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Assessing causal vaccine effects in a subset selected post-randomization.

机译:在随机选择的子集中评估因果疫苗的效果。

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摘要

In some clinical trials, the primary outcome of interest may only be measured in a subset of subjects where the subset is identified by a post-randomization event. For example, in prophylactic vaccination studies a primary objective may be to assess the effect of a vaccine on an outcome that is measured only in subjects who become infected with disease. Formulating causal effects in subgroups selected by post-randomization events can be challenging due to the potential of selection bias compounded by other limitations of clinical trials where certain subjects do not have outcomes measured. Principal stratification is a common approach that can be used to tackle selection bias in this context; however, causal treatment effects using principal stratification cannot be identified from the observed data with standard assumptions made in randomized trials. Currently published methods using principal stratification to identify the average causal effect of treatment in subsets selected after randomization do adjust for such unmeasured selection bias, but they are limited by various assumptions, including that the treatment or vaccine is not harmful (i.e., monotonicity) and that missing outcome data are missing completely at random (MCAR). In this dissertation, we describe a non-parametric approach to assess an average causal effect (ACE) of treatment in a subset selected post-randomization that resolves some limitations of current causal approaches. We first derive bounds of the ACE without assuming monotonicity and develop testing procedures for these bounds. We further propose estimation and testing procedures that utilize logistic regression models to reflect intermediate degrees of selective effects and describe applying these models to assess the ACE through a sensitivity analysis. Simulation is used to demonstrate the value of our methods. Finally, we develop a robust multiple imputation based approach to estimate and test the ACE using principal stratification in the presence of missing outcome data when MCAR is untenable and an ignorable missing data mechanism is plausible. We compare our approach with other recently published methods to handle ignorable missing data in this context via simulation. Throughout, we use two HIV vaccination trials to motivate our work and apply the new methods.
机译:在某些临床试验中,可能仅在受试者的一个子集中测量感兴趣的主要结局,其中子集由随机后事件识别。例如,在预防性疫苗研究中,主要目标可能是评估疫苗对仅在感染疾病的受试者中测得的结果的影响。由于选择偏倚的潜力与某些临床受试者无法测量结果的临床试验的其他局限相加,在随机化后事件选择的亚组中制定因果效应可能具有挑战性。主体分层是一种常见的方法,可以用来解决这种情况下的选择偏见。然而,使用随机分层的标准假设无法从观察到的数据中识别出使用主要分层的因果治疗效果。当前发布的使用主分层来确定随机分组后选择的亚组中治疗的平均因果效应的方法确实可以针对这种无法衡量的选择偏差进行调整,但它们受到各种假设的限制,包括治疗或疫苗无害(即单调性)和丢失的结果数据完全完全随机丢失(MCAR)。在本文中,我们描述了一种非参数方法,用于评估随机化后选择的子集中治疗的平均因果效应(ACE),解决了目前因果关系方法的一些局限性。我们首先在不假设单调性的情况下得出ACE的边界,然后针对这些边界开发测试程序。我们进一步提出了利用逻辑回归模型来反映选择性效应的中间程度的估计和测试程序,并描述了通过敏感性分析应用这些模型来评估ACE。仿真用于证明我们方法的价值。最后,当MCAR站不住脚而可忽略的缺失数据机制似乎可行时,我们开发了一种基于稳健的基于多重插补的方法,用于使用主要分层法估算和测试ACE,而缺少缺失结果数据。我们将我们的方法与其他最近发布的方法进行比较,以在这种情况下通过仿真处理可忽略的缺失数据。在整个过程中,我们使用两项HIV疫苗接种试验来激发我们的工作并应用新方法。

著录项

  • 作者

    Mogg, Robin.;

  • 作者单位

    University of Pennsylvania.;

  • 授予单位 University of Pennsylvania.;
  • 学科 Biology Biostatistics.;Statistics.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 135 p.
  • 总页数 135
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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