伯利兹资源有限地区实施自主人工智能眼底照片分析前后糖尿病视网膜病变的检出率

Clinical ophthalmology (Auckland, N.Z.) Pub Date : 2025-03-21 eCollection Date: 2025-01-01 DOI:10.2147/OPTH.S490473
Houri Esmaeilkhanian, Karen G Gutierrez, David Myung, Ann Caroline Fisher
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引用次数: 0

摘要

目的:评估基于自主人工智能(AI)的设备在斯坦福伯利兹视力诊所(SBVC)服务的资源不足人群中筛查糖尿病视网膜病变(DR)的使用情况,并评估糖尿病(DM)和DR的频率。患者和方法:收集2017年至2024年所有患者的记录并进行分析,将研究分为两个时间段:ai前(2022年6月之前,SBVC实施LumineticsCore®设备之前)和ai后(2022年6月至今),并细分为covid - 19后和covid - 19前时期。患者根据自我报告的既往病史(PMH)分为DM阳性(诊断为DM)和DM阴性(无DM的PMH)。人工智能相机结果包括:轻度以上DR (MTMDR)阴性,MTMDR阳性,检查质量不足。结果:共纳入1897例患者,平均年龄47.6岁。人工智能设备对遭遇战的分级率为89.1%。与人工智能前(38/1258)相比,人工智能后(55/639)期间(包括COVID-19大流行期间)的DR检测频率显著增加。在糖尿病阴性患者中,ai后DR诊断的平均年龄(44.1岁)明显低于ai前(60.7岁)。DR和高血压之间有显著的关联。人工智能后DM检出率高于人工智能前。结论:基于人工智能的自主筛查通过减少对现场眼科医生的依赖,显著提高了医疗资源有限地区DR患者的检出率。这种创新的方法可以无缝地集成到初级保健环境中,技术人员可以在几分钟内快速有效地捕获图像。这项研究证明了自主人工智能在识别不同年龄段的DR和DM患者以及高血压等相关高负担疾病方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection Rate of Diabetic Retinopathy Before and After Implementation of Autonomous AI-based Fundus Photograph Analysis in a Resource-Limited Area in Belize.

Purpose: To evaluate the use of an autonomous artificial intelligence (AI)-based device to screen for diabetic retinopathy (DR) and to evaluate the frequency of diabetes mellitus (DM) and DR in an under-resourced population served by the Stanford Belize Vision Clinic (SBVC).

Patients and methods: The records of all patients from 2017 to 2024 were collected and analyzed, dividing the study into two time periods: Pre-AI (before June 2022, prior to the implementation of the LumineticsCore® device at SBVC) and Post-AI (from June 2022 to the present) and subdivided into post-COVID19 and pre-COVID19 periods. Patients were categorized based on self-reported past medical history (PMH) as DM positive (diagnosed DM) and DM negative (no PMH of DM). AI camera outcomes included: negative for more than mild DR (MTMDR), positive for MTMDR, and insufficient exam quality.

Results: A total of 1897 patients with a mean age of 47.6 years were included. The gradability of encounters by the AI device was 89.1%. The frequency of DR detection increased significantly in the Post-AI period (55/639) compared to the Pre-AI period (38/1258), including during the COVID-19 pandemic. The mean age of DR diagnosis was significantly lower in the Post-AI period (44.1 years) compared to Pre-AI period (60.7 years) among DM negative patients. There was a significant association between having DR and hypertension. Additionally, the detection rate of DM increased in the Post-AI period compared to Pre-AI period.

Conclusion: Autonomous AI-based screening significantly improves the detection of patients with DR in areas with limited healthcare resources by reducing dependence on on-field ophthalmologists. This innovative approach can be seamlessly integrated into primary care settings, with technicians capturing images quickly and efficiently within just a few minutes. This study demonstrates the effectiveness of autonomous AI in identifying patients with both DR and DM, as well as associated high-burden diseases such as hypertension, across various age ranges.

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