Kowa Ophthalmic Research Laboratories, Kowa Research Institute, Inc., Boston, Massachusetts, United States of America.
Kowa Company, Ltd., Tokyo, Japan.
PLoS One. 2023 Mar 13;18(3):e0282973. doi: 10.1371/journal.pone.0282973. eCollection 2023.
Dry eye disease affects hundreds of millions of people worldwide and is one of the most common causes for visits to eye care practitioners. The fluorescein tear breakup time test is currently widely used to diagnose dry eye disease, but it is an invasive and subjective method, thus resulting in variability in diagnostic results. This study aimed to develop an objective method to detect tear breakup using the convolutional neural networks on the tear film images taken by the non-invasive device KOWA DR-1α.
The image classification models for detecting characteristics of tear film images were constructed using transfer learning of the pre-trained ResNet50 model. The models were trained using a total of 9,089 image patches extracted from video data of 350 eyes of 178 subjects taken by the KOWA DR-1α. The trained models were evaluated based on the classification results for each class and overall accuracy of the test data in the six-fold cross validation. The performance of the tear breakup detection method using the models was evaluated by calculating the area under curve (AUC) of receiver operating characteristic, sensitivity, and specificity using the detection results of 13,471 frame images with breakup presence/absence labels.
The performance of the trained models was 92.3%, 83.4%, and 95.2% for accuracy, sensitivity, and specificity, respectively in classifying the test data into the tear breakup or non-breakup group. Our method using the trained models achieved an AUC of 0.898, a sensitivity of 84.3%, and a specificity of 83.3% in detecting tear breakup for a frame image.
We were able to develop a method to detect tear breakup on images taken by the KOWA DR-1α. This method could be applied to the clinical use of non-invasive and objective tear breakup time test.
干眼症影响着全球数以亿计的人群,是导致人们前往眼科就诊的最常见原因之一。目前,荧光素泪膜破裂时间试验被广泛用于诊断干眼症,但它是一种有创且主观的方法,因此导致诊断结果存在差异。本研究旨在开发一种使用非侵入性设备 KOWA DR-1α 获取的泪膜图像的卷积神经网络来检测泪膜破裂的客观方法。
使用预训练的 ResNet50 模型的迁移学习构建用于检测泪膜图像特征的图像分类模型。使用从 178 名受试者的 350 只眼中的 KOWA DR-1α 拍摄的视频数据中提取的总共 9089 个图像块对模型进行训练。使用六重交叉验证评估模型在每个类别和测试数据的总体准确率方面的分类结果。使用带有破裂存在/不存在标签的 13471 个帧图像的检测结果,通过计算接收者操作特征曲线下的面积(AUC)、灵敏度和特异性来评估使用模型的泪膜破裂检测方法的性能。
在将测试数据分为泪膜破裂或非破裂组时,训练后的模型在分类中的准确率、灵敏度和特异性分别为 92.3%、83.4%和 95.2%。我们使用训练后的模型的方法在检测帧图像中的泪膜破裂时获得了 0.898 的 AUC、84.3%的灵敏度和 83.3%的特异性。
我们能够开发出一种从 KOWA DR-1α 获取的图像中检测泪膜破裂的方法。这种方法可应用于非侵入性和客观的泪膜破裂时间测试的临床应用。