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Bayesian semiparametric correlation models for longitudinal data with applications to an HIV/AIDS biomarker study.

机译:用于纵向数据的贝叶斯半参数相关模型,并应用于HIV / AIDS生物标志物研究。

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摘要

In longitudinal data analysis, parametric covariance models rely on strong assumptions, while the unstructured covariance model has too many parameters and can not often be fit to high dimensional unbalanced data. As an alternative, I start with the variance-correlation decomposition and propose two rich families of Bayesian semi-parametric stationary correlation models. One approach is a mixture of simple structure correlation matrices; the second approach models correlations as a convex monotone B-spline function of time lags. Both correlation models satisfy the positive definite constraint. They are capable of handling large dimensional, highly unbalanced data and are feasible in a Bayesian framework. Further I develop a matrix mixture correlation model which extends my stationary correlation models to the nonstationary correlation situation. The nonstationary model inherits strengths from the stationary mixture correlation model and allows the correlation to change in both value and structure simultaneously. For correlations with a known change point or correlations continuously changing over time, there is an appropriate version of the model. I present proper but uninformative priors for correlation parameters and illustrate how substantive prior information can be incorporated in the prior specification. I compare my models to each other and to standard models using DIC, cross-validation and log marginal likelihood. Simulations show that our model works well and DIC, cross-validation and log marginal likelihood choose similar models. I illustrate my methods with an unbalanced dataset of CD4 cell counts and mice growth data.
机译:在纵向数据分析中,参数协方差模型依赖强大的假设,而非结构化协方差模型具有太多参数,因此通常不适合高维不平衡数据。作为替代方案,我从方差相关分解开始,提出两个丰富的贝叶斯半参数平稳相关模型模型。一种方法是混合简单的结构相关矩阵。第二种方法将相关性建模为时滞的凸单调B样条函数。两个相关模型都满足正定约束。它们能够处理大规模,高度不平衡的数据,并且在贝叶斯框架中是可行的。此外,我开发了一个矩阵混合相关模型,该模型将我的平稳相关模型扩展到非平稳相关情况。非平稳模型继承了固定混合物相关模型的优势,并允许相关同时改变值和结构。对于具有已知变化点的相关性或随时间连续变化的相关性,有合适的模型版本。我为相关参数提供了适当的但没有参考性的先验知识,并说明了如何将实质性先验信息合并到先验规范中。我将自己的模型与使用DIC,交叉验证和对数边际可能性的标准模型进行比较。仿真表明,我们的模型运行良好,而DIC,交叉验证和对数边际可能性选择了相似的模型。我用CD4细胞计数和小鼠生长数据的不平衡数据集说明了我的方法。

著录项

  • 作者

    Qian, Lei.;

  • 作者单位

    University of California, Los Angeles.;

  • 授予单位 University of California, Los Angeles.;
  • 学科 Biology Biostatistics.;Statistics.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 93 p.
  • 总页数 93
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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