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Methods for clustered encouragement design studies with noncompliance and missing data

机译:违规和数据缺失的鼓励设计研究聚类方法

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Encouragement design studies are particularly useful for estimating the effect of an intervention that cannot itself be randomly administered to some and not to others. They require a randomly selected group receive extra encouragement to undertake the treatment of interest, where the encouragement typically takes the form of additional information or incentives. We consider a “clustered encouragement design” (CED), where the randomization is at the level of the clusters (e.g. physicians), but the compliance with assignment is at the level of the units (e.g. patients) within clusters. Noncompliance and missing data are particular problems in encouragement design studies, where encouragement to take the treatment, rather than the treatment itself, is randomized. The motivating study looks at whether computer-based care suggestions can improve patient outcomes in veterans with chronic heart failure. Since physician adherence has been inadequate, the original study focused on methods to improve physician adherence, although an equally important question is whether physician adherence improves patient outcomes. Here, we reanalyze the data to determine the effect of physician adherence on patient outcomes. We propose causal inference methodology for the effect of a treatment versus a control in a randomized CED study with all-or-none compliance at the unit level. These methods extend the current approaches to account for nonignorable missing data and use an alternative approach to inference using multiple imputation methods, which have been successfully applied to a wide variety of missing data problems and have recently been applied to the potential outcomes framework of causal inference (Taylor and Zhou, 2009b).
机译:鼓励设计研究对于评估不能随机分配给某些人和其他人的干预措施的效果特别有用。他们需要从随机选择的群体中获得额外的鼓励,以进行感兴趣的治疗,而这种鼓励通常采取其他信息或激励的形式。我们考虑一种“集群鼓励设计”(CED),其中随机化在集群(例如医生)级别进行,但与分配的依从性在集群内的单元(例如患者)级别进行。违规和数据丢失是鼓励措施设计研究中的特殊问题,在这些研究中,采取治疗措施而不是治疗措施本身的鼓励措施是随机的。这项有动机的研究着眼于基于计算机的护理建议是否可以改善患有慢性心力衰竭的退伍军人的患者预后。由于医师依从性不足,因此最初的研究集中在改善医师依从性的方法上,尽管同样重要的问题是医师依从性能否改善患者预后。在这里,我们重新分析数据以确定医师依从性对患者预后的影响。我们提出因果推理方法,用于在单位水平上全有或全无依从性的随机CED研究中,对治疗与对照进行比较。这些方法扩展了当前方法以解决不可忽略的缺失数据,并使用了另一种方法来使用多种插补方法进行推理,这些方法已成功应用于各种缺失数据问题,最近已应用于因果推理的潜在结果框架(Taylor and Zhou,2009b)。

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  • 来源
    《Biostatistics》 |2011年第2期|p.313-326|共14页
  • 作者

    Leslie Taylor;

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