Department of Medical Decision Making & Quality of Care, Leiden University Medical Center, Leiden, The Netherlands.
Department of Methodology & Statistics, University of Utrecht, Utrecht, The Netherlands.
Stat Med. 2019 Jan 30;38(2):210-220. doi: 10.1002/sim.7956. Epub 2018 Sep 12.
In healthcare cost-effectiveness analysis, probability distributions are typically skewed and missing data are frequent. Bootstrap and multiple imputation are well-established resampling methods for handling skewed and missing data. However, it is not clear how these techniques should be combined. This paper addresses combining multiple imputation and bootstrap to obtain confidence intervals of the mean difference in outcome for two independent treatment groups. We assessed statistical validity and efficiency of 10 candidate methods and applied these methods to a clinical data set. Single imputation nested in the bootstrap percentile method (with added noise to reflect the uncertainty of the imputation) emerged as the method with the best statistical properties. However, this method can require extensive computation times and the lack of standard software makes this method not accessible for a larger group of researchers. Using a standard unpaired t-test with standard multiple imputation without bootstrap appears to be a robust alternative with acceptable statistical performance for which standard multiple imputation software is available.
在医疗保健成本效益分析中,概率分布通常是偏态的,并且经常存在缺失数据。自举法和多重插补是处理偏态和缺失数据的成熟重采样方法。然而,目前尚不清楚如何将这些技术结合起来。本文探讨了将多重插补和自举法结合起来,以获得两个独立治疗组之间的结果均值差异的置信区间。我们评估了 10 种候选方法的统计有效性和效率,并将这些方法应用于临床数据集。在自举百分位数法中嵌套的单一插补方法(添加噪声以反映插补的不确定性)是具有最佳统计性质的方法。然而,这种方法可能需要大量的计算时间,并且缺乏标准软件使得这种方法无法为更多的研究人员所使用。使用带有自举的标准非配对 t 检验和不带自举的标准多重插补似乎是一种稳健的替代方法,具有可接受的统计性能,并且有标准的多重插补软件可供使用。