Bayesian Inference of Psychometric Variables From Brain and Behavior in Implicit Association Tests
Christian A. Kothe, Sean Mullen, Michael V. Bronstein, Grant Hanada, Marcelo Cicconet, Aaron N. McInnes, Tim Mullen, Marc Aafjes, Scott R. Sponheim, Alik S. Widge

TL;DR
This paper introduces a Bayesian model that integrates neural and behavioral data to improve the prediction of mental health variables from Implicit Association Tests, surpassing traditional reaction time-based methods.
Contribution
A novel sparse hierarchical Bayesian approach that combines multi-modal data for more accurate psychometric inference in small-cohort IAT studies.
Findings
Achieved AUCs of 0.73 and 0.76 in two IAT variants.
Performance comparable to state-of-the-art methods.
Outperformed traditional D-score in accuracy and consistency.
Abstract
Objective. We establish a principled method for inferring mental health related psychometric variables from neural and behavioral data using the Implicit Association Test (IAT) as the data generation engine, aiming to overcome the limited predictive performance (typically under 0.7 AUC) of the gold-standard D-score method, which relies solely on reaction times. Approach. We propose a sparse hierarchical Bayesian model that leverages multi-modal data to predict experiences related to mental illness symptoms in new participants. The model is a multivariate generalization of the D-score with trainable parameters, engineered for parameter efficiency in the small-cohort regime typical of IAT studies. Data from two IAT variants were analyzed: a suicidality-related E-IAT () and a psychosis-related PSY-IAT (). Main Results. Our approach overcomes a high inter-individual…
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Taxonomy
TopicsMental Health Research Topics · Schizophrenia research and treatment · Emotion and Mood Recognition
