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基于区域的结构和统计测量的视网膜图像自动清晰度评估。

Automated clarity assessment of retinal images using regionally based structural and statistical measures.

机构信息

University of Aberdeen, Aberdeen University and Grampian University Hospitals, Foresterhill, Aberdeen AB25 2ZD, United Kingdom.

出版信息

Med Eng Phys. 2012 Sep;34(7):849-59. doi: 10.1016/j.medengphy.2011.09.027. Epub 2011 Oct 29.

Abstract

An automated image analysis system for application in mass medical screening must assess the clarity of the images before analysing their content. This is the case in grading for diabetic retinopathy screening where the failure to assess clarity could result in retinal images of people with retinopathy being erroneously classed as normal. This paper compares methods of clarity assessment based on the degradation of visible structures and based on the deviation of image properties outside expected norms caused by clarity loss. Vessel visibility measures and statistical measures were determined at locations in the image which have high saliency and these were used to obtain an image clarity assessment using supervised classification. The usefulness of the measures as indicators of image clarity was assessed. Tests were performed on 987 disc-centred and macula-centred retinal photographs (347 with inadequate clarity) obtained from the English National Screening Programme. Images with inadequate clarity were detected with 92.6% sensitivity at 90% specificity. In a set of 2000 macula-centred images (200 with inadequate clarity) from the Scottish Screening Programme, inadequate clarity was detected with 96.7% sensitivity at 90% specificity. This study has shown that structural and statistical measures are equally useful for retinal image clarity assessment.

摘要

用于大规模医学筛查的自动化图像分析系统必须在分析其内容之前评估图像的清晰度。在糖尿病视网膜病变筛查的分级中就是这种情况,如果不评估清晰度,可能会导致将患有视网膜病变的人的视网膜图像错误地归类为正常。本文比较了基于可见结构退化和基于清晰度损失导致图像属性偏离预期规范的清晰度评估方法。在图像中具有高显着性的位置确定了血管可视性度量和统计度量,并使用这些度量通过监督分类来获得图像清晰度评估。评估了这些措施作为图像清晰度指标的有用性。在从英国国家筛查计划获得的 987 张盘中心和黄斑中心视网膜照片(347 张清晰度不足)上进行了测试。在具有 90%特异性的情况下,对清晰度不足的图像的检测灵敏度为 92.6%。在来自苏格兰筛查计划的 2000 张黄斑中心图像(200 张清晰度不足)中,在具有 90%特异性的情况下,对清晰度不足的检测灵敏度为 96.7%。这项研究表明,结构和统计度量对于视网膜图像清晰度评估同样有用。

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