Diagnostic accuracy of a smartphone-based device (VistaView) for detection of diabetic retinopathy: A prospective study.

PLOS digital health Pub Date : 2024-11-08 eCollection Date: 2024-11-01 DOI:10.1371/journal.pdig.0000649
Rida Shahzad, Arshad Mehmood, Danish Shabbir, M A Rehman Siddiqui
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Abstract

Background: Diabetic retinopathy (DR) is a leading cause of blindness globally. The gold standard for DR screening is stereoscopic colour fundus photography with tabletop cameras. VistaView is a novel smartphone-based retinal camera which offers mydriatic retinal imaging. This study compares the diagnostic accuracy of the smartphone-based VistaView camera compared to a traditional desk mounted fundus camera (Triton Topcon). We also compare the agreement between graders for DR screening between VistaView images and Topcon images.

Methodology: This prospective study took place between December 2021 and June 2022 in Pakistan. Consecutive diabetic patients were imaged following mydriasis using both VistaView and Topcon cameras at the same sitting. All images were graded independently by two graders based on the International Classification of Diabetic Retinopathy (ICDR) criteria. Individual grades were assigned for severity of DR and maculopathy in each image. Diagnostic accuracy was calculated using the Topcon camera as the gold standard. Agreement between graders for each device was calculated as intraclass correlation coefficient (ICC) (95% CI) and Cohen's weighted kappa (k).

Principal findings: A total of 1428 images were available from 371 patients with both cameras. After excluding ungradable images, a total of 1231 images were graded. The sensitivity of VistaView for any DR was 69.9% (95% CI 62.2-76.6%) while the specificity was 92.9% (95% CI 89.9-95.1%), and PPV and NPV were 80.5% (95% CI 73-86.4%) and 88.1% (95% CI 84.5-90.9) respectively. The sensitivity of VistaView for RDR was 69.7% (95% CI 61.7-76.8%) while the specificity was 94.2% (95% CI 91.3-96.1%), and PPV and NPV were 81.5% (95% CI 73.6-87.6%) and 89.4% (95% CI 86-92%) respectively. The sensitivity for detecting maculopathy in VistaView was 71.2% (95% CI 62.8-78.4%), while the specificity was 86.4% (82.6-89.4%). The PPV and NPV of detecting maculopathy were 63% (95% CI 54.9-70.5%) and 90.1% (95% CI 86.8-92.9%) respectively. For VistaView, the ICC of DR grades was 78% (95% CI, 75-82%) between the two graders and that of maculopathy grades was 66% (95% CI, 59-71%). The Cohen's kappa for retinopathy grades of VistaView images was 0.61 (95% CI, 0.55-0.67, p<0.001), while that for maculopathy grades was 0.49 (95% CI 0.42-0.57, p<0.001). For images from the Topcon desktop camera, the ICC of DR grades was 85% (95% CI, 83-87%), while that of maculopathy grades was 79% (95% CI, 75-82%). The Cohen's kappa for retinopathy grades of Topcon images was 0.68 (95% CI, 0.63-0.74, p<0.001), while that for maculopathy grades was 0.65 (95% CI, 0.58-0.72, p<0.001).

Conclusion: The VistaView offers moderate diagnostic accuracy for DR screening and may be used as a screening tool in LMIC.

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基于智能手机的设备(VistaView)检测糖尿病视网膜病变的诊断准确性:前瞻性研究。
背景:糖尿病视网膜病变(DR糖尿病视网膜病变(DR)是全球致盲的主要原因。糖尿病视网膜病变筛查的黄金标准是使用台式照相机进行立体彩色眼底摄影。VistaView 是一种基于智能手机的新型视网膜相机,可提供眼底视网膜成像。本研究比较了基于智能手机的 VistaView 相机与传统台式眼底相机(Triton Topcon)的诊断准确性。我们还比较了 VistaView 图像和 Topcon 图像在 DR 筛查中分级人员之间的一致性:这项前瞻性研究于 2021 年 12 月至 2022 年 6 月在巴基斯坦进行。连续的糖尿病患者在同一坐姿下,使用 VistaView 和 Topcon 相机在瞳孔散大后进行成像。根据国际糖尿病视网膜病变分类(ICDR)标准,由两名分级人员对所有图像进行独立分级。根据每张图像中 DR 和黄斑病变的严重程度划分等级。诊断准确性以 Topcon 相机作为金标准进行计算。每种设备的分级者之间的一致性按类内相关系数(ICC)(95% CI)和科恩加权卡帕(k)计算:共有 371 名患者的 1428 张图像使用了这两种相机。排除无法分级的图像后,共有 1231 张图像进行了分级。VistaView 对任何 DR 的敏感性为 69.9%(95% CI 62.2-76.6%),特异性为 92.9%(95% CI 89.9-95.1%),PPV 和 NPV 分别为 80.5%(95% CI 73-86.4%)和 88.1%(95% CI 84.5-90.9)。VistaView 检测 RDR 的灵敏度为 69.7% (95% CI 61.7-76.8%),特异度为 94.2% (95% CI 91.3-96.1%),PPV 和 NPV 分别为 81.5% (95% CI 73.6-87.6%)和 89.4% (95% CI 86-92%)。VistaView 检测黄斑病变的灵敏度为 71.2% (95% CI 62.8-78.4%),特异度为 86.4% (82.6-89.4%)。检测黄斑病变的 PPV 和 NPV 分别为 63% (95% CI 54.9-70.5%) 和 90.1% (95% CI 86.8-92.9%)。在 VistaView 中,两个分级者之间 DR 分级的 ICC 为 78% (95% CI, 75-82%),黄斑病变分级的 ICC 为 66% (95% CI, 59-71%)。VistaView 图像视网膜病变等级的 Cohen's kappa 为 0.61 (95% CI, 0.55-0.67, pConclusion):VistaView对DR筛查的诊断准确性适中,可用作低收入国家的筛查工具。
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