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基于深度学习的智能翼状胬肉诊断系统的实现与应用

Implementation and Application of an Intelligent Pterygium Diagnosis System Based on Deep Learning.

作者信息

Xu Wei, Jin Ling, Zhu Peng-Zhi, He Kai, Yang Wei-Hua, Wu Mao-Nian

机构信息

Department of Optometry, Jinling Institute of Technology, Nanjing, China.

Nanjing Key Laboratory of Optometric Materials and Application Technology, Nanjing, China.

出版信息

Front Psychol. 2021 Oct 22;12:759229. doi: 10.3389/fpsyg.2021.759229. eCollection 2021.

Abstract

This study aims to implement and investigate the application of a special intelligent diagnostic system based on deep learning in the diagnosis of pterygium using anterior segment photographs. A total of 1,220 anterior segment photographs of normal eyes and pterygium patients were collected for training (using 750 images) and testing (using 470 images) to develop an intelligent pterygium diagnostic model. The images were classified into three categories by the experts and the intelligent pterygium diagnosis system: (i) the normal group, (ii) the observation group of pterygium, and (iii) the operation group of pterygium. The intelligent diagnostic results were compared with those of the expert diagnosis. Indicators including accuracy, sensitivity, specificity, kappa value, the area under the receiver operating characteristic curve (AUC), as well as 95% confidence interval (CI) and F1-score were evaluated. The accuracy rate of the intelligent diagnosis system on the 470 testing photographs was 94.68%; the diagnostic consistency was high; the kappa values of the three groups were all above 85%. Additionally, the AUC values approached 100% in group 1 and 95% in the other two groups. The best results generated from the proposed system for sensitivity, specificity, and F1-scores were 100, 99.64, and 99.74% in group 1; 90.06, 97.32, and 92.49% in group 2; and 92.73, 95.56, and 89.47% in group 3, respectively. The intelligent pterygium diagnosis system based on deep learning can not only judge the presence of pterygium but also classify the severity of pterygium. This study is expected to provide a new screening tool for pterygium and benefit patients from areas lacking medical resources.

摘要

本研究旨在实施并调查基于深度学习的特殊智能诊断系统在利用眼前节照片诊断翼状胬肉中的应用。共收集了1220张正常眼睛和翼状胬肉患者的眼前节照片用于训练(使用750张图像)和测试(使用470张图像),以开发智能翼状胬肉诊断模型。专家和智能翼状胬肉诊断系统将图像分为三类:(i)正常组,(ii)翼状胬肉观察组,(iii)翼状胬肉手术组。将智能诊断结果与专家诊断结果进行比较。评估了包括准确率、敏感性、特异性、kappa值、受试者操作特征曲线下面积(AUC)以及95%置信区间(CI)和F1分数等指标。智能诊断系统在470张测试照片上的准确率为94.68%;诊断一致性高;三组的kappa值均高于85%。此外,第1组的AUC值接近100%,其他两组接近95%。所提出系统在敏感性、特异性和F1分数方面产生的最佳结果分别为:第1组为100%、99.64%和99.74%;第2组为90.06%、97.32%和92.49%;第3组为92.73%、95.56%和89.47%。基于深度学习的智能翼状胬肉诊断系统不仅可以判断翼状胬肉的存在,还可以对翼状胬肉的严重程度进行分类。本研究有望为翼状胬肉提供一种新的筛查工具,并使缺乏医疗资源地区的患者受益。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cd65/8569253/fc923932b0fb/fpsyg-12-759229-g001.jpg

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