Pearce et al., 2013 - Google Patents
Temporal changes of neocortical high-frequency oscillations in epilepsyPearce et al., 2013
View PDF- Document ID
- 4359247065782521370
- Author
- Pearce A
- Wulsin D
- Blanco J
- Krieger A
- Litt B
- Stacey W
- Publication year
- Publication venue
- Journal of neurophysiology
External Links
Snippet
High-frequency (100–500 Hz) oscillations (HFOs) recorded from intracranial electrodes are a potential biomarker for epileptogenic brain. HFOs are commonly categorized as ripples (100–250 Hz) or fast ripples (250–500 Hz), and a third class of mixed frequency events has …
- 230000002123 temporal effect 0 title abstract description 53
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