Abstract

Identifying objective and accurate markers of cocaine dependence (CD) can innovate its prevention and treatment. Existing evidence suggests that CD is characterized by a wide range of cognitive deficits, most notably by increased impulsivity. Impulsivity is multidimensional and it is unclear which of its various dimensions would have the highest predictive utility for CD. The machine-learning approach is highly promising for discovering predictive markers of disease. Here, we used machine learning to identify multivariate predictive patterns of impulsivity phenotypes that can accurately classify individuals with CD. Current cocaine-dependent users (N = 31) and healthy controls (N = 23) completed the self-report Barratt Impulsiveness Scale-11 and five neurocognitive tasks indexing different dimensions of impulsivity: (1) Immediate Memory Task (IMT), (2) Stop-Signal Task, (3) Delay-Discounting Task (DDT), (4) Iowa Gambling Task (IGT), and (5) Probabilistic Reversal-Learning task. We applied a machine-learning algorithm to all impulsivity measures. Machine learning accurately classified individuals with CD and predictions were generalizable to new samples (area under the curve of the receiver-operating characteristic curve was 0.912 in the test set). CD membership was predicted by higher scores on motor and non-planning trait impulsivity, poor response inhibition, and discriminability on the IMT, higher delay discounting on the DDT, and poor decision making on the IGT. Our results suggest that multivariate behavioral impulsivity phenotypes can predict CD with high degree of accuracy, which can potentially be used to assess individuals' vulnerability to CD in clinical settings.

Highlights

  • Substance misuse is one of the biggest public health problems that have a major impact on our societies and nations

  • The sample consisted of 23 healthy controls (HCs) and 31 Cocainedependent individuals (CDIs) recruited from ongoing studies at the Institute for Drug and Alcohol Studies (IDAS) at Virginia Commonwealth University (VCU)

  • This study demonstrates that a multivariate battery of behavioral impulsivity measures can accurately predict cocaine dependence (CD) using machinelearning approaches

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Summary

Introduction

Substance misuse is one of the biggest public health problems that have a major impact on our societies and nations. Impulsivity is indexed by laboratory neurocognitive measures that most commonly assess two main processes: [1] impulsive action [7], i.e., compromised ability to inhibit inappropriate behaviors, and [2] impulsive choice [8], reflecting suboptimal choices in the face of delay contingencies or potential reward/risk. Note that these two constructs are classified differently in value-based decision-making literature (e.g., action selection and valuation systems, respectively) [9].

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