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Building a 4D statistical model of the left ventricle from cardiac MR images using Kernel PCA

机译:使用Kernel PCA从心脏MR图像建立左心室的4D统计模型

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In this paper, we construct a 4D statistical model of the left ventricle using human cardiac short-axis MR images. The initial atlas in natural coordinate system is built for the end-diastolic frame. The landmarks extracted from it are propagated to all frames of all datasets. Kernel PCA is utilized to explore the nonlinear variation of landmarks. The distribution of the landmarks is divided into the inter- and intra-subject subspaces. The results of kernel PCA are compared to linear PCA for each of these subspaces by calculating the compactness capacity, specificity and generalization ability measures. We investigate the behavior of the nonlinear model for different values of the kernel parameter. The results show that the model built by PCA is more compact. For a constant number of modes the reconstruction error is approximately equal for both models. KPCA produces a statistical model with substantially better specificity.
机译:在本文中,我们使用人类心脏短轴MR图像构建左心室的4D统计模型。自然坐标系中的初始地图集是为舒张末期框架建立的。从中提取的地标将传播到所有数据集的所有帧。内核PCA用于探索地标的非线性变化。地标的分布分为对象间和对象内子空间。通过计算紧缩能力,特异性和泛化能力的度量,将内核PCA的结果与这些子空间中的每个子空间的线性PCA进行比较。我们研究了针对内核参数不同值的非线性模型的行为。结果表明,PCA建立的模型更为紧凑。对于恒定数量的模式,两个模型的重建误差近似相等。 KPCA产生具有明显更好特异性的统计模型。

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