Improving diabetic retinopathy screening using artificial intelligence: design, evaluation and before-and-after study of a custom development.

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES
Frontiers in digital health Pub Date : 2025-06-19 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1547045
Imanol Pinto, Álvaro Olazarán, David Jurío, Borja De la Osa, Miguel Sainz, Aritz Oscoz, Jerónimo Ballaz, Javier Gorricho, Mikel Galar, José Andonegui
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引用次数: 0

Abstract

Background: The worst outcomes of diabetic retinopathy (DR) can be prevented by implementing DR screening programs assisted by AI. At the University Hospital of Navarre (HUN), Spain, general practitioners (GPs) grade fundus images in an ongoing DR screening program, referring to a second screening level (ophthalmologist) target patients.

Methods: After collecting their requirements, HUN decided to develop a custom AI tool, called NaIA-RD, to assist their GPs in DR screening. This paper introduces NaIA-RD, details its implementation, and highlights its unique combination of DR and retinal image quality grading in a single system. Its impact is measured in an unprecedented before-and-after study that compares 19,828 patients screened before NaIA-RD's implementation and 22,962 patients screened after.

Results: NaIA-RD influenced the screening criteria of 3/4 GPs, increasing their sensitivity. Agreement between NaIA-RD and the GPs was high for non-referral proposals (94.6% or more), but lower and variable (from 23.4% to 86.6%) for referral proposals. An ophthalmologist discarded a NaIA-RD error in most of contradicted referral proposals by labeling the 93% of a sample of them as referable. In an autonomous setup, NaIA-RD would have reduced the study visualization workload by 4.27 times without missing a single case of sight-threatening DR referred by a GP.

Conclusion: DR screening was more effective when supported by NaIA-RD, which could be safely used to autonomously perform the first level of screening. This shows how AI devices, when seamlessly integrated into clinical workflows, can help improve clinical pathways in the long term.

使用人工智能改善糖尿病视网膜病变筛查:定制开发的设计、评估和前后研究。
背景:通过实施人工智能辅助的糖尿病视网膜病变(DR)筛查项目,可以预防最坏的结果。在西班牙纳瓦拉大学医院(HUN),在一项正在进行的DR筛查项目中,全科医生(gp)对眼底图像进行分级,指的是第二筛查级别(眼科医生)的目标患者。方法:在收集了他们的需求后,HUN决定开发一种定制的人工智能工具,称为NaIA-RD,以协助他们的全科医生进行DR筛查。本文介绍了NaIA-RD,详细介绍了其实现方法,并重点介绍了其独特的将DR和视网膜图像质量分级在单一系统中的结合。它的影响是在一项前所未有的前后研究中衡量的,该研究比较了NaIA-RD实施前和实施后筛查的19,828名患者和22,962名患者。结果:NaIA-RD影响了3/4 gp的筛选标准,提高了其敏感性。NaIA-RD与全科医生在非转诊建议上的一致性较高(94.6%或更高),但在转诊建议上的一致性较低且不稳定(从23.4%到86.6%)。一位眼科医生在大多数相互矛盾的转诊建议中,通过将93%的样本标记为可转诊,从而消除了NaIA-RD的错误。在自主设置中,NaIA-RD将减少4.27倍的研究可视化工作量,而不会遗漏一个由全科医生推荐的视力威胁DR病例。结论:在NaIA-RD的支持下,DR筛查更有效,可以安全地自主进行第一级筛查。这表明,当人工智能设备无缝集成到临床工作流程中时,从长远来看可以帮助改善临床途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
4.20
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