Structural brain network topology underpinning ADHD and response to methylphenidate treatment.
Kristi R GriffithsTaylor A BraundMichael R KohnSimon ClarkeLeanne M WilliamsMayuresh S KorgaonkarPublished in: Translational psychiatry (2021)
Behavioural disturbances in attention deficit hyperactivity disorder (ADHD) are thought to be due to dysfunction of spatially distributed, interconnected neural systems. While there is a fast-growing literature on functional dysconnectivity in ADHD, far less is known about the structural architecture underpinning these disturbances and how it may contribute to ADHD symptomology and treatment prognosis. We applied graph theoretical analyses on diffusion MRI tractography data to produce quantitative measures of global network organisation and local efficiency of network nodes. Support vector machines (SVMs) were used for comparison of multivariate graph measures of 37 children and adolescents with ADHD relative to 26 age and gender matched typically developing children (TDC). We also explored associations between graph measures and functionally-relevant outcomes such as symptom severity and prediction of methylphenidate (MPH) treatment response. We found that multivariate patterns of reduced local efficiency, predominantly in subcortical regions (SC), were able to distinguish between ADHD and TDC groups with 76% accuracy. For treatment prognosis, higher global efficiency, higher local efficiency of the right supramarginal gyrus and multivariate patterns of increased local efficiency across multiple networks at baseline also predicted greater symptom reduction after 6 weeks of MPH treatment. Our findings demonstrate that graph measures of structural topology provide valuable diagnostic and prognostic markers of ADHD, which may aid in mechanistic understanding of this complex disorder.
Keyphrases
- attention deficit hyperactivity disorder
- autism spectrum disorder
- working memory
- systematic review
- type diabetes
- magnetic resonance imaging
- combination therapy
- white matter
- computed tomography
- skeletal muscle
- oxidative stress
- neural network
- data analysis
- deep learning
- artificial intelligence
- weight loss
- sentinel lymph node
- patient reported
- cerebral ischemia