AbstractThe conductivity profile of the head has a major effect on EEG signals, but unfortunately the conductivity for the most important compartment, skull, is only poorly known. In dipole modeling studies, errors in modeled skull conductivity have been considered to have a detrimental effect on EEG source estimation. However, as dipole models are very restrictive, those results cannot be generalized to other source estimation methods. In this work, we studied the sensitivity of EEG and combined MEG+EEG source estimation to errors in skull conductivity using a distributed source model and minimum-norm (MN) estimation.We used a MEG/EEG modeling set-up that reflected state-of-the-art practices of experimental research. Cortical surfaces were...
Electroencephalogram (EEG) dipole source localization is a non-invasive technique used in the pre-su...
Bioelectric source localization in the brain is sensitive to geometry and conductivity properties of...
AbstractThe results of brain connectivity analysis using reconstructed source time courses derived f...
AbstractThe conductivity profile of the head has a major effect on EEG signals, but unfortunately th...
The conductivity profile of the head has a major effect on EEG signals, but unfortunately the conduc...
International audienceThe skull conductivity strongly influences the accuracy of EEG source localiza...
A reliable leadfield matrix is needed to solve the magnetoencephalography/electroencephalography (M/...
Knowing the correct skull conductivity is crucial for the accuracy of EEG source imaging, but unfort...
Electroencephalography (EEG) source imaging is an ill-posed inverse problem that requires accurate c...
Electromagnetic source characterisation requires accurate volume conductor models representing head ...
Summarization: Skull conductivity has a substantial influence on EEG and combined EEG and MEG source...
EEG source imaging (ESI) techniques estimate 3D brain activity based on electrical activity measured...
Accurate electroencephalographic (EEG) source localization requires an electrical head model incorpo...
PURPOSE: Electroencephalogram (EEG) source analysis is a noninvasive technique used in the presurgic...
EEG source analysis is a valuable tool for brain functionality research and for diagnosing neurologi...
Electroencephalogram (EEG) dipole source localization is a non-invasive technique used in the pre-su...
Bioelectric source localization in the brain is sensitive to geometry and conductivity properties of...
AbstractThe results of brain connectivity analysis using reconstructed source time courses derived f...
AbstractThe conductivity profile of the head has a major effect on EEG signals, but unfortunately th...
The conductivity profile of the head has a major effect on EEG signals, but unfortunately the conduc...
International audienceThe skull conductivity strongly influences the accuracy of EEG source localiza...
A reliable leadfield matrix is needed to solve the magnetoencephalography/electroencephalography (M/...
Knowing the correct skull conductivity is crucial for the accuracy of EEG source imaging, but unfort...
Electroencephalography (EEG) source imaging is an ill-posed inverse problem that requires accurate c...
Electromagnetic source characterisation requires accurate volume conductor models representing head ...
Summarization: Skull conductivity has a substantial influence on EEG and combined EEG and MEG source...
EEG source imaging (ESI) techniques estimate 3D brain activity based on electrical activity measured...
Accurate electroencephalographic (EEG) source localization requires an electrical head model incorpo...
PURPOSE: Electroencephalogram (EEG) source analysis is a noninvasive technique used in the presurgic...
EEG source analysis is a valuable tool for brain functionality research and for diagnosing neurologi...
Electroencephalogram (EEG) dipole source localization is a non-invasive technique used in the pre-su...
Bioelectric source localization in the brain is sensitive to geometry and conductivity properties of...
AbstractThe results of brain connectivity analysis using reconstructed source time courses derived f...