Suppr超能文献

最小化时间至事件结局的比较性观察研究中的混杂因素:使用蒙特卡罗模拟对协变量平衡方法进行广泛比较。

Minimizing confounding in comparative observational studies with time-to-event outcomes: An extensive comparison of covariate balancing methods using Monte Carlo simulation.

机构信息

Medical Device Epidemiology and Real-World Data Sciences, Johnson & Johnson Medical Devices and Office of the Chief Medical Officer, New Brunswick, NJ, USA.

ICES, Toronto, ON, Canada.

出版信息

Stat Methods Med Res. 2024 Aug;33(8):1437-1460. doi: 10.1177/09622802241262527. Epub 2024 Jul 25.

Abstract

Observational studies are frequently used in clinical research to estimate the effects of treatments or exposures on outcomes. To reduce the effects of confounding when estimating treatment effects, covariate balancing methods are frequently implemented. This study evaluated, using extensive Monte Carlo simulation, several methods of covariate balancing, and two methods for propensity score estimation, for estimating the average treatment effect on the treated using a hazard ratio from a Cox proportional hazards model. With respect to minimizing bias and maximizing accuracy (as measured by the mean square error) of the treatment effect, the average treatment effect on the treated weighting, fine stratification, and optimal full matching with a conventional logistic regression model for the propensity score performed best across all simulated conditions. Other methods performed well in specific circumstances, such as pair matching when sample sizes were large (n = 5000) and the proportion treated was 0.25. Statistical power was generally higher for weighting methods than matching methods, and Type I error rates were at or below the nominal level for balancing methods with unbiased treatment effect estimates. There was also a decreasing effective sample size with an increasing number of strata, therefore for stratification-based weighting methods, it may be important to consider fewer strata. Generally, we recommend methods that performed well in our simulations, although the identification of methods that performed well is necessarily limited by the specific features of our simulation. The methods are illustrated using a real-world example comparing beta blockers and angiotensin-converting enzyme inhibitors among hypertensive patients at risk for incident stroke.

摘要

观察性研究常用于临床研究中,以估计治疗或暴露对结果的影响。为了在估计治疗效果时减少混杂的影响,经常实施协变量平衡方法。本研究使用广泛的蒙特卡罗模拟评估了几种协变量平衡方法和两种倾向评分估计方法,以从 Cox 比例风险模型中的风险比估计治疗对治疗人群的平均治疗效果。就最小化偏差和最大化治疗效果的准确性(以均方误差衡量)而言,在所有模拟条件下,治疗对治疗人群加权、精细分层和最佳完全匹配(与倾向评分的常规逻辑回归模型)的方法表现最佳。其他方法在特定情况下表现良好,例如当样本量较大(n = 5000)且治疗比例为 0.25 时进行配对匹配。加权方法的统计功效通常高于匹配方法,并且具有无偏治疗效果估计的平衡方法的Ⅰ型错误率在名义水平或以下。随着分层数的增加,有效样本量也会减少,因此对于基于分层的加权方法,考虑较少的分层可能很重要。一般来说,我们推荐在模拟中表现良好的方法,尽管确定表现良好的方法必然受到我们模拟的特定特征的限制。该方法使用真实世界的例子来说明,比较了高血压患者中发生中风风险的β受体阻滞剂和血管紧张素转换酶抑制剂。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验