从标记MRI图像中分割和分析三维心脏运动

Dimitris N. Metaxas, L. Axel, Z. Hu, A. Montillo, Kyoungju Park, Z. Qian
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引用次数: 5

摘要

本文概述了我们对MRI标记线心脏运动的自动分割和运动分析框架。它由一系列利用图像处理、可变形模型和有限元理论的新方法组成。我们的框架由几个步骤组成。在第一步中,我们使用Gabor滤波器组和可变形模型来自动分割标记线和心脏边界。然后将提取的标记线和边界用作心脏运动估计分析的体积可变形模型的输入。在这一步中,我们首先提取可以确定正常和病理心脏运动之间差异的参数。其次,使用期望最大化方法(EM),我们能够确定给定心脏的应力-应变关系和纤维方向。我们的假设是,与传统的2D方法相比,心脏的3D形状和运动分析可以更快、更及时地诊断心脏病。我们给出了一系列的分割、形状、运动和组织特性分析结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation and analysis of 3D cardiac motion from tagged MRI images
This paper gives an overview of our framework for the automated segmentation and motion analysis of cardiac motion from MRI tagging lines. It consists of a series of novel methods which utilize theory from image processing, deformable models and finite elements. Our framework consists of several steps. In the first step we use Gabor filter banks and deformable models for the automatic segmentation of tagging lines and cardiac boundaries. The extracted tagging lines and boundaries are then used as input to a volumetric deformable model for the heart's motion estimation analysis. In this step we first extract parameters that can determine the difference between a normal and a pathologic heart motion. Second, using an expectation-maximization methodology (EM) we are able to determine a given heart's stress-strain relationship and fiber orientation. Our hypothesis is that the 3D shape and motion analysis of the heart will allow the faster and timely diagnosis of heart disease compared to traditional 2D methods. We present a series of segmentation, shape, motion and tissue property analysis results.
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