The utility of a latent-cause framework for understanding addiction phenomena.

Journal: Addiction neuroscience

Volume: 10

Issue: 

Year of Publication: 

Affiliated Institutions:  Limbic Limited, London UK. National Institute of Mental Health & National Institute on Drug Abuse, National Institutes of Health, Bethesda MD, USA. Department of Psychiatry, University Behavioral Health Care & Brain Health Institute Rutgers University, New Brunswick NJ, USA. Princeton Neuroscience Institute & Department of Psychology, Princeton University, Princeton NJ, USA.

Abstract summary 

Computational models of addiction often rely on a model-free reinforcement learning (RL) formulation, owing to the close associations between model-free RL, habitual behavior and the dopaminergic system. However, such formulations typically do not capture key recurrent features of addiction phenomena such as craving and relapse. Moreover, they cannot account for goal-directed aspects of addiction that necessitate contrasting, model-based formulations. Here we synthesize a growing body of evidence and propose that a latent-cause framework can help unify our understanding of several recurrent phenomena in addiction, by viewing them as the inferred return of previous, persistent "latent causes". We demonstrate that applying this framework to Pavlovian and instrumental settings can help account for defining features of craving and relapse such as outcome-specificity, generalization, and cyclical dynamics. Finally, we argue that this framework can bridge model-free and model-based formulations, and account for individual variability in phenomenology by accommodating the memories, beliefs, and goals of those living with addiction, motivating a centering of the individual, subjective experience of addiction and recovery.

Authors & Co-authors:  Pisupati Langdon Konova Niv

Study Outcome 

Source Link: Visit source

Statistics
Citations :  Ahn WY, Dai J, Vassileva J, Busemeyer JR, & Stout JC (2016). Computational modeling for addiction medicine: From cognitive models to clinical applications. Progress in brain research, 224, 53–65.
Authors :  4
Identifiers
Doi : 100143
SSN : 2772-3925
Study Population
Male,Female
Mesh Terms
Other Terms
addiction;craving;latent-cause inference;relapse
Study Design
Study Approach
Country of Study
Publication Country
Netherlands