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澳大利亚内分泌科和原住民医疗保健环境中基于真实世界人工智能的糖尿病视网膜病变机会性筛查。

Real-world artificial intelligence-based opportunistic screening for diabetic retinopathy in endocrinology and indigenous healthcare settings in Australia.

机构信息

Centre for Eye Research Australia, Royal Victorian Eye and Ear Hospital, Level 7, 32 Gisborne Street, East Melbourne, VIC, 3002, Australia.

Melbourne School of Population and Global Health, University of Melbourne, Melbourne, Australia.

出版信息

Sci Rep. 2021 Aug 4;11(1):15808. doi: 10.1038/s41598-021-94178-5.

Abstract

This study investigated the diagnostic performance, feasibility, and end-user experiences of an artificial intelligence (AI)-assisted diabetic retinopathy (DR) screening model in real-world Australian healthcare settings. The study consisted of two components: (1) DR screening of patients using an AI-assisted system and (2) in-depth interviews with health professionals involved in implementing screening. Participants with type 1 or type 2 diabetes mellitus attending two endocrinology outpatient and three Aboriginal Medical Services clinics between March 2018 and May 2019 were invited to a prospective observational study. A single 45-degree (macula centred), non-stereoscopic, colour retinal image was taken of each eye from participants and were instantly screened for referable DR using a custom offline automated AI system. A total of 236 participants, including 174 from endocrinology and 62 from Aboriginal Medical Services clinics, provided informed consent and 203 (86.0%) were included in the analysis. A total of 33 consenting participants (14%) were excluded from the primary analysis due to ungradable or missing images from small pupils (n = 21, 63.6%), cataract (n = 7, 21.2%), poor fixation (n = 2, 6.1%), technical issues (n = 2, 6.1%), and corneal scarring (n = 1, 3%). The area under the curve, sensitivity, and specificity of the AI system for referable DR were 0.92, 96.9% and 87.7%, respectively. There were 51 disagreements between the reference standard and index test diagnoses, including 29 which were manually graded as ungradable, 21 false positives, and one false negative. A total of 28 participants (11.9%) were referred for follow-up based on new ocular findings, among whom, 15 (53.6%) were able to be contacted and 9 (60%) adhered to referral. Of 207 participants who completed a satisfaction questionnaire, 93.7% specified they were either satisfied or extremely satisfied, and 93.2% specified they would be likely or extremely likely to use this service again. Clinical staff involved in screening most frequently noted that the AI system was easy to use, and the real-time diagnostic report was useful. Our study indicates that AI-assisted DR screening model is accurate and well-accepted by patients and clinicians in endocrinology and indigenous healthcare settings. Future deployments of AI-assisted screening models would require consideration of downstream referral pathways.

摘要

这项研究调查了人工智能(AI)辅助糖尿病视网膜病变(DR)筛查模型在澳大利亚真实医疗环境中的诊断性能、可行性和终端用户体验。该研究包括两个部分:(1)使用 AI 辅助系统对患者进行 DR 筛查;(2)对参与实施筛查的卫生专业人员进行深入访谈。2018 年 3 月至 2019 年 5 月期间,邀请在两家内分泌科门诊和三家原住民医疗服务诊所就诊的 1 型或 2 型糖尿病患者参加一项前瞻性观察研究。从参与者的每只眼睛拍摄一张 45 度(黄斑中心)、非立体、彩色视网膜图像,并使用定制的离线自动 AI 系统立即筛查可转诊的 DR。共有 236 名参与者(包括 174 名来自内分泌科,62 名来自原住民医疗服务诊所)提供了知情同意书,其中 203 名(86.0%)被纳入分析。由于瞳孔小(21 例,63.6%)、白内障(7 例,21.2%)、固视不良(2 例,6.1%)、技术问题(2 例,6.1%)和角膜瘢痕(1 例,3%)导致图像无法分级或缺失,共有 33 名同意参与的参与者(14%)被排除在主要分析之外。AI 系统对可转诊 DR 的曲线下面积、敏感性和特异性分别为 0.92、96.9%和 87.7%。参考标准和指标测试诊断之间存在 51 次分歧,其中 29 次被手动分级为无法分级,21 次为假阳性,1 次为假阴性。根据新的眼部发现,共有 51 名参与者被转诊进行随访,其中 15 名(53.6%)能够联系到,9 名(60%)接受了转诊。在完成满意度问卷调查的 207 名参与者中,93.7%表示满意或非常满意,93.2%表示很可能或极有可能再次使用该服务。参与筛查的临床工作人员最常指出,AI 系统易于使用,实时诊断报告很有用。我们的研究表明,人工智能辅助 DR 筛查模型在内分泌和原住民医疗保健环境中准确且被患者和临床医生广泛接受。未来部署人工智能辅助筛查模型需要考虑下游转诊途径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e3c6/8339059/3bfed2002089/41598_2021_94178_Fig1_HTML.jpg

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