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Contextual detection of diabetic pathology in wide-field retinal angiograms

机译:宽场视网膜血管造影中糖尿病病理学的上下文检测

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We report a novel algorithm to locate vascular leakage and ischemia in retinal angiographic image sequences leveraging contextual knowledge of co-occurring pathologies. The key contributions are the use of spatio-temporal features exploiting the evolution of intensity levels over the sequence and contextual knowledge to detect ischemia. The specific nature of these diseased regions is determined using an AdaBoost learning algorithm. Training was performed with a varied set of 16 ground-truth image sequences, and testing on unseen images. The images used were acquired with an Optos ultra-wide-field scanning laser ophthalmoscope. Evaluation against manual annotations demonstrates successful location of 93% of leakage regions and 70% of ischemic regions.
机译:我们报告了一种新型算法,以定位血管泄漏和缺血在利用共同发生的病理学的语境知识的视网膜血管造影图像序列中。关键贡献是利用时空特征利用序列和上下文知识的强度水平的演变来检测缺血。使用Adaboost学习算法确定这些患病区域的具体性质。使用各种各样的16个地面图像序列进行培训,并在看不见的图像上进行测试。使用光学器皿超宽场扫描激光眼压镜获取使用的图像。对手动注释的评估表明,93%的泄漏区域和70%的缺血地区的成功位置。

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