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Evaluating health management programmes over time: application of propensity score-based weighting to longitudinal data.

机译:随时间评估健康管理计划:将基于倾向评分的权重应用于纵向数据。

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摘要

Health management programmes are generally evaluated as point treatment studies in which only a baseline and outcome measurement are used in the analysis, even when multiple observations for each individual are available. By summarizing observations into two distinct measurements the evaluator loses any ability to discern patterns of change in the outcome variable over time in relation to the intervention. There are several statistical models available to evaluate longitudinal data that are typically regression-like in form and designed to adjust for clustering at the individual level. Most evaluators of longitudinal studies tend to adjust for the effect of time-dependent confounding by including these covariates as independent variables in the model. However, this standard adjustment approach is likely to provide biased estimates. In this paper we describe the application of the propensity score-based weighting technique to longitudinal data to estimate the effect of treatment on an outcome. This method reweights each treatment pattern to represent the entire population at each time point and provides an unbiased treatment effect. We illustrate the technique using data from a disease management programme and demonstrate its superiority over standard analytical adjustments in correcting for time-dependent confounding for each time period under study.
机译:通常将健康管理计划评估为点治疗研究,即使在每个人都有多个观察结果的情况下,分析中也仅使用基线和结果测量。通过将观察结果汇总为两个不同的测量值,评估者就无法识别与干预相关的结果变量随时间变化的模式。有几种统计模型可用于评估纵向数据,这些模型通常具有回归样的形式,旨在针对个体水平上的聚类进行调整。纵向研究的大多数评估者倾向于通过将这些协变量作为模型中的独立变量包括在内,来调整时间依赖性混淆的影响。但是,这种标准调整方法可能会提供有偏差的估计。在本文中,我们描述了基于倾向得分的加权技术在纵向数据中的应用,以估计治疗对结果的影响。此方法会重新加权每种治疗方式,以代表每个时间点的整个人群,并提供无偏见的治疗效果。我们使用疾病管理程序中的数据说明了该技术,并展示了其在校正每个研究期间随时间变化的混淆方面优于标准分析调整的优势。

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