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Automated Segmentation of Esophagus Layers from OCT Images Using Fast Marching Method

机译:使用快速行进方法自动分割OCT图像的食道层

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Thickness of the esophagus is an important diagnostic marker for many esophagus diseases. While labeling boundaries by manual to compute each layer's average thickness is time-consuming and subjective. In this paper, we present a new fully automatic algorithm which includes Fast Marching Method (FMM) and Fourth-Order Runge-Kutta method (RK4) to identify five esophagus layers on optical coherence tomography (OCT) images. FMM is used to calculate the weighted geodesic distance. In particular, the velocity function involved in this method combines vertical gradient, horizontal gradient and curvature so that it not only can divide flat borders but also irregular borders. RK4 is used to find the shortest path which is the boundary to be segmented. The experimental comparison between automatic and manual is performed on 400 healthy guinea pig esophagus OCT images and the mean absolute error thickness difference between them is less than 6 pixels while the value can reach to 9.41 pixels at most between two observers.
机译:食道厚度是许多食道疾病的重要诊断标志物。虽然通过手动标记边界来计算每层的平均厚度是耗时和主观的。在本文中,我们提出了一种新的全自动算法,包括快速行进方法(FMM)和四阶runge-Kutta方法(RK4),用于识别光学相干断层扫描(OCT)图像上的五个食道层。 FMM用于计算加权的测地距。特别地,该方法中涉及的速度功能结合了垂直梯度,水平梯度和曲率,使得它不仅可以划分扁平边框,而且不仅可以划分扁平边框,还可以分开不规则的边界。 RK4用于找到最短的路径,该路径是要分割的边界。在400个健康的豚鼠食道OCT图像上进行自动和手动之间的实验比较,并且它们之间的平均绝对误差厚度差异小于6个像素,而该值可以在两个观察者之间最大达到9.41像素。

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