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Linear models with a generalized AR(1) covariance structure for longitudinal and spatial data.

机译:具有用于纵向和空间数据的广义AR(1)协方差结构的线性模型。

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摘要

Cross-sectional and longitudinal imaging studies are moving increasingly to the forefront of medical research due to their ability to characterize spatial and spatiotemporal features of biological structures across the lifespan. With Gaussian data, such designs require the general linear model for repeated measures data when standard multivariate techniques do not apply. A key advantage of this model lies in the flexibility of modeling the covariance of the outcome as well as the mean. Proper specification of the covariance model can be essential for the accurate estimation of and inference about the means and covariates of interest.;Many repeated measures settings have within-subject correlation decreasing exponentially in time or space. Even though observed correlations often decay at a much slower or much faster rate than the AR(1) structure dictates, it sees the most use among the variety of correlation patterns available. A three-parameter generalization of the continuous-time AR(1) structure, termed the generalized autoregressive (GAR) covariance structure, accommodates much slower and much faster correlation decay patterns. Special cases of the GAR model include the AR(1) and equal correlation (as in compound symmetry) models. The flexibility achieved with three parameters makes the GAR structure especially attractive for the High Dimension, Low Sample Size case so common in medical imaging and various kinds of "-omics" data. Excellent analytic and numerical properties help make the GAR model a valuable addition to the suite of parsimonious covariance structures for repeated measures data.;The accuracy of inference about the parameters of the GAR model in a moderately large sample context is assessed. The GAR covariance model is shown to be far more robust to misspecification in controlling fixed effect test size than the AR(1) model. It is as robust to misspecification as another comparable model, the damped exponential (DE), while possessing better statistical and convergence properties.;The GAR model is extended to the multivariate repeated measures context via the development of a Kronecker product GAR covariance structure. This structure allows modeling data in which the correlation between measurements for a given subject is induced by two factors (e.g., spatio-temporal data). A key advantage of the model lies in the ease of interpretation in terms of the independent contribution of every repeated factor to the overall within-subject covariance matrix. The proposed model allows for an imbalance in both dimensions across subjects.;Analyses of cross-sectional and longitudinal imaging data as well as strictly longitudinal data demonstrate the benefits of the proposed models. Simulation studies further illustrate the advantages of the methods. The demonstrated appeal of the models make it important to pursue a variety of unanswered questions, especially in the areas of small sample properties and covariance model robustness.
机译:横断面和纵向成像研究由于能够在整个生命周期内表征生物结构的空间和时空特征,因此正日益向医学研究的前沿发展。对于高斯数据,当标准多元技术不适用时,此类设计需要用于重复测量数据的通用线性模型。该模型的主要优势在于可以灵活地模拟结果和均值的协方差。正确指定协方差模型对于准确估计和推断感兴趣的均值和协变量可能至关重要。许多重复测量设置的对象内相关性在时间或空间上呈指数下降。即使观察到的相关性经常以比AR(1)结构所指示的慢得多或快得多的速率衰减,但它仍可在各种可用的相关性模式中找到最多的用途。连续时间AR(1)结构的三参数概括,称为广义自回归(GAR)协方差结构,可容纳慢得多和快得多的相关衰减模式。 GAR模型的特殊情况包括AR(1)模型和等相关(如在复合对称中)模型。通过三个参数实现的灵活性使得GAR结构对于在医学成像和各种“组学”数据中非常常见的高尺寸,低样本量的情况特别有吸引力。出色的分析和数值特性有助于使GAR模型成为用于重复测量数据的简约协方差结构套件的重要补充。评估了在中等规模样本环境中GAR模型参数推论的准确性。事实证明,GAR协方差模型在控制固定效应测试大小时对错误指定的抵抗力比AR(1)模型强得多。它具有与另一个可比较的模型阻尼指数(DE)一样的抗误配性,同时具有更好的统计和收敛特性。; GAR模型通过开发Kronecker乘积GAR协方差结构而扩展到多变量重复测量环境。这种结构允许对数据进行建模,其中给定对象的测量之间的相关性是由两个因素引起的(例如,时空数据)。该模型的主要优势在于易于解释,即每个重复因素对总体受试者内部协方差矩阵的独立贡献。所提出的模型允许跨对象的两个维度不平衡。横截面和纵向成像数据以及严格的纵向数据的分析证明了所提出模型的好处。仿真研究进一步说明了该方法的优势。这些模型具有很强的吸引力,因此有必要解决各种悬而未决的问题,尤其是在小样本属性和协方差模型稳健性方面。

著录项

  • 作者

    Simpson, Sean L.;

  • 作者单位

    The University of North Carolina at Chapel Hill.;

  • 授予单位 The University of North Carolina at Chapel Hill.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 114 p.
  • 总页数 114
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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