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Analysis and Comparison of Two Artificial Intelligence Diabetic Retinopathy Screening Algorithms in a Pilot Study: IDx-DR and Retinalyze

机译:试点研究中两个人工智能糖尿病视网膜病筛查算法的分析与比较:IDX-DR和RETINALYZE

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摘要

Background: 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. Methods: We chose a non-representative sample of all referable DR positive screening subjects (n = 60) and a random selection of DR negative patient images (n = 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. Results: 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. Conclusions: 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.
机译:背景:预计糖尿病视网膜病变(DR)的患病率将增加。这将对卫生保健资源产生越来越大的压力。最近,已经开发了人工智能的基于智能筛选系统。不同系统之间的直接比较往往是困难的,并且到目前为止只发布了两种这样的比较。由于不同的筛选解决方案现在可以在商业上可用,在管道中有更多,选择系统不是简单的事情。基于在本地DR筛选程序中收集的图像,我们执行了IDX-DR和Retineryze的回顾性比较。方法:我们选择所有可引用的DR阳性筛选受试者(n = 60)的非代表性样本和DR负患者图像的随机选择(n = 110)。只有45度视野图像,45度视场的受试者,选择了来自两只眼睛的黄斑居中和椎间盘居中的图像。图像被Topcon NW-400 USFUS相机捕获,而无需迈索里亚类。此前预先通过单个眼科医生分级。出于这种比较的目的,我们假设了两种筛选策略 - 视网膜晶体 - 其中四个图像中的一个或两个以患者水平的整体阳性结果标记为阳性。结果:分别与博士和博士博士博士的单个读者的百分比协议是:93.3%,IDX-DR为95.5%;视网膜义策略1的89.7%和71.8%;在策略2.结论:两种系统的结论:两种系统都能够分析绝大多数图像的74.1%和93.6%。两个系统都很容易设置和使用。目前的试验研究有几个局限性,关于在尝试更强大的未来研究之前需要解决的样本选择和参考分级。

著录项

  • 期刊名称 Journal of Clinical Medicine
  • 作者单位
  • 年(卷),期 2021(10),11
  • 年度 2021
  • 页码 2352
  • 总页数 8
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:糖尿病视网膜病;糖尿病眼病;人工智能;机器学习;深入学习;糖尿病视网膜病筛查;眼科;糖尿病学;公共卫生;

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