Integrating Intensive Longitudinal Data (ILD) to Inform the Development of Dynamic Theories of Behavior Change and Intervention Design: a Case Study of Scientific and Practical Considerations

被引:0
作者
Lindsey N. Potter
Jamie Yap
Walter Dempsey
David W. Wetter
Inbal Nahum-Shani
机构
[1] Huntsman Cancer Institute,Center for Health Outcomes and Population Equity (Center for HOPE)
[2] University of Utah,Department of Population Health Sciences
[3] University of Michigan,Institute for Social Research
[4] University of Michigan,Center for Methodologies for Adapting and Personalizing Prevention, Treatment, and Recovery Services for SUD and HIV (MAPS Center)
[5] University of Michigan,Department of Biostatistics
来源
Prevention Science | 2023年 / 24卷
关键词
Data integration; Data science; Health behavior interventions; Intensive longitudinal data (ILD); Just-in-time adaptive intervention (JITAI); Mobile health (mHealth); Smoking cessation;
D O I
暂无
中图分类号
学科分类号
摘要
The increasing sophistication of mobile and sensing technology has enabled the collection of intensive longitudinal data (ILD) concerning dynamic changes in an individual’s state and context. ILD can be used to develop dynamic theories of behavior change which, in turn, can be used to provide a conceptual framework for the development of just-in-time adaptive interventions (JITAIs) that leverage advances in mobile and sensing technology to determine when and how to intervene. As such, JITAIs hold tremendous potential in addressing major public health concerns such as cigarette smoking, which can recur and arise unexpectedly. In tandem, a growing number of studies have utilized multiple methods to collect data on a particular dynamic construct of interest from the same individual. This approach holds promise in providing investigators with a significantly more detailed view of how a behavior change processes unfold within the same individual than ever before. However, nuanced challenges relating to coarse data, noisy data, and incoherence among data sources are introduced. In this manuscript, we use a mobile health (mHealth) study on smokers motivated to quit (Break Free; R01MD010362) to illustrate these challenges. Practical approaches to integrate multiple data sources are discussed within the greater scientific context of developing dynamic theories of behavior change and JITAIs.
引用
收藏
页码:1659 / 1671
页数:12
相关论文
共 106 条
[1]  
Babb S(2017)Quitting smoking among adults - United States, 2000–2015 Mmwr-Morbidity and Mortality Weekly Report 65 1457-1464
[2]  
Malarcher A(2006)Analysis of longitudinal data: The integration of theoretical model, temporal design, and statistical model Annual Review of Psychology 57 505-528
[3]  
Schauer G(2002)The effect of the timing and spacing of observations in longitudinal studies of tobacco and other drug use: Temporal design considerations Drug and Alcohol Dependence 68 S85-96
[4]  
Asman K(2018)Who's still smoking? Disparities in adult cigarette smoking prevalence in the United States [Article] CA-A Cancer Journal for Clinicians 68 106-115
[5]  
Jamal A(2009)Cigarette smoking among adults and trends in smoking cessation-United States, 2008 (Reprinted from MMWR, vol 58, pg 1227–1232, 2009) Jama-Journal of the American Medical Association 302 2651-2654
[6]  
Collins LM(1992)Predictors of smoking relapse among self-quitters: A report from the normative aging study Addictive Behaviors 17 367-377
[7]  
Collins LM(2014)Combining information from two data sources with misreporting and incompleteness to assess hospice-use among cancer patients: A multiple imputation approach Statistics in Medicine 33 3710-3724
[8]  
Graham JW(1991)Ignorability and coarse data Annals of Statistics 19 2244-2253
[9]  
Drope J(2004)Shape of the relapse curve and long-term abstinence among untreated smokers [Review] Addiction 99 29-38
[10]  
Liber AC(2018)Handling missing data in the modeling of intensive longitudinal data Structural Equation Modeling: A Multidisciplinary Journal 25 715-736