Machine learning approaches to uncover the neural mechanisms of motivated behaviour: from ADHD to individual differences in effort and reward sensitivity
arXiv cs.LG / 4/20/2026
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Key Points
- The thesis applies machine learning to EEG and neuroimaging data to identify neural mechanisms linking motivated behavior to effort and reward evaluation, with relevance to ADHD and apathy.
- For ADHD classification, task-based EEG models outperform resting-state EEG, and gamma-band power over fronto-central and parietal regions provides the strongest predictive signal.
- White-matter integrity measures from diffusion MRI, analyzed with whole-brain permutation methods, relate to computationally modeled parameters of effort and reward sensitivity, highlighting SMA-connected tracts as a key hub.
- Structural MRI features enable machine learning to decode reward sensitivity and subclinical apathy, with fronto-parietal circuits repeatedly emerging as central to both effort valuation and reward processing.
- The work suggests potential neural biomarkers that could improve ADHD diagnosis and support personalized neurotechnological interventions targeting motivational impairments.
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