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Computer Assisted 'Top-Down' Assessment of Diabetic Retinopathy

机译:糖尿病视网膜病变的计算机辅助“自上而下”评估

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Diabetic retinopathy (DR) is a major cause of blindness in the develope d world, causing vision problems that are preventable if adequate screening and treatment systems are available. In the last ten years automated computer-based assessment for the presence of DR and its progression has improved, given high image quality. Current automated assessment is based on a bottom -up approach, which aims to detect lesions defined by ophthalmologists such as microaneu-rysms or new retinal vessel growth. An alternate perspective is to find new feature variables that may be able to identify not only certain stages of disease progression but may also be useful in identifying the risk of disease progression: a top-down approach. Our research proposes a novel feature variable, the colourisation index, and this is the first publication to consider the top -down approach. Ninety images were captured from non -dilated eyes using a non -mydriatic camera and imported into the coloriz ation index programme. A significant difference between no DR and retinopathy present (P < 0.05) was found. Further, usin g ANOVA and Fischer's LSD post hoc test, significant differences were found between no DR versus moderate DR (p = 0.003); no DR versus severe DR (p = 0.016) and mild DR versus moderate DR (p = 0.022). The index provides a quantitative result for the optic disc colour mix, suggesting that the colourisation index may be a useful tool in classifying disease progression.
机译:糖尿病性视网膜病(DR)是发展中世界失明的主要原因,如果可以使用足够的筛查和治疗系统,则可以预防视力问题。在过去的十年中,鉴于高图像质量,DR的存在及其进展的基于计算机的自动评估得到了改善。当前的自动评估基于自下而上的方法,该方法旨在检测眼科医生定义的病变,例如微气肿或视网膜新血管的生长。另一种观点是找到新的特征变量,这些特征变量不仅可以识别疾病进展的某些阶段,而且还可以用于识别疾病进展的风险:自上而下的方法。我们的研究提出了一个新颖的特征变量,即上色指数,这是第一个考虑自上而下方法的出版物。使用非散瞳相机从不散瞳的眼睛中捕获了90张图像,并将其导入到着色指数程序中。发现无DR和视网膜病变之间存在显着差异(P <0.05)。此外,通过ANOVA和Fischer的LSD事后检验,发现无DR与中度DR之间存在显着差异(p = 0.003);无DR vs严重DR(p = 0.016),轻度DR vs中度DR(p = 0.022)。该指数提供了视盘颜色混合的定量结果,表明着色指数可能是分类疾病进展的有用工具。

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