Department of Ophthalmology, Seoul National University Bundang Hospital, Seoul National University College of Medicine, Seoul, Korea.
Department of Biomedical Engineering, Gachon Medical School, Gil Hospital, Incheon, Korea.
Am J Ophthalmol. 2020 Aug;216:140-146. doi: 10.1016/j.ajo.2020.03.035. Epub 2020 Apr 2.
We sought to assess the performance of deep learning approaches for differentiating nonglaucomatous optic neuropathy with disc pallor (NGON) vs glaucomatous optic neuropathy (GON) on color fundus photographs by the use of image recognition.
Development of an Artificial Intelligence Classification algorithm.
This single-institution analysis included 3815 fundus images from the picture archiving and communication system of Seoul National University Bundang Hospital consisting of 2883 normal optic disc images, 446 NGON images, and 486 GON images. The presence of NGON and GON was interpreted by 2 expert neuro-ophthalmologists and had corroborated evidence on visual field testing and optical coherence tomography. Images were preprocessed in size and color enhancement before input. We applied the convolutional neural network (CNN) of ResNet-50 architecture. The area under the precision-recall curve (average precision) was evaluated for the efficacy of deep learning algorithms to assess the performance of classifying NGON and GON.
The diagnostic accuracy of the ResNet-50 model to detect GON among NGON images showed a sensitivity of 93.4% and specificity of 81.8%. The area under the precision-recall curve for differentiating NGON vs GON showed an average precision value of 0.874. False positive cases were found with extensive areas of peripapillary atrophy and tilted optic discs.
Artificial intelligence-based deep learning algorithms for detecting optic disc diseases showed excellent performance in differentiating NGON and GON on color fundus photographs, necessitating further research for clinical application.
我们旨在评估基于深度学习的方法在使用图像识别区分盘状苍白(NGON)与青光眼视神经病变(GON)的彩色眼底照片中的表现。
人工智能分类算法的开发。
本单中心分析纳入了来自首尔国立大学盆唐医院的图片存档与通信系统中的 3815 张眼底图像,包括 2883 张正常视盘图像、446 张 NGON 图像和 486 张 GON 图像。NGON 和 GON 的存在由 2 位神经眼科专家进行解释,并通过视野测试和光学相干断层扫描得到证实。在输入之前,对图像进行了大小和颜色增强预处理。我们应用了 ResNet-50 架构的卷积神经网络(CNN)。为评估深度学习算法区分 NGON 和 GON 的效能,评估了精度-召回曲线下的面积(平均精度)。
ResNet-50 模型在检测 NGON 图像中的 GON 时的诊断准确性为敏感性 93.4%和特异性 81.8%。区分 NGON 与 GON 的精度-召回曲线下面积的平均精度值为 0.874。假阳性病例存在广泛的视盘周围萎缩和倾斜视盘。
基于人工智能的深度学习算法在区分彩色眼底照片中的盘状苍白和青光眼视神经病变方面表现出色,需要进一步研究以用于临床应用。