具有设备智能的视网膜成像相机用于初级保健的性能:回顾性研究。

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES
Matthew Silvestrini, Clarissa Lui, Anil Patwardhan, Ying Chen, Tayyeba Ali, Elie Glik, Honglei Wu, Brian Levinstein, Adrianna Wenz, Nathan Shemonski, Lin Yang, Ian Atkinson, Sam Kavusi
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引用次数: 0

摘要

背景:获得筛查仍然是早期发现糖尿病视网膜病变(DR)的障碍。基于初级保健的糖尿病视网膜病变筛查可以改善获取,但操作上的挑战,如成本和工作流程管理,阻碍了视网膜相机系统在美国初级保健诊所的广泛采用。目的:本研究旨在开发和评估一种适合整合到初级保健工作流程的视网膜筛查系统。方法:我们研制了一种非散体45°视场成像视网膜相机系统,即Verily nummetric retinal camera (VNRC;Verily Life Sciences LLC),能够通过设备上的智能功能生成高保真视网膜图像。VNRC输出流到基于云的软件,接受和路由数字化图像分级。我们在2项研究中评估了VNRC的性能和可用性。一项回顾性性能研究比较了VNRC与参考相机(Crystalvue NFC-700 [Crystalvue Medical])的性能,以及VNRC捕获状态与可分级性(由眼科医生分级确定)之间的相关性。可用性研究为训练有素和未训练有素的用户(对应于模拟中的患者)和操作员(对应于模拟中的卫生保健人员)的组合队列模拟了初级保健设置,其中受访者在尝试用VNRC捕获图像后完成了关于其用户体验的问卷调查。结果:在比较性能研究(N=108, K=206)中,VNRC捕获的图像中有98.5%(203/206)被评为足以用于临床解释,而Crystalvue NFC-700图像中有97.1%(200/206)被评为足以用于临床解释(比例差异为0.015,95% CI为-0.007 ~ 0.033)。在质量控制算法评价(N=172, K=343张图像)中,我们发现眼科医生确定的可分级状态(可分级或不可分级)与VNRC质量控制算法确定的捕获状态(重新捕获不需要或需要)之间呈正相关(φ=0.58, 95% CI 0.45-0.69)。在可用性研究中(n=15名用户和n=30名操作员),所有参与的用户(15/15)都表示他们可以很容易地进行双眼屏蔽。大多数用户和操作人员表示同意(从有些同意到非常同意)对成像过程的描述分别为直观(15/ 15,100%和29/ 30,97%),舒适(15/ 15,100%和30/ 30,100%),以及允许用户和操作人员的积极体验(15/ 15,100%和30/ 30,100%)。结论:我们关于视网膜相机系统的性能和可用性的研究结果支持其作为初级保健的集成端到端视网膜服务的部署。这些结果需要进一步的研究,以充分表征在更广泛和多样化的初级保健诊所的现实世界的可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance of a Retinal Imaging Camera With On-Device Intelligence for Primary Care: Retrospective Study.

Background: Access to screening continues to be a barrier for the early detection of diabetic retinopathy (DR). Primary care-based diabetic retinopathy screening could improve access, but operational challenges, such as cost and workflow management, hamper the widespread adoption of retinal camera systems in primary care clinics in the United States.

Objective: This study aimed to develop and evaluate a retinal screening system suitable for integration into a primary care workflow.

Methods: We developed a nonmydriatic, 45° field imaging retinal camera system, the Verily Numetric Retinal Camera (VNRC; Verily Life Sciences LLC), able to generate high-fidelity retinal images enabled by on-device intelligent features. The VNRC output flows into cloud-based software that accepts and routes digitized images for grading. We evaluated the performance and usability of the VNRC in 2 studies. A retrospective performance study compared the performance of VNRC against a reference camera (Crystalvue NFC-700 [Crystalvue Medical]) as well as the correlation between VNRC capture status and gradability (as determined by ophthalmologist graders). The usability study simulated a primary care setting for a combined cohort of trained and untrained users (corresponding to patients in the simulation) and operators (corresponding to health care personnel in the simulation), where respondents completed a questionnaire about their user experience after attempting to capture images with the VNRC.

Results: In the comparative performance study (N=108, K=206 images), a total of 98.5% (203/206) of images captured by the VNRC were graded as sufficient for clinical interpretation compared to 97.1% (200/206) of Crystalvue NFC-700 images (difference in proportion was 0.015, 95% CI -0.007 to 0.033). In the quality control algorithm evaluation (N=172, K=343 images), we found a positive association (φ=0.58, 95% CI 0.45-0.69) between gradability status (gradable or nongradable) as determined by ophthalmologists and the capture status (recapture not-needed or needed) as determined by the VNRC quality control algorithm. In the usability study (n=15 users and n=30 operators), all participating users (15/15) indicated that they were able to have both eyes screened easily. Most users and operators indicated agreement (from somewhat agree to strongly agree) with statements describing the imaging process as intuitive (15/15, 100% and 29/30, 97%), comfortable (15/15, 100% and 30/30, 100%), and allowing for a positive experience (15/15, 100% and 30/30, 100%), of users and operators, respectively.

Conclusions: Our findings about the performance and usability of this retinal camera system support its deployment as an integrated end-to-end retinal service for primary care. These results warrant additional studies to fully characterize real-world usability across a wider and diverse set of primary care clinics.

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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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