Measuring self-regulation in everyday life: Reliability and validity of smartphone-based experiments in alcohol use disorder
-
Published:2022-12-12
Issue:
Volume:
Page:
-
ISSN:1554-3528
-
Container-title:Behavior Research Methods
-
language:en
-
Short-container-title:Behav Res
Author:
Zech HilmarORCID, Waltmann Maria, Lee Ying, Reichert Markus, Bedder Rachel L., Rutledge Robb B., Deeken Friederike, Wenzel Julia, Wedemeyer Friederike, Aguilera Alvaro, Aslan Acelya, Bach Patrick, Bahr Nadja S., Ebrahimi Claudia, Fischbach Pascale C., Ganz Marvin, Garbusow Maria, Großkopf Charlotte M., Heigert Marie, Hentschel Angela, Belanger Matthew, Karl Damian, Pelz Patricia, Pinger Mathieu, Riemerschmid Carlotta, Rosenthal Annika, Steffen Johannes, Strehle Jens, Weiss Franziska, Wieder Gesine, Wieland Alfred, Zaiser Judith, Zimmermann Sina, Liu Shuyan, Goschke Thomas, Walter Henrik, Tost Heike, Lenz Bernd, Andoh Jamila, Ebner-Priemer Ulrich, Rapp Michael A., Heinz Andreas, Dolan Ray, Smolka Michael N., Deserno Lorenz,
Abstract
AbstractSelf-regulation, the ability to guide behavior according to one’s goals, plays an integral role in understanding loss of control over unwanted behaviors, for example in alcohol use disorder (AUD). Yet, experimental tasks that measure processes underlying self-regulation are not easy to deploy in contexts where such behaviors usually occur, namely outside the laboratory, and in clinical populations such as people with AUD. Moreover, lab-based tasks have been criticized for poor test–retest reliability and lack of construct validity. Smartphones can be used to deploy tasks in the field, but often require shorter versions of tasks, which may further decrease reliability. Here, we show that combining smartphone-based tasks with joint hierarchical modeling of longitudinal data can overcome at least some of these shortcomings. We test four short smartphone-based tasks outside the laboratory in a large sample (N = 488) of participants with AUD. Although task measures indeed have low reliability when data are analyzed traditionally by modeling each session separately, joint modeling of longitudinal data increases reliability to good and oftentimes excellent levels. We next test the measures’ construct validity and show that extracted latent factors are indeed in line with theoretical accounts of cognitive control and decision-making. Finally, we demonstrate that a resulting cognitive control factor relates to a real-life measure of drinking behavior and yields stronger correlations than single measures based on traditional analyses. Our findings demonstrate how short, smartphone-based task measures, when analyzed with joint hierarchical modeling and latent factor analysis, can overcome frequently reported shortcomings of experimental tasks.
Funder
Technische Universität Dresden
Publisher
Springer Science and Business Media LLC
Subject
General Psychology,Psychology (miscellaneous),Arts and Humanities (miscellaneous),Developmental and Educational Psychology,Experimental and Cognitive Psychology
Reference58 articles.
1. Bedder, R., Vaghi, M., Dolan, R., & Rutledge, R. (2020). Risk taking for potential losses but not gains increases with time of day. PsyArXiv. https://doi.org/10.31234/osf.io/3qdnx 2. Berkman, E. T., Falk, E. B., & Lieberman, M. D. (2011). In the trenches of real-world self-control. Psychological Science, 22, 498–506. 3. Botvinick, M., & Braver, T. (2015). Motivation and cognitive control: From behavior to neural mechanism. Annual Review of Psychology, 66, 83–113. 4. Brown, H. R., Zeidman, P., Smittenaar, P., Adams, R. A., McNab, F., Rutledge, R. B., & Dolan, R. J. (2014). Crowdsourcing for cognitive science–the utility of smartphones. PLoS One, 9(7), e100662. 5. Brown, V. M., Chen, J., Gillan, C. M., & Price, R. B. (2020). Improving the reliability of computational analyses: Model-based planning and its relationship with compulsivity. Biological Psychiatry: Cognitive Neuroscience and Neuroimaging, 5, 601–609.
Cited by
10 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|