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Segmentation of retinal fluids and hyperreflective foci using deep learning approach in optical coherence tomography scans

机译:光学相干断层扫描中深入学习方法的视网膜液和超侵入性焦点的分割

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Retinal diseases are a common cause of blindness around the world, early detection of clinical findings can help to avoid vision loss in patients. Optical coherence tomography images have been widely used to diagnose retinal diseases, due to the capacity to show in detail findings as drusen, hyperreflective foci, and intraretinal and subretinal fluids. The location of findings is vital to identify and follow-up the retinal disease. However, the detection and segmentation of these findings is not an easy task due to artifacts noise, and the time consuming even to experts ophthalmologist. This paper proposes a computational method based on deep learning to automatically identify fluids and hyperreflective foci as a tool to identify retinal diseases through the use of OCT images. The method was evaluated on a set of OCT images manually annotated by experts. The experimental results present a Dice coefficient of 0,4437 and 0,6245 in the segmentation task of fluids (intraretinal fluids and subretinal fluids) and hyperreflective foci, respectively.
机译:视网膜疾病是世界各地失明的常见原因,早期检测临床调查结果可以帮助避免患者视力丧失。光学相干断层扫描图像已经被广泛地用于诊断视网膜疾病,由于详细的调查结果如玻璃疣,高反光灶,和视网膜内和视网膜下的流体显示的能力。发现的位置至关重要,识别和随访视网膜疾病。然而,由于伪像噪声,这些发现的检测和分割并不是一件容易的任务,并且甚至偶数甚至是专家眼科医生的耗时。本文提出了一种基于深度学习的计算方法,以自动识别流体和超腐蚀性焦点作为通过使用OCT图像鉴定视网膜疾病的工具。该方法在由专家手动注释的一组OCT图像上进行评估。实验结果在流体(鼻内流体和沉积液)和超腐蚀性焦点的分割任务中存在0,4437和0,6245的骰子系数。

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