Chase Collin, Elsawy Amr, Eleiwa Taher, Ozcan Eyup, Tolba Mohamed, Abou Shousha Mohamed
Morsani College of Medicine, University of South Florida, Tampa, FL, USA.
Cornea Department, Bascom Palmer Eye Institute, Miller School of Medicine, University of Miami, Miami, FL, USA.
Clin Ophthalmol. 2021 Oct 21;15:4281-4289. doi: 10.2147/OPTH.S321764. eCollection 2021.
To evaluate a deep learning-based method to autonomously detect dry eye disease (DED) in anterior segment optical coherence tomography (AS-OCT) images compared to common clinical dry eye tests.
In this study, 27,180 AS-OCT images were prospectively collected from 151 eyes of 91 patients. Images were used to train and test the deep learning model. Masked cornea specialist ophthalmologist diagnoses were used as the gold standard. Clinical dry eye tests were performed on patients in the DED group to compare the results of the model. The dry eye tests performed were tear break-up time (TBUT), Schirmer's test, corneal staining, conjunctival staining, and Ocular Surface Disease Index (OSDI).
Our deep learning model achieved an accuracy of 84.62%, sensitivity of 86.36%, and specificity of 82.35% in the diagnosis of DED. The positive likelihood ratio was 4.89, and the negative likelihood ratio was 0.17. The mean DED probability score was 0.81 ± 0.23 in the DED group and 0.20 ± 0.27 in the healthy group (P < 0.01). The deep learning model accuracy in the diagnosis of DED was significantly better than that of corneal staining, conjunctival staining, and Schirmer's test (P < 0.05). There was no significant difference between the deep learning diagnostic accuracy and that of the OSDI and TBUT.
Based on preliminary results, reliable autonomous diagnosis of DED with our deep learning model was achieved, when compared with standard dry eye clinical tests that correlated significantly more or similarly to diagnoses made by cornea specialist ophthalmologists.
与常见的临床干眼测试相比,评估一种基于深度学习的方法,用于在前节光学相干断层扫描(AS-OCT)图像中自动检测干眼疾病(DED)。
在本研究中,前瞻性收集了91例患者151只眼睛的27180张AS-OCT图像。这些图像用于训练和测试深度学习模型。由遮盖的角膜专科眼科医生的诊断作为金标准。对DED组患者进行临床干眼测试,以比较模型的结果。所进行的干眼测试包括泪膜破裂时间(TBUT)、泪液分泌试验、角膜染色、结膜染色和眼表疾病指数(OSDI)。
我们的深度学习模型在DED诊断中达到了84.62%的准确率、86.36%的灵敏度和82.35%的特异度。阳性似然比为4.89,阴性似然比为0.17。DED组的平均DED概率评分为0.81±0.23,健康组为0.20±0.27(P<0.01)。深度学习模型在DED诊断中的准确率显著优于角膜染色、结膜染色和泪液分泌试验(P<0.05)。深度学习诊断准确率与OSDI和TBUT之间无显著差异。
基于初步结果,与标准干眼临床测试相比,我们的深度学习模型实现了对DED的可靠自动诊断,标准干眼临床测试与角膜专科眼科医生的诊断相关性更高或相似。