You are here

A Window into the Intoxicated Mind? Speech as an Index of Psychoactive Drug Effects.

dfslezak's picture
TitleA Window into the Intoxicated Mind? Speech as an Index of Psychoactive Drug Effects.
Publication TypeJournal Article
Year of Publication2014
AuthorsBedi, G., G. A. Cecchi, D. Fernandez Slezak, F. Carrillo, M. Sigman, and H. de Wit
JournalNeuropsychopharmacology
Date Published2014 Apr 3
ISSN1740-634X
Abstract

Abused drugs can profoundly alter mental states in ways that may motivate drug use. These effects are usually assessed with self-report, an approach that is vulnerable to biases. Analyzing speech during intoxication may present a more direct, objective measure, offering a unique 'window' into the mind. Here, we employed computational analyses of speech semantic and topological structure after ±3,4-methylenedioxymethamphetamine (MDMA; 'ecstasy') and methamphetamine in 13 ecstasy users. In 4 sessions, participants completed a 10-min speech task after MDMA (0.75 and 1.5 mg/kg), methamphetamine (20 mg), or placebo. Latent Semantic Analyses identified the semantic proximity between speech content and concepts relevant to drug effects. Graph-based analyses identified topological speech characteristics. Group-level drug effects on semantic distances and topology were assessed. Machine-learning analyses (with leave-one-out cross-validation) assessed whether speech characteristics could predict drug condition in the individual subject. Speech after MDMA (1.5 mg/kg) had greater semantic proximity than placebo to the concepts friend, support, intimacy, and rapport. Speech on MDMA (0.75 mg/kg) had greater proximity to empathy than placebo. Conversely, speech on methamphetamine was further from compassion than placebo. Classifiers discriminated between MDMA (1.5 mg/kg) and placebo with 88% accuracy, and MDMA (1.5 mg/kg) and methamphetamine with 84% accuracy. For the two MDMA doses, the classifier performed at chance. These data suggest that automated semantic speech analyses can capture subtle alterations in mental state, accurately discriminating between drugs. The findings also illustrate the potential for automated speech-based approaches to characterize clinically relevant alterations to mental state, including those occurring in psychiatric illness.Neuropsychopharmacology advance online publication, 30 April 2014; doi:10.1038/npp.2014.80.

DOI10.1038/npp.2014.80
Alternate JournalNeuropsychopharmacology
PubMed ID24694926
Grant ListR01 DA002812 / DA / NIDA NIH HHS / United States
R21 DA026570 / DA / NIDA NIH HHS / United States