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Comparison of smartphone-based retinal imaging systems for diabetic retinopathy detection using deep learning

机译:基于智能手机的视网膜成像系统对糖尿病视网膜病变检测使用深度学习的比较

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Diabetic retinopathy (DR), the most common cause of vision loss, is caused by damage to the small blood vessels in the retina. If untreated, it may result in varying degrees of vision loss and even blindness. Since DR is a silent disease that may cause no symptoms or only mild vision problems, annual eye exams are crucial for early detection to improve chances of effective treatment where fundus cameras are used to capture retinal image. However, fundus cameras are too big and heavy to be transported easily and too costly to be purchased by every health clinic, so fundus cameras are an inconvenient tool for widespread screening. Recent technological developments have enabled to use of smartphones in designing small-sized, low-power, and affordable retinal imaging systems to perform DR screening and automated DR detection using image processing methods. In this paper, we investigate the smartphone-based portable retinal imaging systems available on the market and compare their image quality and the automatic DR detection accuracy using a deep learning framework. Based on the results, iNview retinal imaging system has the largest field of view and better image quality compared with iExaminer, D-Eye, and Peek Retina systems. The overall classification accuracy of smartphone-based systems are sorted as 61%, 62%, 69%, and 75% for iExaminer, D-Eye, Peek Retina, and iNview images, respectively. We observed that the network DR detection performance decreases as the field of view of the smartphone-based retinal systems get smaller where iNview is the largest and iExaminer is the smallest. The smartphone-based retina imaging systems can be used as an alternative to the direct ophthalmoscope. However, the field of view of the smartphone-based retina imaging systems plays an important role in determining the automatic DR detection accuracy.
机译:糖尿病视网膜病变(DR),最常见的视觉损失原因,是由视网膜中的小血管损伤引起的。如果未经处理,可能导致视觉损失甚至失明。由于DR是一种可能导致症状或仅温和视觉问题的沉默疾病,因此每年的眼科检查对于早期检测至关重要,以改善用于捕获视网膜图像的有效处理的有效处理的机会。但是,眼底相机太大而且很重,才能通过每个健康诊所购买,而且昂贵的往往是昂贵的,因此眼底照相机是广泛筛查的不方便工具。最近的技术开发使智能手机在设计小型,低功耗和实惠的视网膜成像系统时使用使用图像处理方法执行DR筛选和自动化DR检测。在本文中,我们调查了市场上可用的智能手机的便携式视网膜成像系统,并使用深度学习框架比较其图像质量和自动博士检测精度。基于结果,VINAIK视网膜成像系统与Iexaminer,D-Eye和Peek视网膜系统相比,具有最大的视野和更好的图像质量。基于智能手机的系统的整体分类准确性分别为Iexaminer,D-Eye,PEEK视网膜和监视图像的61%,62%,69%和75%。我们观察到,随着基于智能手机的视网膜系统的视野,网络DR检测性能降低了INVIEW是最大的,Iexaminer是最小的。基于智能手机的视网膜成像系统可以用作直接眼镜镜的替代品。然而,基于智能手机的视网膜成像系统的视野在确定自动DR检测精度方面起着重要作用。

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