Department of Ophthalmology, Tottori University, 36-1 Nishicho, Yonago, Tottori, 683-8504, Japan.
Technology Laboratory, CRESCO LTD., Tokyo, Japan.
Sci Rep. 2021 Nov 22;11(1):22642. doi: 10.1038/s41598-021-02138-w.
Corneal opacities are important causes of blindness, and their major etiology is infectious keratitis. Slit-lamp examinations are commonly used to determine the causative pathogen; however, their diagnostic accuracy is low even for experienced ophthalmologists. To characterize the "face" of an infected cornea, we have adapted a deep learning architecture used for facial recognition and applied it to determine a probability score for a specific pathogen causing keratitis. To record the diverse features and mitigate the uncertainty, batches of probability scores of 4 serial images taken from many angles or fluorescence staining were learned for score and decision level fusion using a gradient boosting decision tree. A total of 4306 slit-lamp images including 312 images obtained by internet publications on keratitis by bacteria, fungi, acanthamoeba, and herpes simplex virus (HSV) were studied. The created algorithm had a high overall accuracy of diagnosis, e.g., the accuracy/area under the curve for acanthamoeba was 97.9%/0.995, bacteria was 90.7%/0.963, fungi was 95.0%/0.975, and HSV was 92.3%/0.946, by group K-fold validation, and it was robust to even the low resolution web images. We suggest that our hybrid deep learning-based algorithm be used as a simple and accurate method for computer-assisted diagnosis of infectious keratitis.
角膜混浊是导致失明的重要原因,其主要病因是感染性角膜炎。裂隙灯检查常用于确定致病病原体;然而,即使是经验丰富的眼科医生,其诊断准确性也较低。为了描述感染角膜的“面貌”,我们采用了用于面部识别的深度学习架构,并将其应用于确定特定角膜炎病原体的概率评分。为了记录不同的特征并减轻不确定性,我们使用梯度提升决策树对来自多个角度或荧光染色的 4 张连续图像的批量概率评分进行了学习,以进行评分和决策级融合。共研究了 4306 张裂隙灯图像,包括 312 张来自互联网上有关细菌、真菌、棘阿米巴和单纯疱疹病毒(HSV)引起的角膜炎的出版物的图像。所创建的算法具有很高的总体诊断准确性,例如,棘阿米巴的准确性/曲线下面积为 97.9%/0.995,细菌为 90.7%/0.963,真菌为 95.0%/0.975,HSV 为 92.3%/0.946,通过 K 折验证,它对即使是低分辨率的网络图像也具有鲁棒性。我们建议将我们的基于混合深度学习的算法用作感染性角膜炎计算机辅助诊断的简单而准确的方法。