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Fast retinal layer identification for optical coherence tomography images

机译:快速视网膜层识别,用于光学相干断层扫描图像

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摘要

Fast method for identifying the internal limiting membrane (ILM) and retinal pigment epithelium (RPE) from optical coherence tomography images is demonstrated. To avoid unnecessary increment of calculation time, a strong down-sampling of the original data set is performed to reduce a number of processed pixels. In ILM segmentation, the obtained data cube is filtered with two different kinds of parameters and two estimates for the position of ILM is determined. A simple smoothness value is determined for both estimates and better estimate is used for future processing. A smaller portion of pixels around estimated ILM are extracted from the down sampled data and filtered again and new estimation for ILM position is determined. That procedure is repeated with smaller portion of pixels around ILM and with different filtering parameters. The principle of RPE segmentation is very much similar with ILM identification. Only the used filtering and processing parameters are changed. Algorithm was tested with eight data sets with good reliability. Over 97% of each scans had smaller segmentation error than 5 pixels. Total required data processing time (ILM and RPE segmentation) for data volume with (600x1500x128) pixels was less than 9 seconds.
机译:证明了一种从光学相干断层扫描图像中鉴定内部限制膜(ILM)和视网膜色素上皮细胞(RPE)的快速方法。为了避免不必要地增加计算时间,将对原始数据集进行强烈的下采样以减少处理后的像素数量。在ILM分割中,使用两种不同类型的参数对获得的数据立方体进行过滤,并确定ILM位置的两个估计值。确定两个估计的简单平滑度值,然后将更好的估计用于将来的处理。从向下采样的数据中提取估计的ILM周围像素的一小部分,并再次进行滤波,并确定ILM位置的新估计。用ILM周围较小的像素部分和不同的滤波参数重复该过程。 RPE分割的原理与ILM识别非常相似。仅更改使用的过滤和处理参数。使用八个数据集对算法进行了测试,结果具有良好的可靠性。每次扫描中超过97%的分割误差小于5个像素。具有(600x1500x128)像素的数据量所需的数据处理总时间(ILM和RPE分段)少于9秒。

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