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Latent brain state dynamics distinguish behavioral variability, impaired decision-making, and inattention

Psychology

Latent brain state dynamics distinguish behavioral variability, impaired decision-making, and inattention

W. Cai, S. L. Warren, et al.

Unlock the mystery of Attention Deficit Hyperactivity Disorder (ADHD) with groundbreaking research from Weidong Cai and colleagues. This study reveals how latent brain state dynamics influence decision-making and attention variability in children with ADHD, differentiating them from those without the disorder. Dive into the depths of brain connectivity and learn how optimal brain states can improve cognitive function.

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~3 min • Beginner • English
Abstract
Children with Attention Deficit Hyperactivity Disorder (ADHD) have prominent deficits in sustained attention that manifest as elevated intra-individual response variability and poor decision-making. Influential neurocognitive models have linked attentional fluctuations to aberrant brain dynamics, but these models have not been tested with computationally rigorous procedures. Here we use a Research Domain Criteria approach, drift-diffusion modeling of behavior, and a novel Bayesian Switching Dynamic System unsupervised learning algorithm, with ultrafast temporal resolution (490 ms) whole-brain task-fMRI data, to investigate latent brain state dynamics of salience, frontoparietal, and default mode networks and their relation to response variability, latent decision-making processes, and inattention. Our analyses revealed that occurrence of a task-optimal latent brain state predicted decreased intra-individual response variability and increased evidence accumulation related to decision-making. In contrast, occurrence and dwell time of a non-optimal latent brain state predicted inattention symptoms and furthermore, in a categorical analysis, distinguished children with ADHD from controls. Importantly, functional connectivity between salience and frontoparietal networks predicted rate of evidence accumulation to a decision threshold, whereas functional connectivity between salience and default mode networks predicted inattention. Taken together, our computational modeling reveals dissociable latent brain state features underlying response variability, impaired decision-making, and inattentional symptoms common to ADHD. Our findings provide novel insights into the neurobiology of attention deficits in children.
Publisher
Springer Nature
Published On
Feb 15, 2021
Authors
Weidong Cai, Stacie L. Warren, Katherine Duberg, Bruce Pennington, Stephen P. Hinshaw, Vinod Menon
Tags
ADHD
inattention
decision-making
brain dynamics
neuroimaging
evidence accumulation
IIRV
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