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Methodology for Examining Differential Rates of Change for Longitudinal Data.

机译:检查纵向数据差异变化率的方法。

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摘要

A common objective for longitudinal studies is to characterize differences in the rate of growth, or rate of change of an outcome across covariate-defined groups. The statistical challenges and potential extensions of models for comparing rates of change are intriguing with a broad scope for improving scientific research. We present research and newly proposed methodology on various scientific and statistical application of models for comparing rates of change in longitudinal outcomes across groups. We first discuss a generalized approach to modeling rates of change through direct structuring of differences in rates of change. The regression methodology offers a direct and parsimonious comparison of rates of change across groups and allows flexibility for structuring the underlying time trend of the outcome. By directly structuring rates of change relative to general time trend, power for detecting differences in the rate of change is improved compared to an equivalent linear models approach when the outcomes time trajectory is non-linear. Secondly, methodology for differentiating rates of change is extended to modeling multivariate longitudinal data. A common or global difference in the rate of change between groups is measured across all outcomes while separately structuring the time trend and mean level group differences for each outcome. When the true difference in the rate of change is similar for each outcomes, the global rate parameter method improves the ability to distinguish between groups compared to estimating separate rate effects for each outcome. Finally, the direct modeling of rates of change is made more robust to model misspecification by developing a semi-parametric estimation approach. Non-parametric estimation of a smooth time trend function is incorporated with parametric estimation of differences in the rate of change. We describe methods for estimating the time trend non-parametrically based on penalized spline methodology. We illustrate the proposed methodology for longitudinal rates of change and its extensions using studies of growth in infant subjects. Models for comparing rates can also be applied to areas such as treatment trials and studies of environmental exposures. We conclude with a discussion of future areas of work and possible extensions for modeling rates of change using longitudinal data.
机译:纵向研究的一个共同目标是表征协变量定义组之间的增长率或结果变化率的差异。用于比较变化率的模型的统计挑战和潜在扩展正在吸引着广泛的科学研究领域。我们介绍了各种科学和统计应用模型的研究和新提出的方法,以比较各组纵向结果的变化率。我们首先讨论一种通过直接构建变化率差异来建模变化率的通用方法。回归方法可以直接和简约地比较各组之间的变化率,并可以灵活地构造结果的基本时间趋势。通过直接构造相对于总体时间趋势的变化率,与结果时间轨迹为非线性时的等效线性模型方法相比,检测变化率差异的能力得到了提高。其次,区分变化率的方法扩展到建模多元纵向数据。衡量所有结果之间组之间变化率的共同或全局差异,同时分别构建每个结果的时间趋势和平均水平组差异。当每个结果的变化率的真实差异相似时,与估计每个结果的单独速率影响相比,全局速率参数方法将提高区分各组的能力。最后,通过开发半参数估计方法,可以更直接地对变化率进行建模,以更好地建模误分类。平滑时间趋势函数的非参数估计与变化率差异的参数估计结合在一起。我们描述了基于罚样条方法的非参数估计时间趋势的方法。我们使用婴儿受试者的生长研究来说明纵向变化率及其扩展的建议方法。比较比率的模型也可以应用于治疗试验和环境暴露研究等领域。最后,我们讨论了未来的工作领域以及使用纵向数据对变化率进行建模的可能扩展。

著录项

  • 作者

    Bryan, Matthew.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Biostatistics.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 112 p.
  • 总页数 112
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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