Segmentation and analysis of 3D cardiac motion from tagged MRI images

Engineering in Medicine and Biology Society, 2003. Proceedings of the 25th Annual International Conference of the IEEE(2003)

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摘要
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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关键词
biomechanics,biomedical mri,cardiology,finite element analysis,image motion analysis,image segmentation,medical image processing,reviews,stress-strain relations,3d cardiac motion analysis,3d shape analysis,gabor filter banks,cardiac boundaries,deformable models,expectation-maximization methodology,fiber orientation,finite elements,heart disease diagnosis,image processing,overview,stress-strain relationship,tagged mri images,tagging lines,tissue property,volumetric deformable model,finite element,motion estimation,utility theory,expectation maximization
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