Author ORCID Identifier
Lisa A. Marsch: https://orcid.org/0000-0001-6429-0965
David Kotz: https://orcid.org/0000-0001-7411-2783
Document Type
Article
Publication Date
4-29-2022
Publication Title
Frontiers in Psychiatry
Department
Geisel School of Medicine
Additional Department
Department of Computer Science
Abstract
Introduction: Across the U.S., the prevalence of opioid use disorder (OUD) and the rates of opioid overdoses have risen precipitously in recent years. Several effective medications for OUD (MOUD) exist and have been shown to be life-saving. A large volume of research has identified a confluence of factors that predict attrition and continued substance use during substance use disorder treatment. However, much of this literature has examined a small set of potential moderators or mediators of outcomes in MOUD treatment and may lead to over-simplified accounts of treatment non-adherence. Digital health methodologies offer great promise for capturing intensive, longitudinal ecologically-valid data from individuals in MOUD treatment to extend our understanding of factors that impact treatment engagement and outcomes.
Methods: This paper describes the protocol (including the study design and methodological considerations) from a novel study supported by the National Drug Abuse Treatment Clinical Trials Network at the National Institute on Drug Abuse (NIDA). This study (D-TECT) primarily seeks to evaluate the feasibility of collecting ecological momentary assessment (EMA), smartphone and smartwatch sensor data, and social media data among patients in outpatient MOUD treatment. It secondarily seeks to examine the utility of EMA, digital sensing, and social media data (separately and compared to one another) in predicting MOUD treatment retention, opioid use events, and medication adherence [as captured in electronic health records (EHR) and EMA data]. To our knowledge, this is the first project to include all three sources of digitally derived data (EMA, digital sensing, and social media) in understanding the clinical trajectories of patients in MOUD treatment. These multiple data streams will allow us to understand the relative and combined utility of collecting digital data from these diverse data sources. The inclusion of EHR data allows us to focus on the utility of digital health data in predicting objectively measured clinical outcomes.
Discussion: Results may be useful in elucidating novel relations between digital data sources and OUD treatment outcomes. It may also inform approaches to enhancing outcomes measurement in clinical trials by allowing for the assessment of dynamic interactions between individuals' daily lives and their MOUD treatment response.
Clinical Trial Registration: Identifier: NCT04535583.
DOI
10.3389/fpsyt.2022.871916
Original Citation
Lisa A. Marsch, Ching-Hua Chen, Sara R. Adams, Asma Asyyed, Monique B. Does, Saeed Hassanpour, Emily Hichborn, Melanie Jackson-Morris, Nicholas C. Jacobson, Heather K. Jones, David Kotz, Chantal A. Lambert-Harris, Zhiguo Li, Bethany McLeman, Varun Mishra, Catherine Stanger, Geetha Subramaniam, Weiyi Wu, and Cynthia I. Campbell. The Feasibility and Utility of Harnessing Digital Health to Understand Clinical Trajectories in Medication Treatment for Opioid Use Disorder: D-TECT Study Design and Methodological Considerations. Frontiers in Psychiatry, volume 13, article 871916, 12 pages. Frontiers, April 29, 2022. doi:10.3389/fpsyt.2022.871916. Section: Addictive Disorders.
Dartmouth Digital Commons Citation
Marsch, Lisa A.; Chen, Ching-Hua; Adams, Sara R.; Asyyed, Asma; Does, Monique B.; Hassanpour, Saeed; Hichborn, Emily; Jackson-Morris, Melanie; Jacobson, Nicholas C.; Jones, Heather K.; Kotz, David; Lambert-Harris, Chantal A.; Li, Zhiguo; McLeman, Bethany; Mishra, Varun; Stanger, Catherine; Subramaniam, Geetha; Wu, Weiyi; and Campbell, Cynthia I., "The Feasibility and Utility of Harnessing Digital Health to Understand Clinical Trajectories in Medication Treatment for Opioid Use Disorder: D-TECT Study Design and Methodological Considerations" (2022). Dartmouth Scholarship. 4296.
https://digitalcommons.dartmouth.edu/facoa/4296
Included in
Behavioral Medicine Commons, Behavior and Behavior Mechanisms Commons, Computer Sciences Commons, Health Information Technology Commons, Psychiatric and Mental Health Commons, Substance Abuse and Addiction Commons