In clinical practice, cognitive impairment is often observed after stroke. The efficacy of rehabilitative interventions is routinely assessed by means of a neuropsychological test battery. Nowadays, more evidences indicate that the neuroplasticity which occurs after stroke can be better understood by investigating changes in brain networks. In this study we applied advanced methodologies for effective connectivity estimation in combination with graph theory approach, to define EEG derived descriptors of brain networks underlying memory tasks. In particular, we proposed such descriptors to identify substrates of efficacy of a Brain-Computer Interface (BCI) controlled neurofeedback intervention to improve cognitive function after stroke. Electroencephalographic (EEG) data were collected from two stroke patients before and after a neurofeedback-based training for memory deficits. We show that the estimated brain connectivity indices were sensitive to different training intervention outcomes, thus suggesting an effective support to the neuropsychological assessment in the evaluation of the changes induced by the BCI-based cognitive rehabilitative intervention.
Time varying effective connectivity for describing brain network changes induced by a memory rehabilitation treatment / Toppi, Jlenia; Mattia, D.; Anzolin, Alessandra; Risetti, M.; Petti, Manuela; Cincotti, Febo; Babiloni, Fabio; Astolfi, Laura. - 2014:(2014), pp. 6786-6789. (Intervento presentato al convegno 36th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, EMBC 2014 tenutosi a Chicago; United States nel 2014-Aug) [10.1109/EMBC.2014.6945186].
Time varying effective connectivity for describing brain network changes induced by a memory rehabilitation treatment
TOPPI, JLENIA
;ANZOLIN, ALESSANDRA;PETTI, MANUELA;CINCOTTI, FEBO;BABILONI, Fabio;ASTOLFI, LAURA
2014
Abstract
In clinical practice, cognitive impairment is often observed after stroke. The efficacy of rehabilitative interventions is routinely assessed by means of a neuropsychological test battery. Nowadays, more evidences indicate that the neuroplasticity which occurs after stroke can be better understood by investigating changes in brain networks. In this study we applied advanced methodologies for effective connectivity estimation in combination with graph theory approach, to define EEG derived descriptors of brain networks underlying memory tasks. In particular, we proposed such descriptors to identify substrates of efficacy of a Brain-Computer Interface (BCI) controlled neurofeedback intervention to improve cognitive function after stroke. Electroencephalographic (EEG) data were collected from two stroke patients before and after a neurofeedback-based training for memory deficits. We show that the estimated brain connectivity indices were sensitive to different training intervention outcomes, thus suggesting an effective support to the neuropsychological assessment in the evaluation of the changes induced by the BCI-based cognitive rehabilitative intervention.File | Dimensione | Formato | |
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