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超越随机对照试验中的总体治疗效果:在中介效应研究中减少混杂因素所需的中间结局的基线测量。

Beyond total treatment effects in randomised controlled trials: Baseline measurement of intermediate outcomes needed to reduce confounding in mediation investigations.

作者信息

Landau Sabine, Emsley Richard, Dunn Graham

机构信息

1 King's College London, Department of Biostatistics and Health Informatics, Institute of Psychiatry, Psychology & Neuroscience, King's College London, London, UK.

2 Centre for Biostatistics, School of Health Sciences, University of Manchester, Manchester Academic Health Science Centre, Manchester, UK.

出版信息

Clin Trials. 2018 Jun;15(3):247-256. doi: 10.1177/1740774518760300. Epub 2018 Mar 18.

Abstract

BACKGROUND

Random allocation avoids confounding bias when estimating the average treatment effect. For continuous outcomes measured at post-treatment as well as prior to randomisation (baseline), analyses based on (A) post-treatment outcome alone, (B) change scores over the treatment phase or (C) conditioning on baseline values (analysis of covariance) provide unbiased estimators of the average treatment effect. The decision to include baseline values of the clinical outcome in the analysis is based on precision arguments, with analysis of covariance known to be most precise. Investigators increasingly carry out explanatory analyses to decompose total treatment effects into components that are mediated by an intermediate continuous outcome and a non-mediated part. Traditional mediation analysis might be performed based on (A) post-treatment values of the intermediate and clinical outcomes alone, (B) respective change scores or (C) conditioning on baseline measures of both intermediate and clinical outcomes.

METHODS

Using causal diagrams and Monte Carlo simulation, we investigated the performance of the three competing mediation approaches. We considered a data generating model that included three possible confounding processes involving baseline variables: The first two processes modelled baseline measures of the clinical variable or the intermediate variable as common causes of post-treatment measures of these two variables. The third process allowed the two baseline variables themselves to be correlated due to past common causes. We compared the analysis models implied by the competing mediation approaches with this data generating model to hypothesise likely biases in estimators, and tested these in a simulation study. We applied the methods to a randomised trial of pragmatic rehabilitation in patients with chronic fatigue syndrome, which examined the role of limiting activities as a mediator.

RESULTS

Estimates of causal mediation effects derived by approach (A) will be biased if one of the three processes involving baseline measures of intermediate or clinical outcomes is operating. Necessary assumptions for the change score approach (B) to provide unbiased estimates under either process include the independence of baseline measures and change scores of the intermediate variable. Finally, estimates provided by the analysis of covariance approach (C) were found to be unbiased under all the three processes considered here. When applied to the example, there was evidence of mediation under all methods but the estimate of the indirect effect depended on the approach used with the proportion mediated varying from 57% to 86%.

CONCLUSION

Trialists planning mediation analyses should measure baseline values of putative mediators as well as of continuous clinical outcomes. An analysis of covariance approach is recommended to avoid potential biases due to confounding processes involving baseline measures of intermediate or clinical outcomes, and not simply for increased precision.

摘要

背景

在估计平均治疗效果时,随机分配可避免混杂偏倚。对于在治疗后以及随机分组前(基线)测量的连续结局,基于以下方法的分析可提供平均治疗效果的无偏估计量:(A)仅基于治疗后的结局;(B)治疗阶段的变化分数;或(C)以基线值为条件(协方差分析)。在分析中纳入临床结局基线值的决定是基于精度考量,已知协方差分析最为精确。研究人员越来越多地进行解释性分析,以将总治疗效果分解为由中间连续结局介导的部分和非介导部分。传统的中介分析可能基于以下方法进行:(A)仅基于中间结局和临床结局的治疗后值;(B)各自的变化分数;或(C)以中间结局和临床结局的基线测量值为条件。

方法

使用因果图和蒙特卡洛模拟,我们研究了三种相互竞争的中介方法的性能。我们考虑了一个数据生成模型,其中包括涉及基线变量的三种可能的混杂过程:前两个过程将临床变量或中间变量的基线测量值建模为这两个变量治疗后测量值的共同原因。第三个过程允许两个基线变量由于过去的共同原因而相互关联。我们将相互竞争的中介方法所隐含的分析模型与该数据生成模型进行比较,以推测估计量中可能存在的偏差,并在模拟研究中对其进行检验。我们将这些方法应用于一项慢性疲劳综合征患者实用康复的随机试验,该试验研究了限制活动作为中介因素的作用。

结果

如果涉及中间结局或临床结局基线测量的三个过程之一起作用,那么通过方法(A)得出的因果中介效应估计将存在偏差。变化分数方法(B)在任何一个过程下提供无偏估计的必要假设包括基线测量值与中间变量变化分数的独立性。最后,发现在这里考虑的所有三个过程下,协方差分析方法(C)提供的估计都是无偏的。当应用于该示例时,所有方法都有中介效应的证据,但间接效应的估计取决于所使用的方法,中介比例从57%到86%不等。

结论

计划进行中介分析的试验者应测量假定中介因素以及连续临床结局的基线值。建议采用协方差分析方法,以避免由于涉及中间结局或临床结局基线测量的混杂过程而导致的潜在偏差,而不仅仅是为了提高精度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/91bd/5992850/21c41863f2af/10.1177_1740774518760300-fig1.jpg

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