School of Electrical and Electronic Engineering, Nanyang Technological University, Singapore, Singapore.
Department of Ophthalmology, Tan Tock Seng Hospital, Singapore, Singapore.
Transl Vis Sci Technol. 2024 Apr 2;13(4):6. doi: 10.1167/tvst.13.4.6.
To develop and validate a deep learning system (DLS) for estimation of vertical cup-to-disc ratio (vCDR) in ultra-widefield (UWF) and smartphone-based fundus images.
A DLS consisting of two sequential convolutional neural networks (CNNs) to delineate optic disc (OD) and optic cup (OC) boundaries was developed using 800 standard fundus images from the public REFUGE data set. The CNNs were tested on 400 test images from the REFUGE data set and 296 UWF and 300 smartphone-based images from a teleophthalmology clinic. vCDRs derived from the delineated OD/OC boundaries were compared with optometrists' annotations using mean absolute error (MAE). Subgroup analysis was conducted to study the impact of peripapillary atrophy (PPA), and correlation study was performed to investigate potential correlations between sectoral CDR (sCDR) and retinal nerve fiber layer (RNFL) thickness.
The system achieved MAEs of 0.040 (95% CI, 0.037-0.043) in the REFUGE test images, 0.068 (95% CI, 0.061-0.075) in the UWF images, and 0.084 (95% CI, 0.075-0.092) in the smartphone-based images. There was no statistical significance in differences between PPA and non-PPA images. Weak correlation (r = -0.4046, P < 0.05) between sCDR and RNFL thickness was found only in the superior sector.
We developed a deep learning system that estimates vCDR from standard, UWF, and smartphone-based images. We also described anatomic peripapillary adversarial lesion and its potential impact on OD/OC delineation.
Artificial intelligence can estimate vCDR from different types of fundus images and may be used as a general and interpretable screening tool to improve community reach for diagnosis and management of glaucoma.
开发并验证一种深度学习系统(DLS),用于估计超广角(UWF)和基于智能手机的眼底图像中的垂直杯盘比(vCDR)。
该 DLS 由两个连续的卷积神经网络(CNN)组成,用于描绘视盘(OD)和视杯(OC)边界,使用来自公共 REFUGE 数据集的 800 张标准眼底图像进行开发。该 CNN 在 REFUGE 数据集的 400 张测试图像以及来自远程眼科诊所的 296 张 UWF 和 300 张基于智能手机的图像上进行了测试。通过平均绝对误差(MAE)将从描绘的 OD/OC 边界得出的 vCDR 与验光师的注释进行比较。进行了亚组分析以研究视盘周围萎缩(PPA)的影响,并进行了相关性研究以研究扇区 CDR(sCDR)和视网膜神经纤维层(RNFL)厚度之间的潜在相关性。
该系统在 REFUGE 测试图像中的 MAE 为 0.040(95%CI,0.037-0.043),在 UWF 图像中的 MAE 为 0.068(95%CI,0.061-0.075),在基于智能手机的图像中的 MAE 为 0.084(95%CI,0.075-0.092)。PPA 图像和非 PPA 图像之间的差异没有统计学意义。仅在上方象限中发现 sCDR 和 RNFL 厚度之间的弱相关性(r = -0.4046,P <0.05)。
我们开发了一种从标准、UWF 和基于智能手机的图像估算 vCDR 的深度学习系统。我们还描述了视盘周围的解剖学对抗性病变及其对视盘/视杯描绘的潜在影响。
杨希