Functional Brain Network Identification in Opioid Use Disorder Using Machine Learning Analysis of Resting-State fMRI BOLD Signals
Understanding the neurobiology of opioid use disorder (OUD) using resting-state functional magnetic resonance imaging (rs-fMRI) may help inform treatment strategies to improve patient outcomes. Recent literature suggests temporal characteristics of rs-fMRI blood oxygenation level-dependent (BOLD) si...
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Zusammenfassung: | Understanding the neurobiology of opioid use disorder (OUD) using
resting-state functional magnetic resonance imaging (rs-fMRI) may help inform
treatment strategies to improve patient outcomes. Recent literature suggests
temporal characteristics of rs-fMRI blood oxygenation level-dependent (BOLD)
signals may offer complementary information to functional connectivity
analysis. However, existing studies of OUD analyze BOLD signals using measures
computed across all time points. This study, for the first time in the
literature, employs data-driven machine learning (ML) modeling of rs-fMRI BOLD
features representing multiple time points to identify region(s) of interest
that differentiate OUD subjects from healthy controls (HC). Following the
triple network model, we obtain rs-fMRI BOLD features from the default mode
network (DMN), salience network (SN), and executive control network (ECN) for
31 OUD and 45 HC subjects. Then, we use the Boruta ML algorithm to identify
statistically significant BOLD features that differentiate OUD from HC,
identifying the DMN as the most salient functional network for OUD.
Furthermore, we conduct brain activity mapping, showing heightened neural
activity within the DMN for OUD. We perform 5-fold cross-validation
classification (OUD vs. HC) experiments to study the discriminative power of
functional network features with and without fusing demographic features. The
DMN shows the most discriminative power, achieving mean AUC and F1 scores of
80.91% and 73.97%, respectively, when fusing BOLD and demographic features.
Follow-up Boruta analysis using BOLD features extracted from the medial
prefrontal cortex, posterior cingulate cortex, and left and right
temporoparietal junctions reveals significant features for all four functional
hubs within the DMN. |
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DOI: | 10.48550/arxiv.2410.19147 |