Grzybowski Andrzej, Brona Piotr
Department of Ophthalmology, University of Warmia and Mazury, Żołnierska 18, 10-561 Olsztyn, Poland.
Institute for Research in Ophthalmology, Foundation for Ophthalmology Development, 60-836 Poznan, Poland.
J Clin Med. 2021 May 27;10(11):2352. doi: 10.3390/jcm10112352.
The prevalence of diabetic retinopathy (DR) is expected to increase. This will put an increasing strain on health care resources. Recently, artificial intelligence-based, autonomous DR screening systems have been developed. A direct comparison between different systems is often difficult and only two such comparisons have been published so far. As different screening solutions are now available commercially, with more in the pipeline, choosing a system is not a simple matter. Based on the images gathered in a local DR screening program we performed a retrospective comparison of IDx-DR and Retinalyze.
We chose a non-representative sample of all referable DR positive screening subjects ( = 60) and a random selection of DR negative patient images ( = 110). Only subjects with four good quality, 45-degree field of view images, a macula-centered and disc-centered image from both eyes were chosen for comparison. The images were captured by a Topcon NW-400 fundus camera, without mydriasis. The images were previously graded by a single ophthalmologist. For the purpose of this comparison, we assumed two screening strategies for Retinalyze-where either one or two out of the four images needed to be marked positive by the system for an overall positive result at the patient level.
Percentage agreement with a single reader in DR positive and DR negative cases respectively was: 93.3%, 95.5% for IDx-DR; 89.7% and 71.8% for Retinalyze strategy 1; 74.1% and 93.6% for Retinalyze under strategy 2.
Both systems were able to analyse the vast majority of images. Both systems were easy to set up and use. There were several limitations to the current pilot study, concerning sample choice and the reference grading that need to be addressed before attempting a more robust future study.
预计糖尿病视网膜病变(DR)的患病率将会上升。这将给医疗保健资源带来越来越大的压力。最近,基于人工智能的自主DR筛查系统已被开发出来。不同系统之间的直接比较往往很困难,到目前为止仅发表了两项此类比较研究。由于目前市场上有不同的筛查解决方案,且更多方案正在筹备中,选择一个系统并非易事。基于在本地DR筛查项目中收集的图像,我们对IDx-DR和Retinalyze进行了回顾性比较。
我们选择了所有可转诊的DR阳性筛查受试者中的一个非代表性样本(n = 60),并随机选取了DR阴性患者的图像(n = 110)。仅选择具有四张高质量、45度视野图像、双眼以黄斑为中心和以视盘为中心的图像的受试者进行比较。图像由Topcon NW-400眼底相机在未散瞳的情况下拍摄。这些图像先前由一名眼科医生进行了分级。为了进行此次比较,我们为Retinalyze假定了两种筛查策略——在这四种图像中,系统需要将一张或两张标记为阳性,患者水平的总体结果才为阳性。
IDx-DR在DR阳性和DR阴性病例中与单一阅片者的百分比一致性分别为:93.3%、95.5%;Retinalyze策略1为89.7%和71.8%;Retinalyze策略2为74.1%和93.6%。
两个系统都能够分析绝大多数图像。两个系统都易于设置和使用。当前的初步研究存在一些局限性,涉及样本选择和参考分级,在尝试开展更有力的未来研究之前需要加以解决。