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Different fundus imaging modalities and technical factors in AI screening for diabetic retinopathy: a review

机译:糖尿病视网膜病变筛查的不同眼底成像方式和技术因素:综述

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Abstract Background Effective screening is a desirable method for the early detection and successful treatment for diabetic retinopathy, and fundus photography is currently the dominant medium for retinal imaging due to its convenience and accessibility. Manual screening using fundus photographs has however involved considerable costs for patients, clinicians and national health systems, which has limited its application particularly in less-developed countries. The advent of artificial intelligence, and in particular deep learning techniques, has however raised the possibility of widespread automated screening. Main text In this review, we first briefly survey major published advances in retinal analysis using artificial intelligence. We take care to separately describe standard multiple-field fundus photography, and the newer modalities of ultra-wide field photography and smartphone-based photography. Finally, we consider several machine learning concepts that have been particularly relevant to the domain and illustrate their usage with extant works. Conclusions In the ophthalmology field, it was demonstrated that deep learning tools for diabetic retinopathy show clinically acceptable diagnostic performance when using colour retinal fundus images. Artificial intelligence models are among the most promising solutions to tackle the burden of diabetic retinopathy management in a comprehensive manner. However, future research is crucial to assess the potential clinical deployment, evaluate the cost-effectiveness of different DL systems in clinical practice and improve clinical acceptance.
机译:摘要背景有效筛选是糖尿病视网膜病变的早期检测和成功治疗的理想方法,目前是视网膜成像的主要介质,因为其便于和可访问性。然而,使用眼底拍摄的手动筛选涉及患者,临床医生和国家卫生系统的相当大的成本,这些卫生系统在较欠发达国家的应用中限制了其应用。然而,人工智能的出现,特别是深入学习技术,但是提出了广泛的自动筛查的可能性。本综述中的主要文字,我们首先使用人工智能将主要公布的视网膜分析推出进行了调查。我们注意单独描述标准的多场眼底摄影,以及超宽野摄影和基于智能手机摄影的较新模式。最后,我们考虑了几种与域尤为相关的机器学习概念,并说明了它们与现存工程的用法。结论在眼科领域,据证明了糖尿病视网膜病变的深层学习工具在使用彩色视网膜眼底图像时显示出临床上可接受的诊断性能。人工智能模型是以全面的方式解决糖尿病视网膜病管理负担的最有希望的解决方案之一。然而,未来的研究对于评估潜在的临床部署至关重要,评估不同DL系统在临床实践中的成本效益,提高临床验收。

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