Saurabh Paul, Christos Boutsidis, et al.
JMLR
This work presents a robust method for characterizing addiction patterns in individuals with cocaine and heroin use disorders by analyzing short, spontaneous speech samples using a large language model (LLM) framework. This architecture is designed to identify key elements of the Impaired Response Inhibition and Salience Attribution (iRISA) theoretical model. Specifically, iRISA captures disruptions in self-regulation, inhibitory control, and the attribution of salience to drug-related versus non-drug-related stimuli. Our analysis revealed significant correlations between iRISA elements and substance use patterns. For instance, longer periods of abstinence were linked to more pronounced associations with iRISA elements related to the negative consequences of drug use (NC), while associations with positive consequences of quitting drugs (PC) became less prominent. This suggests that individuals in abstinence may develop cognitive distancing from the drug's reinforcing effects. Performance models utilizing outputs from the iRISA LLM framework demonstrated that integrating features from both PC and NC significantly improved predictive accuracy, especially for variables such as days of abstinence (r up to 0.58), withdrawal symptoms (r up to 0.41), and dependence severity (r up to 0.42). These findings highlight the potential of this approach to provide in-depth, data-driven insights into addiction, bridging the gap between computational linguistics and clinical substance abuse research, with significant implications for clinical interventions.