Segmentation of Left Ventricle From 3D Cardiac MR Image Sequences Using A Subject-Specific Dynamical Model.

Yun Zhu, Xenophon Papademetris, Albert Sinusas, James S Duncan
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Abstract

Statistical model-based segmentation of the left ventricle from cardiac images has received considerable attention in recent years. While a variety of statistical models have been shown to improve segmentation results, most of them are either static models (SM) which neglect the temporal coherence of a cardiac sequence or generic dynamical models (GDM) which neglect the inter-subject variability of cardiac shapes and deformations. In this paper, we use a subject-specific dynamical model (SSDM) that handles inter-subject variability and temporal dynamics (intra-subject variability) simultaneously. It can progressively identify the specific motion patterns of a new cardiac sequence based on the segmentations observed in the past frames. We formulate the integration of the SSDM into the segmentation process in a recursive Bayesian framework in order to segment each frame based on the intensity information from the current frame and the prediction from the past frames. We perform "Leave-one-out" test on 32 sequences to validate our approach. Quantitative analysis of experimental results shows that the segmentation with the SSDM outperforms those with the SM and GDM by having better global and local consistencies with the manual segmentation.

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利用特定受试者的动态模型从三维心脏磁共振图像序列中分割左心室
近年来,基于统计模型的心脏图像左心室分割技术受到了广泛关注。虽然各种统计模型已被证明能改善分割结果,但它们大多是静态模型(SM)或通用动态模型(GDM),前者忽视了心脏序列的时间连贯性,后者则忽视了心脏形状和变形的受试者间变异性。在本文中,我们使用了一种同时处理受试者间变异性和时间动态性(受试者内变异性)的受试者特定动态模型(SSDM)。它可以根据过去帧中观察到的分割,逐步识别新心脏序列的特定运动模式。我们将 SSDM 整合到递归贝叶斯框架的分割过程中,以便根据当前帧的强度信息和过去帧的预测来分割每一帧。我们对 32 个序列进行了 "Leave-one-out "测试,以验证我们的方法。对实验结果的定量分析表明,使用 SSDM 进行的分割优于使用 SM 和 GDM 进行的分割,因为它与人工分割具有更好的全局和局部一致性。
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