Conventional mass-univariate analyses have been previously used to test for group differences in neural signals. However, machine learning algorithms represent a multivariate decoding approach that may help to identify neuroimaging patterns associated with functional impairment in “individual” patients. We investigated whether fMRI allows classification of individual motor impairment after stroke using support vector machines (SVMs). Forty acute stroke patients and 20 control subjects underwent resting-state fMRI. Half of the patients showed significant impairment in hand motor function. Resting-state connectivity was computed by means of whole-brain correlations of seed time-courses in ipsilesional primary motor cortex (M1). Lesion locatio...
Previous studies investigating brain activation present during upper limb movement after stroke have...
We examined the effect of lesion on the resting-state functional connectivity in chronic post-stroke...
Pini et al. developed a new methodology for 'lesion network mapping' in stroke. This new methodology...
Purpose. This study was aimed at evaluating the motor cortical excitability and connectivity underly...
Interventional therapy using brain-computer interface (BCI) technology has shown promise in facilita...
Clinical research based on neuroimaging data has benefited from machine learning methods, which have...
Motor disability is a dominant and restricting symptom in multiple sclerosis, yet its neuroimaging c...
The primary motor cortex (M1) is often abnormally recruited in stroke patients with motor disabiliti...
Accumulating evidence shows that brain functional deficits may be impacted by damage to remote brain...
Balance of motor network activity between the two brain hemispheres after stroke is crucial for func...
The primary goal of this work was to apply data-driven machine learning regression to assess if rest...
Thorough assessment of cerebral dysfunction after acute lesions is paramount to optimize predicting ...
AbstractClinical research based on neuroimaging data has benefited from machine learning methods, wh...
BackgroundConsiderable evidence indicates that the functional connectome of the healthy human brain ...
The aim of this study was to identify differences in structural and functional brain connectivity be...
Previous studies investigating brain activation present during upper limb movement after stroke have...
We examined the effect of lesion on the resting-state functional connectivity in chronic post-stroke...
Pini et al. developed a new methodology for 'lesion network mapping' in stroke. This new methodology...
Purpose. This study was aimed at evaluating the motor cortical excitability and connectivity underly...
Interventional therapy using brain-computer interface (BCI) technology has shown promise in facilita...
Clinical research based on neuroimaging data has benefited from machine learning methods, which have...
Motor disability is a dominant and restricting symptom in multiple sclerosis, yet its neuroimaging c...
The primary motor cortex (M1) is often abnormally recruited in stroke patients with motor disabiliti...
Accumulating evidence shows that brain functional deficits may be impacted by damage to remote brain...
Balance of motor network activity between the two brain hemispheres after stroke is crucial for func...
The primary goal of this work was to apply data-driven machine learning regression to assess if rest...
Thorough assessment of cerebral dysfunction after acute lesions is paramount to optimize predicting ...
AbstractClinical research based on neuroimaging data has benefited from machine learning methods, wh...
BackgroundConsiderable evidence indicates that the functional connectome of the healthy human brain ...
The aim of this study was to identify differences in structural and functional brain connectivity be...
Previous studies investigating brain activation present during upper limb movement after stroke have...
We examined the effect of lesion on the resting-state functional connectivity in chronic post-stroke...
Pini et al. developed a new methodology for 'lesion network mapping' in stroke. This new methodology...