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使用角膜地形图和深度学习进行干眼亚型分类

Dry Eye Subtype Classification Using Videokeratography and Deep Learning.

作者信息

Yokoi Norihiko, Kusada Natsuki, Kato Hiroaki, Furusawa Yuki, Sotozono Chie, Georgiev Georgi As

机构信息

Department of Ophthalmology, Kyoto Prefectural University of Medicine, Kyoto 602-0841, Japan.

Department of Optics and Spectroscopy, Faculty of Physics, St. Kliment Ohridski University of Sofia, 1164 Sofia, Bulgaria.

出版信息

Diagnostics (Basel). 2023 Dec 26;14(1):52. doi: 10.3390/diagnostics14010052.

Abstract

We previously reported on 'Tear Film Oriented Diagnosis' (TFOD), a method for the dry eye (DE) subtype classification using fluorescein staining and an examination of fluorescein breakup patterns via slit-lamp biomicroscopy. Here, we report 'AI-supported TFOD', a novel non-invasive method for DE subtype classification using videokeratography (VK) and "Blur Value" (BV), a new VK indicator of the extent of blur in Meyer-ring images and deep learning (DL). This study involved 243 eyes of 243 DE cases (23 males and 220 females; mean age: 64.4 ± 13.9 (SD) years)-i.e., 31 severe aqueous-deficient DE (sADDE) cases, 73 mild-to-moderate ADDE (m/mADDE) cases, 84 decreased wettability DE (DWDE) cases, and 55 increased evaporation DE (IEDE) cases diagnosed via the fluorescein-supported TFOD pathway. For DL, a 3D convolutional neural network classification model was used (i.e., the original image and BV data of eyes kept open for 7 s were randomly divided into training data (146 cases) and the test data (97 cases), with the training data increased via data augmentation and corresponding to 2628 cases). Overall, the DE classification accuracy was 78.40%, and the accuracies for the subtypes sADDE, m/mADDE, DWDE, and IEDE were 92.3%, 79.3%, 75.8%, and 72.7%, respectively. 'AI-supported TFOD' may become a useful tool for DE subtype classification.

摘要

我们之前报道了“泪膜导向诊断”(TFOD),这是一种利用荧光素染色及通过裂隙灯生物显微镜检查荧光素破裂模式来对干眼(DE)进行亚型分类的方法。在此,我们报告“人工智能支持的TFOD”,这是一种利用视频角膜照相术(VK)和“模糊值”(BV)对DE进行亚型分类的新型非侵入性方法,“模糊值”是迈耶环图像中模糊程度的一种新的VK指标,并结合深度学习(DL)。本研究纳入了243例DE患者的243只眼(男性23例,女性220例;平均年龄:64.4±13.9(标准差)岁),即通过荧光素支持的TFOD途径诊断出的31例严重水液缺乏型DE(sADDE)、73例轻至中度ADDE(m/mADDE)、84例湿润性降低型DE(DWDE)和55例蒸发过强型DE(IEDE)。对于深度学习,使用了一个3D卷积神经网络分类模型(即,将睁眼7秒的眼睛的原始图像和BV数据随机分为训练数据(146例)和测试数据(97例),通过数据增强增加训练数据,相当于2628例)。总体而言,DE分类准确率为78.40%,sADDE、m/mADDE,、DWDE和IEDE亚型的准确率分别为92.3%、79.3%、75.8%和72.7%。“人工智能支持的TFOD”可能会成为DE亚型分类的一种有用工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/155e/10802766/e04db29f769c/diagnostics-14-00052-g001.jpg

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