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Stochastic Model-Based Left Ventricle Segmentation in 3D Echocardiography Using Fractional Brownian Motion

机译:基于分数布朗运动的3D超声心动图中基于随机模型的左心室分割

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摘要

A novel approach for fully-automated segmentation of the left ventricle (LV) endocardial and epicardial contours is presented. This is mainly based on the natural physical characteristics of the LV shape structure. Both sides of the LV boundaries exhibit natural elliptical curvatures by having details on various scales, i.e. exhibiting fractal-like characteristics. The fractional Brownian motion (fBm), which is a non-stationary stochastic process, integrates well with the stochastic nature of ultrasound echoes. It has the advantage of representing a wide range of non-stationary signals and can quantify statistical local self-similarity throughout the time-sequence ultrasound images. The locally characterized boundaries of the fBm segmented LV were further iteratively refined using global information by means of second-order moments. The method is benchmarked using synthetic 3D echocardiography time-sequence ultrasound images for normal and different ischemic cardiomy-opathy, and results compared with state-of-the-art LV segmentation. Furthermore, preliminary results on real data from canine cases is presented.
机译:提出了一种自动分割左心室内膜和心外膜轮廓的新方法。这主要是基于LV形状结构的自然物理特性。 LV边界的两侧通过具有各种规模的细节而表现出自然的椭圆曲率,即表现出类似分形的特性。分数布朗运动(fBm)是一种非平稳的随机过程,与超声回波的随机性质很好地集成在一起。它的优点是可以表示各种非平稳信号,并且可以量化整个时间序列超声图像中的统计局部自相似性。 fBm分割的LV的局部特征边界通过二阶矩利用全局信息进一步迭代完善。该方法使用合成的3D超声心动图时间序列超声图像作为正常和不同缺血性心肌病的基准,并将结果与​​最新的LV分割相比较。此外,还提供了有关犬类病例真实数据的初步结果。

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