Bayesian computational markers of relapse in methamphetamine dependence
Methamphetamine use disorder is associated with a high likelihood of relapse. Identifying robust predictors of relapse that have explanatory power is critical to develop secondary prevention based on a mechanistic understanding of relapse. Computational approaches have the potential to identify such...
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doaj-e61a120ad4c04ff4a7f3a820586eed7e2020-11-25T01:33:27ZengElsevierNeuroImage: Clinical2213-15822019-01-0122Bayesian computational markers of relapse in methamphetamine dependenceKatia M. Harlé0Angela J. Yu1Martin P. Paulus2VA San Diego Healthcare System, United States of America; Department of Psychiatry, University of California San Diego, La Jolla, CA, United States of America; Corresponding author at: VA San Diego Healthcare System, 3350 La Jolla Village Drive, San Diego, CA 92161, United States of America.Department of Cognitive Science, University of California San Diego, La Jolla, CA, United States of AmericaDepartment of Psychiatry, University of California San Diego, La Jolla, CA, United States of America; Laureate Institute for Brain Research, Tulsa, OK, United States of AmericaMethamphetamine use disorder is associated with a high likelihood of relapse. Identifying robust predictors of relapse that have explanatory power is critical to develop secondary prevention based on a mechanistic understanding of relapse. Computational approaches have the potential to identify such predictive markers of psychiatric illness, with the advantage of providing a finer mechanistic explanation of the cognitive processes underlying psychiatric vulnerability.In this study, sixty-two recently sober methamphetamine-dependent individuals were recruited from a 28-day inpatient treatment program, and completed a Stop Signal Task (SST) while undergoing functional magnetic resonance imaging (fMRI). These individuals were prospectively followed for 1 year and assessed for relapse to methamphetamine use. Thirty-three percent of followed participants reported relapse.We found that neural activity associated with two types of Bayesian prediction error, i.e. the difference between actual and expected need to stop on a given trial, significantly differentiated those individuals who remained abstinent and those who relapsed. Specifically, relapsed individuals exhibited smaller neural activations to such Bayesian prediction errors relative to those individuals who remained abstinent in the left temporoparietal junction (Cohen's d = 0.91), the left inferior frontal gyrus (Cohen's d = 0.57), and left anterior insula (Cohen's d = 0.63). In contrast, abstinent and relapsed participants did not differ in neural activation to non-model based task contrasts or on various self-report clinical measures.In conclusion, Bayesian cognitive models may help identify predictive biomarkers of relapse, while providing a computational explanation of belief processing and updating deficits in individuals with methamphetamine use disorder. Keywords: Methamphetamine dependence, Relapse, Bayesian model, Inhibitory control, Stimulanthttp://www.sciencedirect.com/science/article/pii/S2213158219301445 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Katia M. Harlé Angela J. Yu Martin P. Paulus |
spellingShingle |
Katia M. Harlé Angela J. Yu Martin P. Paulus Bayesian computational markers of relapse in methamphetamine dependence NeuroImage: Clinical |
author_facet |
Katia M. Harlé Angela J. Yu Martin P. Paulus |
author_sort |
Katia M. Harlé |
title |
Bayesian computational markers of relapse in methamphetamine dependence |
title_short |
Bayesian computational markers of relapse in methamphetamine dependence |
title_full |
Bayesian computational markers of relapse in methamphetamine dependence |
title_fullStr |
Bayesian computational markers of relapse in methamphetamine dependence |
title_full_unstemmed |
Bayesian computational markers of relapse in methamphetamine dependence |
title_sort |
bayesian computational markers of relapse in methamphetamine dependence |
publisher |
Elsevier |
series |
NeuroImage: Clinical |
issn |
2213-1582 |
publishDate |
2019-01-01 |
description |
Methamphetamine use disorder is associated with a high likelihood of relapse. Identifying robust predictors of relapse that have explanatory power is critical to develop secondary prevention based on a mechanistic understanding of relapse. Computational approaches have the potential to identify such predictive markers of psychiatric illness, with the advantage of providing a finer mechanistic explanation of the cognitive processes underlying psychiatric vulnerability.In this study, sixty-two recently sober methamphetamine-dependent individuals were recruited from a 28-day inpatient treatment program, and completed a Stop Signal Task (SST) while undergoing functional magnetic resonance imaging (fMRI). These individuals were prospectively followed for 1 year and assessed for relapse to methamphetamine use. Thirty-three percent of followed participants reported relapse.We found that neural activity associated with two types of Bayesian prediction error, i.e. the difference between actual and expected need to stop on a given trial, significantly differentiated those individuals who remained abstinent and those who relapsed. Specifically, relapsed individuals exhibited smaller neural activations to such Bayesian prediction errors relative to those individuals who remained abstinent in the left temporoparietal junction (Cohen's d = 0.91), the left inferior frontal gyrus (Cohen's d = 0.57), and left anterior insula (Cohen's d = 0.63). In contrast, abstinent and relapsed participants did not differ in neural activation to non-model based task contrasts or on various self-report clinical measures.In conclusion, Bayesian cognitive models may help identify predictive biomarkers of relapse, while providing a computational explanation of belief processing and updating deficits in individuals with methamphetamine use disorder. Keywords: Methamphetamine dependence, Relapse, Bayesian model, Inhibitory control, Stimulant |
url |
http://www.sciencedirect.com/science/article/pii/S2213158219301445 |
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AT katiamharle bayesiancomputationalmarkersofrelapseinmethamphetaminedependence AT angelajyu bayesiancomputationalmarkersofrelapseinmethamphetaminedependence AT martinppaulus bayesiancomputationalmarkersofrelapseinmethamphetaminedependence |
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