Department of Biostatistics, St. Jude Children's Research Hospital, TN 38103, USA.
Stat Med. 2013 May 20;32(11):1954-63. doi: 10.1002/sim.5674. Epub 2012 Nov 8.
Event history studies occur in many fields including economics, medical studies, and social science. In such studies concerning some recurrent events, two types of data have been extensively discussed in the literature. One is recurrent event data that arise if study subjects are monitored or observed continuously. In this case, the observed information provides the times of all occurrences of the recurrent events of interest. The other is panel count data, which occur if the subjects are monitored or observed only periodically. This can happen if the continuous observation is too expensive or not practical, and in this case, only the numbers of occurrences of the events between subsequent observation times are available. In this paper, we discuss a third type of data, which is a mixture of recurrent event and panel count data and for which there exists little literature. For regression analysis of such data, we present a marginal mean model and propose an estimating equation-based approach for estimation of regression parameters. We conduct a simulation study to assess the finite sample performance of the proposed methodology, and the results indicate that it works well for practical situations. Finally, we apply it to a motivating study on childhood cancer survivors.
事件历史研究在许多领域都有应用,包括经济学、医学研究和社会科学。在涉及某些复发性事件的此类研究中,文献中广泛讨论了两种类型的数据。一种是如果研究对象被连续监测或观察,就会产生的复发性事件数据。在这种情况下,观察到的信息提供了所有感兴趣的复发性事件发生的时间。另一种是面板计数数据,如果仅定期监测或观察对象,就会发生这种情况。这可能是因为连续观察太昂贵或不切实际,在这种情况下,只有在后续观察时间之间发生事件的次数可用。在本文中,我们讨论了第三种数据类型,即复发性事件和面板计数数据的混合数据,对此类数据的文献很少。对于此类数据的回归分析,我们提出了边缘均值模型,并提出了一种基于估计方程的方法来估计回归参数。我们进行了一项模拟研究来评估所提出方法的有限样本性能,结果表明它在实际情况下效果良好。最后,我们将其应用于儿童癌症幸存者的激励性研究。