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Segmentation of ultrasound images of the carotid using RANSAC and cubic splines.

机译:使用RANSAC和三次样条对颈动脉超声图像进行分割。

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摘要

A new algorithm is proposed for the semi-automatic segmentation of the near-end and the far-end adventitia boundary of the common carotid artery in ultrasound images. It uses the random sample consensus method to estimate the most significant cubic splines fitting the edge map of a longitudinal section. The consensus of the geometric model (a spline) is evaluated through a new gain function, which integrates the responses to different discriminating features of the carotid boundary: the proximity of the geometric model to any edge or to valley shaped edges; the consistency between the orientation of the normal to the geometric model and the intensity gradient; and the distance to a rough estimate of the lumen boundary. A set of 50 longitudinal B-mode images of the common carotid and their manual segmentations performed by two medical experts were used to assess the performance of the method. The image set was taken from 25 different subjects, most of them having plaques of different classes (class II to class IV), sizes and shapes. The quantitative evaluation showed promising results, having detection errors similar to the ones observed in manual segmentations for 95% of the far-end boundaries and 73% of the near-end boundaries.
机译:针对超声图像中颈总动脉近端和远端外膜边界的半自动分割,提出了一种新的算法。它使用随机样本共识方法来估计拟合纵向截面的边缘图的最高有效三次样条。通过新的增益函数评估几何模型(样条曲线)的一致性,该函数整合了对颈动脉边界的不同区分特征的响应:几何模型与任何边缘或谷形边缘的接近度;几何模型的法线方向与强度梯度之间的一致性;以及到管腔边界的粗略估计的距离。由两名医学专家进行的一组50个颈总动脉纵向B型图像及其手动分割被用于评估该方法的性能。该图像集来自25个不同的受试者,其中大多数受试者具有不同类别(II级至IV级),大小和形状的斑块。定量评估显示出令人鼓舞的结果,对于95%的远端边界和73%的近端边界,其检测错误与手动分割中观察到的相似。

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