Despite strong theoretical and clinical interest, characterization of the common and distinct neurobiological alterations across drug and behavioral addictions cannot be feasibly addressed within a single neuroimaging study. This research project will fill this knowledge gap by integratively using neuroimaging meta-analytic tools and a large amalgamated resting state fMRI (rs-fMRI) data set to rigorously characterize common (addiction- general) and distinct (drug/condition-specific) network-level brain alterations across addictive disorders. Available neuroimaging meta-analytic tools allow for synthesis of the extant literature and can be exploited to inform common and distinct neurobiological alterations across addiction. In addition, assessment of large-scale brain networks through (meta-analytic and rs-fMRI approaches) provides a more complete and coherent framework to appreciate such addiction-related alterations. As such, the innovative combination of such data streams offers the ability to inform heuristic frameworks guiding future research, fractionation of the addiction phenotype, and identification of neurobiological intervention targets. The overall objective of this project is to quantitatively synthesize the addiction-related neuroimaging literature (Aim 1), that then inform mega-analysis of a large amalgamated rs-fMRI data set (Aim 2), the behavioral interpretation of which will be facilitated by emerging meta-analytic techniques (Aim 3), thereby enabling cross-drug comparisons of network-level brain alterations. The feasibility of this overall analytic framework is evidenced by significant preliminary work in nicotine addiction. Specifically, this project will comprehensively synthesize the addiction-related neuroimaging literature to identify disrupted addiction-general and drug/condition-specific regional nodes across drug and behavioral addictions (e.g., alcohol, nicotine, marijuana, stimulants, opiates) and behavioral addictions (e.g., gambling, internet gaming) as well as obesity (Aim 1). Harnessing the accumulated volume of published neuroimaging results will allow for direct comparison of conditions that were never compared with each other in the primary studies. Meta-analytically informed hypotheses will be applied to an amalgamated rs-fMRI data set for targeted testing of altered functional connectivity across large-scale brain networks (Aim 2). To more fully contextualize the behavioral consequences of such alterations, we will employ network-level meta-analytic techniques to quantitatively delineate behavioral phenomena linked with regional and network-level alterations impacted by addiction (Aim 3). Efforts to archive, mine, and synthesize the accumulated knowledge of addictions impact on the brain are critical to inform analysis of large neuroimaging data sets generated through amalgamated sources or new data collection efforts.

Public Health Relevance

Brain imaging has contributed important insight into how long-term use of various addictive drugs changes the human brain, yet there remains a need to integrate this accumulated knowledge in a cohesive fashion. Towards this goal, the current project uses emerging neuroimaging analysis tools to combine data from many studies and sources to characterize the common and distinct changes across addictive drugs and related disorders. Improved understanding of the brain changes associated with addiction is important to inform: the development of new models, the evolution of improved treatment interventions, and strategies to identify individuals at high risk for addiction.

Agency
National Institute of Health (NIH)
Institute
National Institute on Drug Abuse (NIDA)
Type
Research Project (R01)
Project #
1R01DA041353-01A1
Application #
9239222
Study Section
Special Emphasis Panel (ZRG1)
Program Officer
Grant, Steven J
Project Start
2017-06-01
Project End
2020-04-30
Budget Start
2017-06-01
Budget End
2018-04-30
Support Year
1
Fiscal Year
2017
Total Cost
Indirect Cost
Name
Florida International University
Department
Physics
Type
Schools of Arts and Sciences
DUNS #
071298814
City
Miami
State
FL
Country
United States
Zip Code
33199
Sutherland, Matthew T; Stein, Elliot A (2018) Functional Neurocircuits and Neuroimaging Biomarkers of Tobacco Use Disorder. Trends Mol Med 24:129-143
Riedel, Michael C; Yanes, Julio A; Ray, Kimberly L et al. (2018) Dissociable meta-analytic brain networks contribute to coordinated emotional processing. Hum Brain Mapp 39:2514-2531
Yanes, Julio A; Riedel, Michael C; Ray, Kimberly L et al. (2018) Neuroimaging meta-analysis of cannabis use studies reveals convergent functional alterations in brain regions supporting cognitive control and reward processing. J Psychopharmacol 32:283-295
Sutherland, Matthew T; Fishbein, Diana H (2017) Higher Trait Psychopathy Is Associated with Increased Risky Decision-Making and Less Coincident Insula and Striatal Activity. Front Behav Neurosci 11:245