Revolutionizing Diabetic Retinopathy Screening: Integrating AI-Based Retinal Imaging in Primary Care.

Journal of CME Pub Date : 2025-01-02 eCollection Date: 2025-01-01 DOI:10.1080/28338073.2024.2437294
Dale Kummerle, Dean Beals, Lesley Simon, Faith Rogers, Stan Pogroszewski
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Abstract

Diabetic retinopathy (DR) is a public health issue affecting millions in the United States and Europe. However, despite strong recommendations for screening at regular intervals by many professional societies, including the American Diabetes Association and the American Academy of Ophthalmology, screening rates remain suboptimal, with only 50-70% of patients with diabetes adhering to recommended annual eye exams. Barriers to screening include lack of awareness, socioeconomic factors, health care system fragmentation, and workforce shortages, among others. Artificial intelligence (AI)-based retinal screening tools offer promising solutions to improve DR detection in primary care settings. We describe a quality improvement and continuing medical education programme, starting in 2020, which has so far deployed 198 AI-equipped cameras in 5 health systems, covering approximately 151,000 patients with diabetes. To date, over 20,000 screenings were completed, with more than mild DR detected in more than 3,450 people, leading to specialist referrals for follow-up care. Notably, negative screenings potentially represent deferred specialist care. While AI adoption in healthcare presents challenges, its potential benefits in improving patient care and optimising resources are significant. Integrating AI-based DR screening with a comprehensive education and process improvement initiative in primary care practices warrants serious consideration, promising to enhance patient outcomes.

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革命性的糖尿病视网膜病变筛查:在初级保健中整合基于人工智能的视网膜成像。
糖尿病视网膜病变(DR)是影响美国和欧洲数百万人的公共卫生问题。然而,尽管包括美国糖尿病协会和美国眼科学会在内的许多专业协会强烈建议定期进行筛查,但筛查率仍然不理想,只有50-70%的糖尿病患者坚持每年进行眼科检查。筛查的障碍包括缺乏认识、社会经济因素、卫生保健系统碎片化和劳动力短缺等。基于人工智能(AI)的视网膜筛查工具为改善初级保健机构的DR检测提供了有希望的解决方案。我们描述了从2020年开始的质量改进和继续医学教育计划,该计划迄今已在5个卫生系统中部署了198台配备人工智能的摄像机,覆盖了大约15.1万名糖尿病患者。迄今为止,完成了2万多次筛查,在3450多人中发现了轻度耐药以上,导致专家转诊进行后续护理。值得注意的是,阴性筛查可能意味着推迟专科治疗。虽然人工智能在医疗保健领域的应用带来了挑战,但它在改善患者护理和优化资源方面的潜在好处是巨大的。将基于人工智能的DR筛查与初级保健实践中的全面教育和流程改进倡议相结合,值得认真考虑,有望提高患者的治疗效果。
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Correction. Revolutionizing Diabetic Retinopathy Screening: Integrating AI-Based Retinal Imaging in Primary Care. Developing an Annual Review of the Literature. Artificial Intelligence and ChatGPT in Medical Education: A Cross-Sectional Questionnaire on students' Competence. The Future of Generative AI in Continuing Professional Development (CPD): Crowdsourcing the Alliance Community.
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