We propose and validate a multivariate classification algorithm for characterizing changes in human intracranial electroencephalographic data (iEEG) after learning motor sequences. The algorithm is based on a Hidden Markov Model (HMM) that captures spatio-temporal properties of the iEEG at the level of single trials. Continuous intracranial iEEG was acquired during two sessions (one before and one after a night of sleep) in two patients with depth electrodes implanted in several brain areas. They performed a visuomotor sequence (serial reaction time task, SRTT) using the fingers of their non-dominant hand. Our results show that the decoding algorithm correctly classified single iEEG trials from the trained sequence as belonging to either th...
The neuroimaging community heavily relies on statistical inference to explain measured brain activit...
Recent studies have shown that it is feasible to record simultaneously intracerebral EEG (icEEG) and...
We present results from single-trial analyses conducted on Electroencephalography (EEG) data recorde...
We propose and validate a multivariate classification algorithm for characterizing changes in human ...
We propose and validate a multivariate classification algorithm for characterizing changes in human ...
BACKGROUND: Machine learning models have been successfully applied to neuroimaging data to make pred...
AbstractBackgroundMachine learning models have been successfully applied to neuroimaging data to mak...
Intracranial electroencephalography (iEEG) is an invasive diagnostic procedure used in severe drug-r...
Through decades of research, neuroscientists and clinicians have identified an array of brain areas ...
Humans are capable of acquiring multiple types of information presented in the same information stre...
We present an electrophysiological dataset recorded from nine subjects during a verbal working memor...
AbstractPresenting different visual object stimuli can elicit detectable changes in EEG recordings, ...
Two of the most fundamental questions in the field of neurosciences are how information is represent...
We present the results using single-trial analyses and pattern classifier to analyze Electroencephal...
The following submission contains the data reported from the manuscript "Intracranial entrainment re...
The neuroimaging community heavily relies on statistical inference to explain measured brain activit...
Recent studies have shown that it is feasible to record simultaneously intracerebral EEG (icEEG) and...
We present results from single-trial analyses conducted on Electroencephalography (EEG) data recorde...
We propose and validate a multivariate classification algorithm for characterizing changes in human ...
We propose and validate a multivariate classification algorithm for characterizing changes in human ...
BACKGROUND: Machine learning models have been successfully applied to neuroimaging data to make pred...
AbstractBackgroundMachine learning models have been successfully applied to neuroimaging data to mak...
Intracranial electroencephalography (iEEG) is an invasive diagnostic procedure used in severe drug-r...
Through decades of research, neuroscientists and clinicians have identified an array of brain areas ...
Humans are capable of acquiring multiple types of information presented in the same information stre...
We present an electrophysiological dataset recorded from nine subjects during a verbal working memor...
AbstractPresenting different visual object stimuli can elicit detectable changes in EEG recordings, ...
Two of the most fundamental questions in the field of neurosciences are how information is represent...
We present the results using single-trial analyses and pattern classifier to analyze Electroencephal...
The following submission contains the data reported from the manuscript "Intracranial entrainment re...
The neuroimaging community heavily relies on statistical inference to explain measured brain activit...
Recent studies have shown that it is feasible to record simultaneously intracerebral EEG (icEEG) and...
We present results from single-trial analyses conducted on Electroencephalography (EEG) data recorde...