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首页> 外文期刊>Pharmacoepidemiology and drug safety >Estimating the effects of time-varying exposures in observational studies using Cox models with stabilized weights adjustment
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Estimating the effects of time-varying exposures in observational studies using Cox models with stabilized weights adjustment

机译:使用具有稳定权重调整的Cox模型估算观察性研究中时变暴露的影响

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Purpose: Assessing the safety and effectiveness of medical products with observational electronic medical record data is challenging when the treatment is time-varying. The objective of this paper is to develop a Cox model stratified by event times with stabilized weights (SWs) adjustment to examine the effect of time-varying treatment in observational studies. Methods: Time-varying SWs are calculated at unique event times and are used in a Cox model stratified by event times to estimate the effect of time-varying treatment. We applied this method in examining the effect of an antiplatelet agent, clopidogrel, on events, including bleeding, myocardial infarction, and death after a drug-eluting stent was implanted in coronary artery. Clopidogrel use may change over time on the basis of patients' behavior (e.g., non-adherence) and physicians' recommendations (e.g., end of duration of therapy). We also compared the results with those from a Cox model for counting processes adjusting for all covariates used in creating SWs. Results: We demonstrate that the (i) results from the stratified Cox model without SWs adjustment and the Cox model for counting processes without covariate adjustment are identical in analyzing the clopidogrel data; and (ii) the effects of clopidogrel on bleeding, myocardial infarction, and death are larger in the stratified Cox model with SWs adjustment compared with those from the Cox model for counting processes with covariate adjustment. Conclusions: The Cox model stratified by event times with time-varying SWs adjustment is useful in estimating the effect of time-varying treatments in observational studies while balancing for known confounders.
机译:目的:当治疗时变时,利用观察性电子病历数据评估医疗产品的安全性和有效性是一项挑战。本文的目的是建立一个按事件时间分层并具有稳定权重(SWs)调整的Cox模型,以研究时变治疗在观察研究中的效果。方法:随时间变化的SW在唯一的事件时间进行计算,并用于按事件时间分层的Cox模型中,以估计随时间变化的治疗效果。我们将这种方法用于检查抗血小板药物氯吡格雷对事件的影响,包括在冠状动脉中植入药物洗脱支架后的出血,心肌梗塞和死亡。氯吡格雷的使用可能会根据患者的行为(例如,不依从)和医生的建议(例如,治疗持续时间的结束)而随时间变化。我们还将结果与Cox模型的结果进行了比较,以计算针对创建SW时使用的所有协变量进行调整的过程。结果:我们证明了(i)在没有SW调整的情况下分层Cox模型的结果和在没有协变量调整的情况下用于计数过程的Cox模型在分析氯吡格雷数据方面是相同的; (ii)在采用SW调整的分层Cox模型中,氯吡格雷对出血,心肌梗塞和死亡的影响要大于用Cox模型进行协变量调整的计数过程所产生的影响。结论:事件时间和SWs随时间变化分层的Cox模型可用于评估观察性研究中时变治疗的效果,同时平衡已知的混杂因素。

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