Detection of retinal capillary nonperfusion in fundus fluorescein angiogram of diabetic retinopathy

S. Rasta, Shima Nikfarjam, A. Javadzadeh
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引用次数: 31

Abstract

Introduction: Retinal capillary nonperfusion (CNP) is one of the retinal vascular diseases in diabetic retinopathy (DR) patients. As there is no comprehensive detection technique to recognize CNP areas, we proposed a different method for computing detection of ischemic retina, non-perfused (NP) regions, in fundus fluorescein angiogram (FFA) images. Methods: Whilst major vessels appear as ridges, non-perfused areas are usually observed as ponds that are surrounded by healthy capillaries in FFA images. A new technique using homomorphic filtering to correct light illumination and detect the ponds surrounded in healthy capillaries on FFA images was designed and applied on DR fundus images. These images were acquired from the diabetic patients who had referred to the Nikookari hospital and were diagnosed for diabetic retinopathy during one year. Our strategy was screening the whole image with a fixed window size, which is small enough to enclose areas with identified topographic characteristics. To discard false nominees, we also performed a thresholding operation on the screen and marked images. To validate its performance we applied our detection algorithm on 41 FFA diabetic retinopathy fundus images in which the CNP areas were manually delineated by three clinical experts. Results: Lesions were found as smooth regions with very high uniformity, low entropy, and small intensity variations in FFA images. The results of automated detection method were compared with manually marked CNP areas so achieved sensitivity of 81%, specificity of 78%, and accuracy of 91%.The result was present as a Receiver operating character (ROC) curve, which has an area under the curve (AUC) of 0.796 with 95% confidence intervals. Conclusion: This technique introduced a new automated detection algorithm to recognize non-perfusion lesions on FFA. This has potential to assist detecting and managing of ischemic retina and may be incorporated into automated grading diabetic retinopathy structures.
糖尿病视网膜病变眼底荧光素血管造影检测视网膜毛细血管非灌注
视网膜毛细血管非灌注(CNP)是糖尿病视网膜病变(DR)患者视网膜血管病变之一。由于目前还没有全面的检测技术来识别CNP区域,我们提出了一种不同的方法来计算检测眼底荧光素血管造影(FFA)图像中缺血性视网膜的非灌注(NP)区域。方法:在FFA图像中,主要血管呈脊状,未灌注区域通常呈池塘状,周围有健康的毛细血管。设计了一种利用同态滤波校正FFA图像上的光照和检测健康毛细血管周围的池塘的新技术,并将其应用于DR眼底图像。这些图像来自于在一年内转诊到Nikookari医院并被诊断为糖尿病视网膜病变的糖尿病患者。我们的策略是用固定的窗口大小筛选整个图像,窗口大小足够小,可以将具有已识别地形特征的区域围起来。为了排除虚假提名,我们还对屏幕进行了阈值操作并标记了图像。为了验证其性能,我们将该检测算法应用于41张FFA糖尿病视网膜病变眼底图像,其中CNP区域由三位临床专家手动划定。结果:在FFA图像中发现病灶为光滑区域,均匀性非常高,熵值低,强度变化小。将自动检测结果与人工标记CNP区域进行比较,灵敏度为81%,特异度为78%,准确率为91%。结果以受试者工作特征(ROC)曲线表示,曲线下面积(AUC)为0.796,置信区间为95%。结论:该技术为FFA非灌注病变的识别提供了一种新的自动检测算法。这有可能帮助检测和管理缺血性视网膜,并可能纳入糖尿病视网膜病变结构的自动分级。
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