16426. Epub 2024 Dec 18.

Abstract

The depth of invasion plays a critical role in predicting the prognosis of early esophageal cancer, but the reasons behind invasion and the changes occurring in invasive areas are still not well understood. This study aimed to explore the morphological differences between invasive and non-invasive areas in early esophageal cancer specimens that have undergone endoscopic submucosal dissection (ESD), using artificial intelligence (AI) to shed light on the underlying mechanisms. In this study, data from 75 patients with esophageal squamous cell carcinoma (ESCC) were analyzed and endoscopic assessments were conducted to determine submucosal (SM) invasion. An AI model, specifically a Clustering-constrained Attention Multiple Instance Learning model (CLAM), was developed to predict the depth of cancer by training on surface histological images taken from both invasive and non-invasive regions. The AI model highlighted specific image portions, or patches, which were further examined to identify morphological differences between the two types of areas. The 256-pixel AI model demonstrated an average area under the receiver operating characteristic curve (AUC) value of 0.869 and an accuracy (ACC) of 0.788. The analysis of the AI-identified patches revealed that regions with invasion (SM) exhibited greater vascularity compared with non-invasive regions (epithelial). The invasive patches were characterized by a significant increase in the number and size of blood vessels, as well as a higher count of red blood cells (all with p-values <0.001). In conclusion, this study demonstrated that AI could identify critical differences in surface histopathology between non-invasive and invasive regions, particularly highlighting a higher number and larger size of blood vessels in invasive areas.

摘要

浸润深度在预测早期食管癌预后方面起着关键作用,但浸润背后的原因以及浸润区域发生的变化仍未得到充分理解。本研究旨在探讨接受内镜黏膜下剥离术(ESD)的早期食管癌标本中浸润区与非浸润区的形态学差异,利用人工智能(AI)来阐明潜在机制。在本研究中,分析了75例食管鳞状细胞癌(ESCC)患者的数据,并进行了内镜评估以确定黏膜下(SM)浸润情况。通过对取自浸润区和非浸润区的表面组织学图像进行训练,开发了一种AI模型,即聚类约束注意力多实例学习模型(CLAM),以预测癌症深度。该AI模型突出显示了特定的图像部分或图像块,对其进行进一步检查以识别两种区域之间的形态学差异。256像素的AI模型显示,受试者工作特征曲线(AUC)下的平均面积值为0.869,准确率(ACC)为0.788。对AI识别的图像块进行分析发现,与非浸润区(上皮)相比,浸润区(SM)的血管更丰富。浸润性图像块的特征是血管数量和大小显著增加,以及红细胞计数更高(所有p值均<0.001)。总之,本研究表明,AI可以识别非浸润区和浸润区表面组织病理学的关键差异,尤其突出了浸润区血管数量更多、尺寸更大的特点。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/31dc/11875758/ca621780ecd9/CAS-116-824-g002.jpg

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