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Mediation Analysis with a Survival Mediator: A Simulation Study of Different Indirect Effect Testing Methods

机译:生存媒介的中介分析:不同间接效应测试方法的模拟研究

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摘要

Time-to-event analysis or equivalently, survival analysis deals with two variables simultaneously: when (time information) an event occurs and whether an event occurrence is observed or not during the observation period (censoring information). In behavioral and social sciences, the event of interest usually does not lead to a terminal state such as death. Other outcomes after the event can be collected and thus, the survival variable can be considered as a predictor as well as an outcome in a study. One example of a case where the survival variable serves as a predictor as well as an outcome is a survival-mediator model. In a single survival-mediator model an independent variable, X predicts a survival variable, M which in turn, predicts a continuous outcome, Y. The survival-mediator model consists of two regression equations: X predicting M (M-regression), and M and X simultaneously predicting Y (Y-regression). To estimate the regression coefficients of the survival-mediator model, Cox regression is used for the M-regression. Ordinary least squares regression is used for the Y-regression using complete case analysis assuming censored data in M are missing completely at random so that the Y-regression is unbiased. In this dissertation research, different measures for the indirect effect were proposed and a simulation study was conducted to compare performance of different indirect effect test methods. Bias-corrected bootstrapping produced high Type I error rates as well as low parameter coverage rates in some conditions. In contrast, the Sobel test produced low Type I error rates as well as high parameter coverage rates in some conditions. The bootstrap of the natural indirect effect produced low Type I error and low statistical power when the censoring proportion was non-zero. Percentile bootstrapping, distribution of the product and the joint-significance test showed best performance. Statistical analysis of the survival-mediator model is discussed. Two indirect effect measures, the ab-product and the natural indirect effect are compared and discussed. Limitations and future directions of the simulation study are discussed. Last, interpretation of the survival-mediator model for a made-up empirical data set is provided to clarify the meaning of the quantities in the survival-mediator model.
机译:时间到事件分析或等效地,生存分析同时处理两个变量:事件发生的时间(时间信息)以及在观察期内是否观察到事件发生(检查信息)。在行为科学和社会科学中,感兴趣的事件通常不会导致死亡等最终状态。可以收集事件后的其他结果,因此,生存变量可以被视为研究的预测因素和结果。生存变量既作为预测变量又作为结果的情况的一个例子是生存中介模型。在一个生存介质模型中,一个独立变量X预测一个生存变量M,而M预测一个连续结果Y。生存介质模型由两个回归方程组成:X预测M(M回归),和M和X同时预测Y(Y回归)。为了估计生存介质模型的回归系数,将Cox回归用于M回归。使用完整案例分析,将普通最小二乘回归用于Y回归,假设M中的检查数据完全随机丢失,从而使Y回归无偏。本文提出了间接效应的不同测量方法,并进行了仿真研究,比较了不同间接效应测试方法的性能。偏置校正的自举会在某些情况下产生较高的I型错误率以及较低的参数覆盖率。相比之下,Sobel测试在某些情况下产生低的I型错误率以及高参数覆盖率。当审查比例不为零时,自然间接效应的自举产生较低的I类错误和较低的统计功效。百分比自举,产品分布和联合显着性测试显示出最佳性能。讨论了生存介体模型的统计分析。比较和讨论了两个间接效应度量,即ab乘积和自然间接效应。讨论了模拟研究的局限性和未来的方向。最后,提供了对虚构的经验数据集的生存介质模型的解释,以阐明生存介质模型中数量的含义。

著录项

  • 作者

    Kim, Han Joe.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Quantitative psychology.;Statistics.;Psychology.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 211 p.
  • 总页数 211
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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