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Automated segmentation of the corneal endothelium in a large set of ‘real-world’ specular microscopy images using the U-Net architecture

机译:使用U-Net架构在大量的真实世界镜面显微镜图像中自动分割角膜内皮

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摘要

Monitoring the density of corneal endothelial cells (CEC) is essential in the management of corneal diseases. Its manual calculation is time consuming and prone to errors. U-Net, a neural network for biomedical image segmentation, has shown promising results in the automated segmentation of images of healthy corneas and good quality. The purpose of this study was to assess its performance in “real-world” CEC images (variable quality, different ophthalmologic diseases). The outcome measures were: precision and recall of the extraction of CEC, correctness of CEC density estimation, detection of ungradable images. A classical approach based on grayscale morphology and water shedding was pursued for comparison. There was good agreement between the automated image analysis and the manual annotation from the U-Net. R-square from Pearson’s correlation was 0.96. Recall of CEC averaged 0.34 and precision 0.84. The U-Net correctly predicted the CEC density in a large set of images of healthy and diseased corneas, including images of poor quality. It robustly ignored image regions with poor visibility of CEC. The classical approach, however, did not provide acceptable results. R-square from Pearson’s correlation with the ground truth was as low as 0.35.
机译:监测角膜内皮细胞(CEC)的密度对于控制角膜疾病至关重要。它的手动计算非常耗时并且容易出错。 U-Net是一种用于生物医学图像分割的神经网络,在对健康角膜和高质量图像进行自动分割方面显示出令人鼓舞的结果。这项研究的目的是评估其在“真实世界”的CEC图像中的表现(质量可变,不同的眼科疾病)。结果指标为:CEC提取的精度和召回率,CEC密度估计的正确性,不可分级图像的检测。寻求基于灰度形态学和水脱落的经典方法进行比较。自动图像分析和来自U-Net的手动注释之间达成了良好的协议。皮尔逊相关系数的R平方为0.96。 CEC的召回平均值为0.34,精度为0.84。 U-Net在健康和患病角膜的大量图像(包括质量较差的图像)中正确预测了CEC密度。它强大地忽略了CEC可见性差的图像区域。但是,经典方法未提供可接受的结果。皮尔逊(Pearson)与地面实况之间的相关性,R平方低至0.35。

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