Neumann Anke, Billionnet Cécile
French National Health Insurance Fund for Salaried Employees (CNAMTS), Department of Public Health Studies, Avenue du Professeur André Lemierre 50, 75020 Paris, France.
Comput Methods Programs Biomed. 2016 Jun;129:63-70. doi: 10.1016/j.cmpb.2016.03.008. Epub 2016 Mar 10.
In observational studies without random assignment of the treatment, the unadjusted comparison between treatment groups may be misleading due to confounding. One method to adjust for measured confounders is inverse probability of treatment weighting. This method can also be used in the analysis of time to event data with competing risks. Competing risks arise if for some individuals the event of interest is precluded by a different type of event occurring before, or if only the earliest of several times to event, corresponding to different event types, is observed or is of interest. In the presence of competing risks, time to event data are often characterized by cumulative incidence functions, one for each event type of interest. We describe the use of inverse probability of treatment weighting to create adjusted cumulative incidence functions. This method is equivalent to direct standardization when the weight model is saturated. No assumptions about the form of the cumulative incidence functions are required. The method allows studying associations between treatment and the different types of event under study, while focusing on the earliest event only. We present a SAS macro implementing this method and we provide a worked example.
在未对治疗进行随机分配的观察性研究中,由于存在混杂因素,治疗组之间未经调整的比较可能会产生误导。一种调整已测量混杂因素的方法是治疗权重逆概率法。该方法也可用于分析具有竞争风险的事件发生时间数据。如果对于某些个体,感兴趣的事件被之前发生的另一种类型的事件所排除,或者如果仅观察到或关注对应于不同事件类型的几次事件发生时间中最早的那次,就会出现竞争风险。在存在竞争风险的情况下,事件发生时间数据通常由累积发病率函数来表征,每种感兴趣的事件类型都有一个累积发病率函数。我们描述了使用治疗权重逆概率法来创建调整后的累积发病率函数。当权重模型饱和时,该方法等同于直接标准化。无需对累积发病率函数的形式做任何假设。该方法允许研究治疗与所研究的不同类型事件之间的关联,同时仅关注最早发生的事件。我们给出了一个实现该方法的SAS宏,并提供了一个实例。