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评估 1:1 倾向评分匹配队列研究中自举法的应用——基于 Plasmode 模拟研究

Evaluating the use of bootstrapping in cohort studies conducted with 1:1 propensity score matching-A plasmode simulation study.

机构信息

Division of Pharmacoepidemiology and Pharmacoeconomics, Department of Medicine, Brigham and Women's Hospital and Harvard Medical School, Boston, MA.

Department of Population Medicine, Harvard Medical School and Harvard Pilgrim Health Care Institute, Boston, MA.

出版信息

Pharmacoepidemiol Drug Saf. 2019 Jun;28(6):879-886. doi: 10.1002/pds.4784. Epub 2019 Apr 24.

Abstract

PURPOSE

Bootstrapping can account for uncertainty in propensity score (PS) estimation and matching processes in 1:1 PS-matched cohort studies. While theory suggests that the classical bootstrap can fail to produce proper coverage, practical impact of this theoretical limitation in settings typical to pharmacoepidemiology is not well studied.

METHODS

In a plasmode-based simulation study, we compared performance of the standard parametric approach, which ignores uncertainty in PS estimation and matching, with two bootstrapping methods. The first method only accounted for uncertainty introduced during the matching process (the observation resampling approach). The second method accounted for uncertainty introduced during both PS estimation and matching processes (the PS reestimation approach). Variance was estimated based on percentile and empirical standard errors, and treatment effect estimation was based on median and mean of the estimated treatment effects across 1000 bootstrap resamples. Two treatment prevalence scenarios (5% and 29%) across two treatment effect scenarios (hazard ratio of 1.0 and 2.0) were evaluated in 500 simulated cohorts of 10 000 patients each.

RESULTS

We observed that 95% confidence intervals from the bootstrapping approaches but not the standard approach, resulted in inaccurate coverage rates (98%-100% for the observation resampling approach, 99%-100% for the PS reestimation approach, and 95%-96% for standard approach). Treatment effect estimation based on bootstrapping approaches resulted in lower bias than the standard approach (less than 1.4% vs 4.1%) at 5% treatment prevalence; however, the performance was equivalent at 29% treatment prevalence.

CONCLUSION

Use of bootstrapping led to variance overestimation and inconsistent coverage, while coverage remained more consistent with parametric estimation.

摘要

目的

在 1:1 倾向评分(PS)匹配队列研究中,自举法可以解释 PS 估计和匹配过程中的不确定性。虽然理论表明经典自举法可能无法产生适当的覆盖范围,但在药物流行病学中典型的情况下,这种理论限制的实际影响尚未得到很好的研究。

方法

在基于 plasmode 的模拟研究中,我们比较了标准参数方法的性能,该方法忽略了 PS 估计和匹配过程中的不确定性,以及两种自举方法。第一种方法仅考虑了匹配过程中引入的不确定性(观察重采样方法)。第二种方法考虑了 PS 估计和匹配过程中引入的不确定性(PS 重新估计方法)。方差是基于百分位数和经验标准误差估计的,治疗效果估计是基于 1000 个自举重采样中估计的治疗效果中位数和平均值。在 500 个模拟队列中,每个队列包含 10000 名患者,评估了两种治疗效果场景(风险比为 1.0 和 2.0)下的两种治疗流行率场景(5%和 29%)。

结果

我们观察到,自举方法的 95%置信区间但不是标准方法的 95%置信区间导致不准确的覆盖率(观察重采样方法为 98%-100%,PS 重新估计方法为 99%-100%,标准方法为 95%-96%)。在 5%的治疗流行率下,基于自举方法的治疗效果估计比标准方法的治疗效果估计(小于 1.4%对 4.1%)偏差更小;然而,在 29%的治疗流行率下,两种方法的性能相当。

结论

使用自举法会导致方差高估和覆盖范围不一致,而覆盖范围与参数估计保持更一致。

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