Li Xiaoxue, Anderson Stewart J, Shiffman Saul, Zhang Bo
Department of Biostatistics, University of Pittsburgh, Pittsburgh, PA, USA.
Department of Psychology, University of Pittsburgh, Pittsburgh, PA, USA.
J Appl Stat. 2020 Sep 3;49(2):498-521. doi: 10.1080/02664763.2020.1815676. eCollection 2022.
Ecological momentary assessment (EMA) studies investigate intensive repeated observations of the current behavior and experiences of subjects in real time. In particular, such studies aim to minimize recall bias and maximize ecological validity, thereby strengthening the investigation and inference of microprocesses that influence behavior in real-world contexts by gathering intensive information on the temporal patterning of behavior of study subjects. Throughout this paper, we focus on the data analysis of an EMA study that examined behavior of intermittent smokers (ITS). Specifically, we sought to explore the pattern of clustered smoking behavior of ITS, or smoking 'bouts', as well as the covariates that predict such smoking behavior. To do this, in this paper we introduce a framework for characterizing the temporal behavior of ITS via the functions of event gap time to distinguish the smoking bouts. We used the time-varying coefficient models for the cumulative log gap time and to characterize the temporal patterns of smoking behavior, while simultaneously adjusting for behavioral covariates, and incorporated the inverse probability weighting into the models to accommodate missing data. Simulation studies showed that irrespective of whether missing by design or missing at random, the model was able to reliably determine prespecified time-varying functional forms of a given covariate coefficient, provided the the within-subject level was small.
生态瞬时评估(EMA)研究旨在实时密集重复观察受试者当前的行为和经历。具体而言,此类研究旨在将回忆偏差降至最低,并将生态效度最大化,从而通过收集关于研究对象行为时间模式的密集信息,加强对影响现实世界中行为的微观过程的调查和推断。在本文中,我们重点关注一项EMA研究的数据分析,该研究考察了间歇性吸烟者(ITS)的行为。具体来说,我们试图探究ITS的集群吸烟行为模式,即吸烟“发作”,以及预测此类吸烟行为的协变量。为此,在本文中我们引入了一个框架,通过事件间隔时间的函数来表征ITS的时间行为,以区分吸烟发作。我们使用累积对数间隔时间的时变系数模型来表征吸烟行为的时间模式,同时对行为协变量进行调整,并将逆概率加权纳入模型以处理缺失数据。模拟研究表明,无论数据是有意缺失还是随机缺失,只要受试者内部水平较小,该模型就能可靠地确定给定协变量系数的预先指定的时变函数形式。