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Semiparametric marginal and mixed models for longitudinal data.

机译:纵向数据的半参数边际和混合模型。

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摘要

This thesis consists of three papers which investigate marginal models, nonparametric approaches, generalized mixed effects models and variance components estimation in longitudinal data analysis.;In the first paper, a new marginal approach is introduced for high-dimensional cell-cycle microarray data with no replicates. There are two kinds of correlation for cell-cycle microarray data. Measurements within a gene are correlated and measurements between genes are also correlated since some genes may be biologically related. The proposed procedure combines a classifying method, quadratic inference function method and nonparametric techniques for complex high dimensional cell cycle microarray data. The gene classifying method is first applied to identify genes with similar cell cycle patterns into the same class. Then we use genes within the same group as pseudo-replicates to fit a nonparametric model. The quadratic inference function is applied to incorporate within-gene correlations. An asymptotic chi-squared test is also applied to test whether certain genes have cell cycles phenomena. Simulations and an example of cell-cycle microarray data are illustrated.;The second paper proposes a new approach for generalized linear mixed models in longitudinal data analysis. This new approach is an extension of the quadratic inference function (Qu et al., 2000) for generalized linear mixed models. Two conditional extended scores are constructed for estimating fixed effects and random effects. This new approach involves only the first and second conditional moments. It does not require the specification of a likelihood function and also takes serial correlations of errors into account. In addition, the estimation of unknown variance components associated with random effects or nuisance parameters associated with working correlations are not required. Furthermore, it does not require the normality assumption for random effects.;In the third paper, we develop a new approach to estimate variance components using the second-order quadratic inference function. This is an extension of the quadratic inference function for variance components estimation in linear mixed models. The new approach does not require the specification of a likelihood function. In addition, we propose a chi-squared test to test whether the variance components of interest are significant. This chi-squared test can also be used for testing whether the serial correlation is significant. Simulations and a real data example are provided as illustration.
机译:本论文由三篇论文组成,分别研究了边际模型,非参数方法,广义混合效应模型和纵向数据分析中的方差成分估计。复制。细胞周期微阵列数据有两种相关性。由于某些基因可能是生物学相关的,因此基因内的测量值是相关的,而基因之间的测量值也是相关的。拟议的程序结合了分类方法,二次推断函数方法和非参数技术来处理复杂的高维细胞周期微阵列数据。首先使用基因分类方法将具有相似细胞周期模式的基因鉴定到同一类别中。然后,我们将同一组内的基因用作伪复制,以拟合非参数模型。二次推断函数用于合并基因内相关。渐进卡方检验也用于检验某些基因是否具有细胞周期现象。举例说明了细胞周期微阵列数据的仿真和实例。第二篇论文提出了一种用于纵向数据分析的广义线性混合模型的新方法。这种新方法是对广义线性混合模型的二次推断函数(Qu等,2000)的扩展。构建两个条件扩展分数以估计固定效应和随机效应。这种新方法仅涉及第一个和第二个条件矩。它不需要规范似然函数,而且还考虑了误差的序列相关性。另外,不需要估计与随机效应相关联的未知方差分量或与工作相关性相关的有害参数。此外,它不需要随机效应的正态性假设。在第三篇论文中,我们开发了一种使用二阶二次推断函数估计方差分量的新方法。这是用于线性混合模型中方差分量估计的二次推断函数的扩展。新方法不需要指定似然函数。此外,我们提出了卡方检验来检验感兴趣的方差分量是否显着。该卡方检验也可以用于检验序列相关性是否显着。提供仿真和实际数据示例作为说明。

著录项

  • 作者

    Tsai, Guei-Feng.;

  • 作者单位

    Oregon State University.;

  • 授予单位 Oregon State University.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 97 p.
  • 总页数 97
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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