Biostatistics and Epidemiology Research and Design, Division of Clinical and Translational Sciences, The University of Texas Health Science Center at Houston, Houston, TX, 77030, USA.
Department of Statistics, Korea University, Seoul, 02841, South Korea.
Lifetime Data Anal. 2020 Oct;26(4):820-832. doi: 10.1007/s10985-020-09500-6. Epub 2020 Jul 12.
In long-term follow-up studies on recurrent events, the observation patterns may not be consistent over time. During some observation periods, subjects may be monitored continuously so that each event occurence time is known. While during the other observation periods, subjects may be monitored discretely so that only the number of events in each period is known. This results in mixed recurrent-event and panel-count data. In these data, there is dependence among within-subject events. Furthermore, if the data are collected from multiple centers, then there is another level of dependence among within-center subjects. Literature exists for clustered recurrent-event data, but not for clustered mixed recurrent-event and panel-count data. Ignoring the cluster effect may lead to less efficient analysis. In this paper, we present a marginal modeling approach to take into account the cluster effect and provide asymptotic distributions of the resulting regression parameters. Our simulation study demonstrates that this approach works well for practical situations. It was applied to a study comparing the hospitalization rates between childhood cancer survivors and healthy controls, with data collected from 26 medical institutions across North America during more than 20 years of follow-up.
在关于复发性事件的长期随访研究中,观察模式随时间的推移可能不一致。在某些观察期间,可能会连续监测受试者,以便了解每个事件发生的时间。而在其他观察期间,可能会离散地监测受试者,仅知道每个期间的事件数量。这会导致混合复发性事件和面板计数数据。在这些数据中,个体内事件之间存在依赖性。此外,如果数据是从多个中心收集的,那么中心内受试者之间还有另一层依赖性。已经有针对聚类复发性事件数据的文献,但没有针对聚类混合复发性事件和面板计数数据的文献。忽略聚类效应可能会导致分析效率降低。在本文中,我们提出了一种边缘建模方法来考虑聚类效应,并提供了所得回归参数的渐近分布。我们的模拟研究表明,该方法在实际情况下效果良好。它被应用于一项比较儿童癌症幸存者和健康对照者之间住院率的研究,该研究的数据来自北美 26 家医疗机构,随访时间超过 20 年。