Investigating the effect of changing parameters when building prediction models for post-stroke aphasia.
Ajay D HalaiAnna M WoollamsMatthew A Lambon RalphPublished in: Nature human behaviour (2020)
Neuroimaging has radically improved our understanding of how speech and language abilities map to the brain in normal and impaired participants, including the diverse, graded variations observed in post-stroke aphasia. A handful of studies have begun to explore the reverse inference: creating brain-to-behaviour prediction models. In this study, we explored the effect of three critical parameters on model performance: (1) brain partitions as predictive features, (2) combination of multimodal neuroimaging and (3) type of machine learning algorithms. We explored the influence of these factors while predicting four principal dimensions of language and cognition variation in post-stroke aphasia. Across all four behavioural dimensions, we consistently found that prediction models derived from diffusion-weighted data did not improve performance over models using structural measures extracted from T1 scans. Our results provide a set of principles to guide future work aiming to predict outcomes in neurological patients from brain imaging data.
Keyphrases
- white matter
- machine learning
- resting state
- cerebral ischemia
- diffusion weighted
- functional connectivity
- big data
- autism spectrum disorder
- electronic health record
- ejection fraction
- end stage renal disease
- multiple sclerosis
- high resolution
- deep learning
- contrast enhanced
- prognostic factors
- magnetic resonance
- magnetic resonance imaging
- blood brain barrier
- metabolic syndrome
- single cell
- current status
- adipose tissue
- chronic pain
- fluorescence imaging
- patient reported outcomes