[Diagnosis of nasopharyngeal carcinoma with convolutional neural network on narrowband imaging].

Q4 Medicine
Jingjin Weng, Jiazhang Wei, Yunzhong Wei, Zhi Gui, Hanwei Wang, Jinlong Lu, Huashuang Ou, He Jiang, Min Li, Shenhong Qu
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Abstract

Objective:To evaluate the diagnostic accuracy of the convolutional neural network(CNN) in diagnosing nasopharyngeal carcinoma using endoscopic narrowband imaging. Methods:A total of 834 cases with nasopharyngeal lesions were collected from the People's Hospital of Guangxi Zhuang Autonomous Region between 2014 and 2016. We trained the DenseNet201 model to classify the endoscopic images, evaluated its performance using the test dataset, and compared the results with those of two independent endoscopic experts. Results:The area under the ROC curve of the CNN in diagnosing nasopharyngeal carcinoma was 0.98. The sensitivity and specificity of the CNN were 91.90% and 94.69%, respectively. The sensitivity of the two expert-based assessment was 92.08% and 91.06%, respectively, and the specificity was 95.58% and 92.79%, respectively. There was no significant difference between the diagnostic accuracy of CNN and the expert-based assessment (P=0.282, P=0.085). Moreover, there was no significant difference in the accuracy in discriminating early-stage and late-stage nasopharyngeal carcinoma(P=0.382). The CNN model could rapidly distinguish nasopharyngeal carcinoma from benign lesions, with an image recognition time of 0.1 s/piece. Conclusion:The CNN model can quickly distinguish nasopharyngeal carcinoma from benign nasopharyngeal lesions, which can aid endoscopists in diagnosing nasopharyngeal lesions and reduce the rate of nasopharyngeal biopsy.

[利用窄带成像卷积神经网络诊断鼻咽癌]。
目的:评估卷积神经网络(CNN)利用内窥镜窄带成像诊断鼻咽癌的准确性。诊断鼻咽癌的准确性。方法:2014年至2016年期间,我们从广西壮族自治区人民医院共收集了834例鼻咽病变病例。我们训练了DenseNet201模型对内窥镜图像进行分类,使用测试数据集评估了其性能,并将结果与两位独立内窥镜专家的结果进行了比较。结果:CNN 诊断鼻咽癌的 ROC 曲线下面积为 0.98。CNN 的灵敏度和特异度分别为 91.90% 和 94.69%。两种基于专家评估的灵敏度分别为 92.08% 和 91.06%,特异度分别为 95.58% 和 92.79%。CNN 和专家评估的诊断准确性无明显差异(P=0.282,P=0.085)。此外,对早期鼻咽癌和晚期鼻咽癌的鉴别准确率也无明显差异(P=0.382)。CNN 模型能快速区分鼻咽癌和良性病变,图像识别时间为 0.1 秒/片。结论:CNN 模型能快速区分鼻咽癌和鼻咽良性病变,有助于内镜医师诊断鼻咽病变,降低鼻咽活检率。
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