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深度学习通过上消化道内窥镜图像分析幽门螺杆菌感染。

Deep learning analyzes Helicobacter pylori infection by upper gastrointestinal endoscopy images.

作者信息

Itoh Takumi, Kawahira Hiroshi, Nakashima Hirotaka, Yata Noriko

机构信息

Department of Medical System Engineering, Graduate School of Engineering, Chiba University.

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

出版信息

Endosc Int Open. 2018 Feb;6(2):E139-E144. doi: 10.1055/s-0043-120830. Epub 2018 Feb 1.

Abstract

BACKGROUND AND STUDY AIMS

Helicobacter pylori (HP)-associated chronic gastritis can cause mucosal atrophy and intestinal metaplasia, both of which increase the risk of gastric cancer. The accurate diagnosis of HP infection during routine medical checks is important. We aimed to develop a convolutional neural network (CNN), which is a machine-learning algorithm similar to deep learning, capable of recognizing specific features of gastric endoscopy images. The goal behind developing such a system was to detect HP infection early, thus preventing gastric cancer.

PATIENTS AND METHODS

For the development of the CNN, we used 179 upper gastrointestinal endoscopy images obtained from 139 patients (65 were HP-positive: ≥ 10 U/mL and 74 were HP-negative: < 3 U/mL on HP IgG antibody assessment). Of the 179 images, 149 were used as training images, and the remaining 30 (15 from HP-negative patients and 15 from HP-positive patients) were set aside to be used as test images. The 149 training images were subjected to data augmentation, which yielded 596 images. We used the CNN to create a learning tool that would recognize HP infection and assessed the decision accuracy of the CNN with the 30 test images by calculating the sensitivity, specificity, and area under the receiver operating characteristic (ROC) curve (AUC).

RESULTS

The sensitivity and specificity of the CNN for the detection of HP infection were 86.7 % and 86.7 %, respectively, and the AUC was 0.956.

CONCLUSIONS

CNN-aided diagnosis of HP infection seems feasible and is expected to facilitate and improve diagnosis during health check-ups.

摘要

背景与研究目的

幽门螺杆菌(HP)相关性慢性胃炎可导致黏膜萎缩和肠化生,这两者均会增加患胃癌的风险。在常规体检中准确诊断HP感染非常重要。我们旨在开发一种卷积神经网络(CNN),这是一种类似于深度学习的机器学习算法,能够识别胃内镜图像的特定特征。开发这样一个系统的目的是早期检测HP感染,从而预防胃癌。

患者与方法

为了开发CNN,我们使用了从139例患者获得的179张上消化道内镜图像(根据HP IgG抗体评估,65例HP阳性:≥10 U/mL,74例HP阴性:<3 U/mL)。在这179张图像中,149张用作训练图像,其余30张(15张来自HP阴性患者,15张来自HP阳性患者)留作测试图像。对149张训练图像进行数据增强,得到596张图像。我们使用CNN创建一个识别HP感染的学习工具,并通过计算灵敏度、特异度和受试者工作特征(ROC)曲线下面积(AUC),用30张测试图像评估CNN的决策准确性。

结果

CNN检测HP感染的灵敏度和特异度分别为86.7%和86.7%,AUC为0.956。

结论

CNN辅助诊断HP感染似乎是可行的,有望在健康检查中促进和改善诊断。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e582/5794437/76fb6d175aaf/10-1055-s-0043-120830-i892ei1.jpg

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