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使用新型形状约束广义交叉验证(GCV)模型从序列超声图像中半自动分割主动脉瓣。

Semiautomatic segmentation of aortic valve from sequenced ultrasound image using a novel shape-constraint GCV model.

作者信息

Guo Yiting, Dong Bin, Wang Bing, Xie Hongzhi, Zhang Shuyang, Gu Lixu

机构信息

Multi-disciplinary Research Center, Hebei University, Baoding 071000, China.

Hebei University Affiliated Hospital, Hebei Baoding 071000, China.

出版信息

Med Phys. 2014 Jul;41(7):072901. doi: 10.1118/1.4876735.

Abstract

PURPOSE

Effective and accurate segmentation of the aortic valve (AV) from sequenced ultrasound (US) images remains a technical challenge because of intrinsic factors of ultrasound images that impact the quality and the continuous changes of shape and position of segmented objects. In this paper, a novel shape-constraint gradient Chan-Vese (GCV) model is proposed for segmenting the AV from time serial echocardiography.

METHODS

The GCV model is derived by incorporating the energy of the gradient vector flow into a CV model framework, where the gradient vector energy term is introduced by calculating the deviation angle between the inward normal force of the evolution contour and the gradient vector force. The flow force enlarges the capture range and enhances the blurred boundaries of objects. This is achieved by adding a circle-like contour (constructed using the AV structure region as a constraint shape) as an energy item to the GCV model through the shape comparison function. This shape-constrained energy can enhance the image constraint force by effectively connecting separate gaps of the object edge as well as driving the evolution contour to quickly approach the ideal object. Because of the slight movement of the AV in adjacent frames, the initial constraint shape is defined by users, with the other constraint shapes being derived from the segmentation results of adjacent sequence frames after morphological filtering. The AV is segmented from the US images by minimizing the proposed energy function.

RESULTS

To evaluate the performance of the proposed method, five assessment parameters were used to compare it with manual delineations performed by radiologists (gold standards). Three hundred and fifteen images acquired from nine groups were analyzed in the experiment. The area-metric overlap error rate was 6.89% ± 2.88%, the relative area difference rate 3.94% ± 2.63%, the average symmetric contour distance 1.08 ± 0.43 mm, the root mean square symmetric contour distance 1.37 ± 0.52 mm, and the maximum symmetric contour distance was 3.57 ± 1.72 mm.

CONCLUSIONS

Compared with the CV model, as a result of the combination of the gradient vector and neighborhood shape information, this semiautomatic segmentation method significantly improves the accuracy and robustness of AV segmentation, making it feasible for improved segmentation of aortic valves from US images that have fuzzy boundaries.

摘要

目的

由于超声图像的内在因素会影响图像质量以及分割对象形状和位置的持续变化,从序列超声(US)图像中有效且准确地分割主动脉瓣(AV)仍然是一项技术挑战。本文提出了一种新颖的形状约束梯度Chan-Vese(GCV)模型,用于从时间序列超声心动图中分割主动脉瓣。

方法

通过将梯度向量流的能量纳入CV模型框架来推导GCV模型,其中通过计算演化轮廓的内向法向力与梯度向量力之间的偏差角来引入梯度向量能量项。流体力扩大了捕获范围并增强了对象的模糊边界。这是通过形状比较函数将一个类似圆形的轮廓(使用主动脉瓣结构区域作为约束形状构建)作为能量项添加到GCV模型中来实现的。这种形状约束能量可以通过有效连接对象边缘的分离间隙以及驱动演化轮廓快速接近理想对象来增强图像约束力。由于主动脉瓣在相邻帧中的轻微移动,初始约束形状由用户定义,其他约束形状则从形态学滤波后的相邻序列帧的分割结果中导出。通过最小化所提出的能量函数从超声图像中分割主动脉瓣。

结果

为了评估所提出方法的性能,使用五个评估参数将其与放射科医生进行的手动描绘(金标准)进行比较。实验分析了从九组中获取的315张图像。面积度量重叠误差率为6.89%±2.88%,相对面积差异率为3.94%±2.63%,平均对称轮廓距离为1.08±0.43毫米,均方根对称轮廓距离为1.37±0.52毫米,最大对称轮廓距离为3.57±1.72毫米。

结论

与CV模型相比,由于梯度向量和邻域形状信息的结合,这种半自动分割方法显著提高了主动脉瓣分割的准确性和鲁棒性,使得从具有模糊边界的超声图像中改进主动脉瓣分割成为可能。

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