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首页> 外文期刊>Italian Journal of Public Health >Propensity score adjustment of a treatment effect with missing data in psychiatric health services research
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Propensity score adjustment of a treatment effect with missing data in psychiatric health services research

机译:精神卫生服务研究中缺少数据的治疗效果倾向得分调整

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Background: Missing values are a common problem for data analyses in observational studies, which are frequently applied in health services research. This paper examines the usefulness of different approaches to tackle the problem of incomplete observational data, focusing whether the Multiple Imputation (MI) strategy yields adequate estimates when applied to a complex analysis framework. Methods: Based on observational study data originally comparing three forms of psychotherapy, a simulation study with different missing data scenarios was conducted. The considered analysis model comprised a propensity score-adjusted treatment effect estimation. Missing values were handled by complete case analysis, different MI approaches, as well as mean and regression imputation. Results: All point estimators of the applied methods lay within the 95% confidence interval of the treatment effect derived from the complete simulation data set. Highest deviation was observed for complete case analysis. A distinct superiority of MI methods could not be demonstrated. Conclusion: Since there was no clear benefit of one method to deal with missing values over another, health services researchers faced with incomplete observational data are well-advised to apply different imputation methods and compare the results in order to get an impression of their sensitivity.
机译:背景:缺失值是观察研究中数据分析的常见问题,经常在卫生服务研究中应用。本文研究了解决不完整观测数据问题的各种方法的有用性,重点是当应用于复杂的分析框架时,多重插补(MI)策略是否会产生足够的估计。方法:基于观察性研究数据,该数据原先比较了三种心理治疗形式,并进行了具有不同缺失数据情景的模拟研究。所考虑的分析模型包括倾向得分调整后的治疗效果估计。缺失值通过完整的案例分析,不同的MI方法以及均值和回归估算来处理。结果:所采用方法的所有点估计量均位于从完整模拟数据集得出的治疗效果的95%置信区间内。观察到最大偏差以进行完整的病例分析。 MI方法的独特优势无法得到证明。结论:由于一种方法与另一种方法相比并没有明显的优势,因此,面对观察数据不完整的卫生服务研究人员应明智地采用不同的估算方法并比较结果,以期获得其敏感性的印象。

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