Mudie Lucy I, Wang Xueyang, Friedman David S, Brady Christopher J
Wilmer Eye Institute, Johns Hopkins University School of Medicine, 600 N. Wolfe St. Maumenee 711, Baltimore, MD, 21281, USA.
Curr Diab Rep. 2017 Sep 23;17(11):106. doi: 10.1007/s11892-017-0940-x.
As the number of people with diabetic retinopathy (DR) in the USA is expected to increase threefold by 2050, the need to reduce health care costs associated with screening for this treatable disease is ever present. Crowdsourcing and automated retinal image analysis (ARIA) are two areas where new technology has been applied to reduce costs in screening for DR. This paper reviews the current literature surrounding these new technologies.
Crowdsourcing has high sensitivity for normal vs abnormal images; however, when multiple categories for severity of DR are added, specificity is reduced. ARIAs have higher sensitivity and specificity, and some commercial ARIA programs are already in use. Deep learning enhanced ARIAs appear to offer even more improvement in ARIA grading accuracy. The utilization of crowdsourcing and ARIAs may be a key to reducing the time and cost burden of processing images from DR screening.
预计到2050年,美国糖尿病视网膜病变(DR)患者数量将增加两倍,因此降低与这种可治疗疾病筛查相关的医疗保健成本的需求一直存在。众包和自动视网膜图像分析(ARIA)是应用新技术以降低DR筛查成本的两个领域。本文综述了围绕这些新技术的当前文献。
众包对正常图像与异常图像具有较高的敏感性;然而,当增加DR严重程度的多个类别时,特异性会降低。ARIA具有更高的敏感性和特异性,并且一些商业ARIA程序已经在使用。深度学习增强的ARIA似乎在ARIA分级准确性方面提供了更大的改进。众包和ARIA的应用可能是减轻DR筛查图像处理时间和成本负担的关键。