Health risk behavior, including poor diet, physical inactivity, tobacco and other substance use, causes as much as 40% of the illness, suffering, and early death related to chronic diseases. Non-adherence to medical regimens is an important exemplar of the challenges in changing health risk behavior -- and is common, costly (due to increased utilization of healthcare services), and associated with poor patient outcomes. Although an array of interventions have been shown to be effective in promoting health behavior change, much of this work has been siloed (focused on one disorder at a time). Additionally, interventions are typically intended to engage multiple mechanisms of behavior change, but the mechanisms by which they actually work are infrequently systematically examined. One promising domain of putative behavior change targets is that of self-regulation -- a person's ability to manage cognitive, motivational, and emotional resources to act in accordance with his/her long-term goals. The Center for Technology and Behavioral Health, a national NIH-funded P30 Center of Excellence uses science to inform the development, evaluation, and implementation of technology (web, mobile)-based self- regulation tools for behavior change targeting a wide array of populations and health behaviors. This work examines behavioral phenomena (and the mechanisms by which they work) ranging from substance abuse, mental health, chronic pain management, medication adherence, diet, exercise, diabetes, and smoking. Self- regulation tools offered on mobile platforms enable widespread reach and scalability of effective interventions. In this proposal, we plan to examine putative targets (processes) of behavior change within the self- regulation mechanism domain across contexts, populations, and assays - in 3 primary levels of analysis: (1) psychological (e.g., constructs such as self-efficacy; emotion regulation; response inhibition), (2) behavioral (e.g., tasks of reward responsiveness; temporal horizon), and (3) biological (structural and functional MRI of key neural circuitry). We will evaluate the extent to which we can engage and manipulate these putative targets both within and outside of laboratory settings (using a novel mobile self-regulation monitoring and intervention platform). We will conduct this work with two populations for which behavior plays a critical role in the course of medical regimen adherence, health, and health outcomes: (1) smokers and (2) obese/overweight persons. We will then examine cross-assay validity and cross-context and cross-sample reliability of assays to identify relations among self-regulatory targets. We will finally evaluate the degree to which engaging targets produces a desired change in medical regimen adherence (across 4 week self-regulation interventions) and health behavior among smokers and obese/overweight persons. This project will identify valid and replicable assays of mechanisms of self-regulation across populations to inform an ontology of self-regulation that can ultimately inform development of health behavior interventions of maximal efficacy and potency.

Public Health Relevance

Because the need to alter health-related behavior is ubiquitous across medicine, understanding the extent to which the principles of effective health behavior change (and the mechanisms by which they work) are similar or differ across health conditions and settings is a critically important area of scientific inquiry -- and may inform more efficient, cost-effective, and patient-centered care. This line of research may allow us to make great strides in crafting 'precision medicine' approaches for a wide array of populations.

Agency
National Institute of Health (NIH)
Institute
National Institute on Drug Abuse (NIDA)
Type
Exploratory/Developmental Cooperative Agreement Phase I (UH2)
Project #
5UH2DA041713-02
Application #
9139956
Study Section
Special Emphasis Panel (ZRG1)
Program Officer
Aklin, Will
Project Start
2015-09-15
Project End
2018-06-30
Budget Start
2016-07-01
Budget End
2017-06-30
Support Year
2
Fiscal Year
2016
Total Cost
Indirect Cost
Name
Dartmouth College
Department
Psychiatry
Type
Schools of Medicine
DUNS #
041027822
City
Hanover
State
NH
Country
United States
Zip Code
Eisenberg, Ian W; Bissett, Patrick G; Canning, Jessica R et al. (2018) Applying novel technologies and methods to inform the ontology of self-regulation. Behav Res Ther 101:46-57
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Sochat, Vanessa V; Eisenberg, Ian W; Enkavi, A Zeynep et al. (2016) The Experiment Factory: Standardizing Behavioral Experiments. Front Psychol 7:610