Frequency domain analysis of human subdural recordings.

Department of Neurology, The University of Chicago, Chicago, Illinois 60637, USA.
Journal of Clinical Neurophysiology (Impact Factor: 1.43). 05/2007; 24(2):205-13. DOI: 10.1097/WNP.0b013e318039b191
Source: PubMed


It is possible to localize many aspects of cortical function and dysfunction without the use of direct electrical stimulation of cortex. This study explores the degree to which information can be obtained about functional cortical organization relative to epileptogenic regions through analysis of electrocorticographic recordings in the frequency domain. Information about the extent of seizure regions and the location of the normal sensory and motor homunculus and some higher language and memory related areas can be obtained through the analysis of task-related power spectrum changes and changes in lateral interelectrode coherence patterns calculated from interictal and ictal recordings.

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Available from: Kurt E Hecox, Mar 06, 2015
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