加拿大将人工智能与远程眼科相结合:综述。

Michael Balas,Jonathan A Micieli,Jovi Wong
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引用次数: 0

摘要

眼科领域发展迅速,技术创新提高了眼科疾病的诊断和管理水平。远程眼科,或将远程医疗用于眼科,已成为改善眼科医疗服务的一种很有前景的解决方案,尤其是对偏远地区或服务不足地区的患者而言。尽管远程眼科具有潜在的优势,但它也面临着巨大的挑战,包括需要由训练有素的临床医生对大量医疗图像进行分析和解读。人工智能(AI)已成为眼科领域的有力工具,能够协助临床医生诊断和治疗各种疾病。将人工智能模型集成到现有的远程眼科基础设施中,有可能通过降低成本、提高效率和增加获得专业护理的机会,彻底改变眼科护理服务。通过自动分析和解读临床数据和医学图像,人工智能模型可以减轻人类临床医生的负担,使他们能够专注于患者护理和疾病管理。我们利用 Arksey 和 O'Malley 框架获取并研究了有关加拿大远程眼科现状和眼科领域成功人工智能模型的现有文献。本综述涵盖截至 2022 年的文献,分为三个部分:1)加拿大现有的远程眼科基础设施及其优点和缺点;2)眼科领域杰出的人工智能模式,涵盖各种眼科疾病;3)以安全有效的方式弥合加拿大远程眼科与人工智能之间的差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating AI with tele-ophthalmology in Canada: a review.
The field of ophthalmology is rapidly advancing, with technological innovations enhancing the diagnosis and management of eye diseases. Tele-ophthalmology, or the use of telemedicine for ophthalmology, has emerged as a promising solution to improve access to eye care services, particularly for patients in remote or underserved areas. Despite its potential benefits, tele-ophthalmology faces significant challenges, including the need for high volumes of medical images to be analyzed and interpreted by trained clinicians. Artificial intelligence (AI) has emerged as a powerful tool in ophthalmology, capable of assisting clinicians in diagnosing and treating a variety of conditions. Integrating AI models into existing tele-ophthalmology infrastructure has the potential to revolutionize eye care services by reducing costs, improving efficiency, and increasing access to specialized care. By automating the analysis and interpretation of clinical data and medical images, AI models can reduce the burden on human clinicians, allowing them to focus on patient care and disease management. Available literature on the current status of tele-ophthalmology in Canada and successful AI models in ophthalmology was acquired and examined using the Arksey and O'Malley framework. This review covers literature up to 2022 and is split into 3 sections: 1) existing Canadian tele-ophthalmology infrastructure, with its benefits and drawbacks; 2) preeminent AI models in ophthalmology, across a variety of ocular conditions; and 3) bridging the gap between Canadian tele-ophthalmology and AI in a safe and effective manner.
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