The two sides of Phobos: Gray and white matter abnormalities in phobic individuals. Alessandro Grecucci, Alessandro Scarano, Ascensión Fumero, Francisco Rivero, · Rosario J. Marrero, Teresa Olivares, Yolanda Álvarez¿Pérez, Wenceslao Peñate. Cognitive, Afective, & Behavioral Neuroscience 2024
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2024Resumen
Small animal phobia (SAP) is a subtype of specifc phobia characterized by an intense and irrational fear of small animals, which has been underexplored in the neuroscientifc literature. Previous studies often faced limitations, such as small sample sizes, focusing on only one neuroimaging modality, and reliance on univariate analyses, which produced inconsistent fndings. This study was designed to overcome these issues by using for the frst time advanced multivariate machine-learning techniques to identify the neural mechanisms underlying SAP. Specifcally, we relied on the multimodal Canonical Correlation Analysis approach combined with Independent Component Analysis (ICA) to decompose the structural magnetic resonance images from 122 participants into covarying gray and white matter networks. Stepwise logistic regression and boosted decision trees were then used to extract a predictive model of SAP. Our results indicate that four covarying gray and white matter networks, IC19, IC14, IC21, and IC13, were critical in classifying SAP individuals from control subjects. These networks included brain regions, such as the Middle Temporal Gyrus, Precuneus, Insula, and Anterior Cingulate Cortex—all known for their roles in emotional regulation, cognitive control, and sensory processing. To test the generalizability of our results, we additionally ran a supervised machine-learning model (boosted decision trees), which achieved an 83.3% classifcation accuracy, with AUC of 0.9, indicating good predictive power. These fndings provide new insights into the neurobiological underpinnings of SAP and suggest potential biomarkers for diagnosing and treating this condition. The study ofers a more nuanced understanding of SAP, with implications for future research and clinical applications in anxiety disorders.