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Kronecker Product Linear Exponent AR(1) Correlation Structures for Multivariate Repeated Measures

机译:多元重复测量的Kronecker积线性指数AR(1)相关结构

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摘要

Longitudinal imaging studies have moved to the forefront of medical research due to their ability to characterize spatio-temporal features of biological structures across the lifespan. Credible models of the correlations in longitudinal imaging require two or more pattern components. Valid inference requires enough flexibility of the correlation model to allow reasonable fidelity to the true pattern. On the other hand, the existence of computable estimates demands a parsimonious parameterization of the correlation structure. For many one-dimensional spatial or temporal arrays, the linear exponent autoregressive (LEAR) correlation structure meets these two opposing goals in one model. The LEAR structure is a flexible two-parameter correlation model that applies to situations in which the within-subject correlation decreases exponentially in time or space. It allows for an attenuation or acceleration of the exponential decay rate imposed by the commonly used continuous-time AR(1) structure. We propose the Kronecker product LEAR correlation structure for multivariate repeated measures data in which the correlation between measurements for a given subject is induced by two factors (e.g., spatial and temporal dependence). Excellent analytic and numerical properties make the Kronecker product LEAR model a valuable addition to the suite of parsimonious correlation structures for multivariate repeated measures data. Longitudinal medical imaging data of caudate morphology in schizophrenia illustrates the appeal of the Kronecker product LEAR correlation structure.
机译:纵向成像研究已经能够表征整个生命周期中生物结构的时空特征,因此已经走到了医学研究的前沿。纵向成像中相关性的可信模型需要两个或多个图案分量。有效推论需要相关模型足够的灵活性,以允许对真实模式进行合理的保真度。另一方面,可计算估计的存在要求对相关结构进行简约的参数化。对于许多一维空间或时间数组,线性指数自回归(LEAR)相关结构在一个模型中满足了这两个相对的目标。 LEAR结构是一种灵活的两参数关联模型,适用于对象内部关联在时间或空间上呈指数下降的情况。它允许衰减或加速由常用的连续时间AR(1)结构施加的指数衰减率。我们提出了用于多变量重复测量数据的Kronecker乘积LEAR相关结构,其中给定对象的测量之间的相关性是由两个因素(例如,空间和时间依赖性)引起的。出色的分析和数值属性使Kronecker产品LEAR模型成为多变量重复测量数据的简约相关结构套件的重要补充。精神分裂症的尾状形态的纵向医学成像数据说明了克罗内克产品李尔相关结构的吸引力。

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