Segmentation of the evolving left ventricle by learning the dynamics

Walter Sun, M. Çetin, R. Chan, A. Willsky
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引用次数: 3

Abstract

We propose a method for recursive segmentation of the left ventricle (LV) across a temporal sequence of magnetic resonance (MR) images. The approach involves a technique for learning the LV boundary dynamics together with a particle-based inference algorithm on a loopy graphical model capturing the temporal periodicity of the heart. The dynamic system state is a low-dimensional representation of the boundary, and boundary estimation involves incorporating curve evolution into state estimation. By formulating the problem as one of state estimation, the segmentation at each particular time is based not only on the data observed at that instant, but also on predictions based on past and future boundary estimates. We assess and demonstrate the effectiveness of the proposed framework on a large data set of breath-hold cardiac MR image sequences.
通过动态学习对左心室进行分割
我们提出了一种方法递归分割左心室(LV)跨越时间序列的磁共振(MR)图像。该方法包括一种学习左心室边界动力学的技术,以及一种基于粒子的推理算法,该算法基于捕获心脏时间周期性的环形图形模型。动态系统状态是边界的低维表示,边界估计涉及到将曲线演化纳入状态估计。通过将问题表述为状态估计问题,每个特定时刻的分割不仅基于该时刻的观测数据,还基于基于过去和未来边界估计的预测。我们评估并证明了所提出的框架在憋气心脏MR图像序列的大型数据集上的有效性。
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