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卷积神经网络在内镜超声图像胃间质瘤诊断中的应用

Application of A Convolutional Neural Network in The Diagnosis of Gastric Mesenchymal Tumors on Endoscopic Ultrasonography Images.

作者信息

Kim Yoon Ho, Kim Gwang Ha, Kim Kwang Baek, Lee Moon Won, Lee Bong Eun, Baek Dong Hoon, Kim Do Hoon, Park Jun Chul

机构信息

Department of Internal Medicine, Pusan National University School of Medicine and Biomedical Research Institute, Pusan National University Hospital, Busan 49241, Korea.

Division of Computer Software Engineering, Silla University, Busan 46958, Korea.

出版信息

J Clin Med. 2020 Sep 29;9(10):3162. doi: 10.3390/jcm9103162.

Abstract

BACKGROUND AND AIMS

Endoscopic ultrasonography (EUS) is a useful diagnostic modality for evaluating gastric mesenchymal tumors; however, differentiating gastrointestinal stromal tumors (GISTs) from benign mesenchymal tumors such as leiomyomas and schwannomas remains challenging. For this reason, we developed a convolutional neural network computer-aided diagnosis (CNN-CAD) system that can analyze gastric mesenchymal tumors on EUS images.

METHODS

A total of 905 EUS images of gastric mesenchymal tumors (pathologically confirmed GIST, leiomyoma, and schwannoma) were used as a training dataset. Validation was performed using 212 EUS images of gastric mesenchymal tumors. This test dataset was interpreted by three experienced and three junior endoscopists.

RESULTS

The sensitivity, specificity, and accuracy of the CNN-CAD system for differentiating GISTs from non-GIST tumors were 83.0%, 75.5%, and 79.2%, respectively. Its diagnostic specificity and accuracy were significantly higher than those of two experienced and one junior endoscopists. In the further sequential analysis to differentiate leiomyoma from schwannoma in non-GIST tumors, the final diagnostic accuracy of the CNN-CAD system was 72.5%, which was significantly higher than that of two experienced and one junior endoscopists.

CONCLUSIONS

Our CNN-CAD system showed high accuracy in diagnosing gastric mesenchymal tumors on EUS images. It may complement the current clinical practices in the EUS diagnosis of gastric mesenchymal tumors.

摘要

背景与目的

内镜超声检查(EUS)是评估胃间质瘤的一种有用的诊断方法;然而,将胃肠道间质瘤(GIST)与平滑肌瘤和神经鞘瘤等良性间质瘤区分开来仍然具有挑战性。因此,我们开发了一种卷积神经网络计算机辅助诊断(CNN-CAD)系统,该系统可以分析EUS图像上的胃间质瘤。

方法

总共905张胃间质瘤的EUS图像(经病理证实为GIST、平滑肌瘤和神经鞘瘤)用作训练数据集。使用212张胃间质瘤的EUS图像进行验证。该测试数据集由三名经验丰富的内镜医师和三名初级内镜医师进行解读。

结果

CNN-CAD系统区分GIST与非GIST肿瘤的敏感性、特异性和准确性分别为83.0%、75.5%和79.2%。其诊断特异性和准确性显著高于两名经验丰富的内镜医师和一名初级内镜医师。在进一步区分非GIST肿瘤中平滑肌瘤与神经鞘瘤的序贯分析中,CNN-CAD系统的最终诊断准确性为72.5%,显著高于两名经验丰富的内镜医师和一名初级内镜医师。

结论

我们的CNN-CAD系统在诊断EUS图像上的胃间质瘤方面显示出较高的准确性。它可能补充目前EUS诊断胃间质瘤的临床实践。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b82c/7600226/f276df9afa65/jcm-09-03162-g001.jpg

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