Bias Adjustment Methods for Analysis of a Non-randomized Controlled Trials of Right Heart Catheterization for Patients in ICU

Yi Xu, Yeqian Liu
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Abstract

Kaplan-Meier estimate or proportional hazards regression is commonly used directly to estimate the effect of treatment on survival time in randomized clinical studies. However, such methods usually lead to biased estimate of treatment effect in non-randomized or observational studies because the treated and untreated groups cannot be compared directly due to potential systematical difference in baseline characteristics. Researchers have developed various methods for adjusting biased estimates by balancing out confounding covariates such as matching or stratification on propensity score, inverse probability treatment weighting. However, very few studies have compared the performance of these methods. In this paper, we conducted an intensive case study to compare the performance of various bias correction methods for non-randomized studies and applied these methods to the right-heart catheterization (RHC) study to investigate the impact of RHC on the survival time of critically ill patients in the intensive care unit. Our findings suggest that, after bias adjustment procedures, RHC was associated with increased mortality. The inverse probability treatment weighting outperforms other bias adjustment methods in terms of bias, mean-squared error of the hazard ratio estimators, type I error and power. In general, a combination of these bias adjustment methods could be applied to make the estimation of the treatment effect more efficient.
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ICU患者右心导管非随机对照试验分析的偏倚校正方法
在随机临床研究中,Kaplan-Meier估计或比例风险回归通常直接用于估计治疗对生存时间的影响。然而,这种方法通常导致在非随机或观察性研究中对治疗效果的估计有偏倚,因为由于基线特征的潜在系统性差异,治疗组和未治疗组不能直接进行比较。研究人员已经开发出各种方法,通过平衡混杂协变量来调整有偏差的估计,如倾向评分的匹配或分层,逆概率处理加权。然而,很少有研究比较这些方法的性能。在本文中,我们进行了密集的案例研究,比较了非随机研究中各种偏倚校正方法的性能,并将这些方法应用于右心导管(RHC)研究,以探讨RHC对重症监护病房危重患者生存时间的影响。我们的研究结果表明,经过偏倚调整程序后,RHC与死亡率增加有关。在偏倚、风险比估计器的均方误差、I型误差和功率方面,逆概率处理加权优于其他偏倚调整方法。总的来说,这些偏倚调整方法的组合可以使治疗效果的估计更有效。
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