Potential biomarker for early detection of ADHD using phase-based brain connectivity and graph theory
- PMID: 37668834
- DOI: 10.1007/s13246-023-01310-y
Potential biomarker for early detection of ADHD using phase-based brain connectivity and graph theory
Abstract
This research investigates an efficient strategy for early detection and intervention of attention-deficit hyperactivity disorder (ADHD) in children. ADHD is a neurodevelopmental condition characterized by inattention and hyperactivity/impulsivity symptoms, which can significantly impact a child's daily life. This study employed two distinct brain functional connectivity measurements to assess our approach across various local graph features. Six common classifiers are employed to distinguish between children with ADHD and healthy control. Based on the phase-based analysis, the study proposes two biomarkers that differentiate children with ADHD from healthy control, with a remarkable accuracy of 99.174%. Our findings suggest that subgraph centrality of phase-lag index brain connectivity within the beta and delta frequency bands could be a promising biomarker for ADHD diagnosis. Additionally, we identify node betweenness centrality of inter-site phase clustering connectivity within the delta and theta bands as another potential biomarker that warrants further exploration. These biomarkers were validated using a t-statistical test and yielded a p-value of under 0.05, which approved their significant difference in these two groups. Suggested biomarkers have the potential to improve the accuracy of ADHD diagnosis and could help identify effective intervention strategies for children with the condition.
Keywords: ADHD detection; Functional EEG connectivity; Graph connectivity measurements; Phase synchronization measure; Phase-based connectivity.
© 2023. Australasian College of Physical Scientists and Engineers in Medicine.
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