流形纵向数据分析的Sasaki度量。

Prasanna Muralidharan, P Thomas Fletcher
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引用次数: 48

摘要

纵向数据出现在许多应用程序中,其目标是了解单个实体随时间的变化。在本文中,我们提出了一种分析在黎曼流形中取值的纵向数据的方法。一个驱动应用是描述解剖形状变化的特征,并区分健康的解剖趋势与疾病引起的解剖趋势。我们提出了一个生成层次模型,其中每个个体都由测地线趋势建模,而测地线趋势又被认为是总体平均测地线趋势的扰动。模型中的每个测地线可以由一个起点和速度唯一地参数化,即切线束中的一个点。这些参数之间的比较是通过Sasaki度量来实现的,Sasaki度量提供了切线束上的自然距离度量。通过将霍特林T 2统计量推广到流形,我们对两组纵向数据之间的差异进行了统计假设检验。我们证明了这些方法的能力,以区分形状变化的差异在纵向胼胝体数据与痴呆受试者与健康老化对照。
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Sasaki Metrics for Analysis of Longitudinal Data on Manifolds.

Longitudinal data arises in many applications in which the goal is to understand changes in individual entities over time. In this paper, we present a method for analyzing longitudinal data that take values in a Riemannian manifold. A driving application is to characterize anatomical shape changes and to distinguish between trends in anatomy that are healthy versus those that are due to disease. We present a generative hierarchical model in which each individual is modeled by a geodesic trend, which in turn is considered as a perturbation of the mean geodesic trend for the population. Each geodesic in the model can be uniquely parameterized by a starting point and velocity, i.e., a point in the tangent bundle. Comparison between these parameters is achieved through the Sasaki metric, which provides a natural distance metric on the tangent bundle. We develop a statistical hypothesis test for differences between two groups of longitudinal data by generalizing the Hotelling T 2 statistic to manifolds. We demonstrate the ability of these methods to distinguish differences in shape changes in a comparison of longitudinal corpus callosum data in subjects with dementia versus healthily aging controls.

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CiteScore
43.50
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