Abstract

Substance dependent individuals (SDI) often exhibit decision-making deficits; however, it remains unclear whether the nature of the underlying decision-making processes is the same in users of different classes of drugs and whether these deficits persist after discontinuation of drug use. We used computational modeling to address these questions in a unique sample of relatively “pure” amphetamine-dependent (N = 38) and heroin-dependent individuals (N = 43) who were currently in protracted abstinence, and in 48 healthy controls (HC). A Bayesian model comparison technique, a simulation method, and parameter recovery tests were used to compare three cognitive models: (1) Prospect Valence Learning with decay reinforcement learning rule (PVL-DecayRI), (2) PVL with delta learning rule (PVL-Delta), and (3) Value-Plus-Perseverance (VPP) model based on Win-Stay-Lose-Switch (WSLS) strategy. The model comparison results indicated that the VPP model, a hybrid model of reinforcement learning (RL) and a heuristic strategy of perseverance had the best post-hoc model fit, but the two PVL models showed better simulation and parameter recovery performance. Computational modeling results suggested that overall all three groups relied more on RL than on a WSLS strategy. Heroin users displayed reduced loss aversion relative to HC across all three models, which suggests that their decision-making deficits are longstanding (or pre-existing) and may be driven by reduced sensitivity to loss. In contrast, amphetamine users showed comparable cognitive functions to HC with the VPP model, whereas the second best-fitting model with relatively good simulation performance (PVL-DecayRI) revealed increased reward sensitivity relative to HC. These results suggest that some decision-making deficits persist in protracted abstinence and may be mediated by different mechanisms in opiate and stimulant users.

Highlights

  • Drug addiction is a chronic relapsing brain disease, characterized by compulsive drug seeking and use despite negative consequences in major life domains (Goldstein and Volkow, 2011)

  • The groups differed on age, such that healthy controls (HC) individuals were younger than heroin users [95% highest density interval (HDI) from 3.5 to 6.8, mean of HDI = 5.1; t(89) = 4.81, p = 6.11E-06] and older than amphetamine users [95% HDI from 0.1 to 3.4, mean of HDI = 1.8; t(84) = 2.11, p = 0.037], reflecting the timeline of heroin and amphetamine influx in Bulgaria

  • HC individuals had higher IQ than both amphetamine [95% HDI from 0.4 to 11.1, mean of HDI = 6.0; t(84) = 2.28, p = 0.025] and heroin users [95% HDI from 2.9 to 12.8, mean of HDI = 7.8; t(89) = 3.13, p = 0.002], but there was no difference between the two drug-using groups [95% HDI from −7.8 to 3.6; mean of HDI = −2.0; t(79) = 0.66, p = 0.510]

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Summary

Introduction

Drug addiction is a chronic relapsing brain disease, characterized by compulsive drug seeking and use despite negative consequences in major life domains (Goldstein and Volkow, 2011). Substance dependent individuals (SDI) are commonly characterized by decision-making deficits, both on laboratory tasks and in real life, manifested by lack of judgment and reduced concern for the consequences of their actions. What remains unknown is whether these decision-making deficits are represented across addictions to different classes of drugs. Animal and human studies have begun to reveal important cognitive and neurobiological differences between addictions to different classes of drugs, such as stimulants and opiates (Pettit et al, 1984; Rogers et al, 1999; Ersche et al, 2005b; Badiani et al, 2011). Genetic studies reveal minimal overlap of genes associated with stimulant and opiate addiction (Yuferov et al, 2010)

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