Neonatal EEG graded for severity of background abnormalities in
hypoxic-ischaemic encephalopathy
- URL: http://arxiv.org/abs/2206.04420v1
- Date: Thu, 9 Jun 2022 11:22:29 GMT
- Title: Neonatal EEG graded for severity of background abnormalities in
hypoxic-ischaemic encephalopathy
- Authors: John M O'Toole, Sean R Mathieson, Sumit A Raurale, Fabio Magarelli,
William P Marnane, Gordon Lightbody, Geraldine B Boylan
- Abstract summary: The dataset consists of 169 hours of multichannel EEG from 53 neonates recorded in a neonatal intensive care unit.
All neonates received a diagnosis of hypoxic-ischaemic encephalopathy (HIE), the most common cause of brain injury in full term infants.
The grading system assesses EEG attributes such as amplitude and frequency, continuity, sleep-wake cycling, symmetry and synchrony, and abnormal waveforms.
- Score: 2.6168876987285303
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: This report describes a set of neonatal electroencephalogram (EEG) recordings
graded according to the severity of abnormalities in the background pattern.
The dataset consists of 169 hours of multichannel EEG from 53 neonates recorded
in a neonatal intensive care unit. All neonates received a diagnosis of
hypoxic-ischaemic encephalopathy (HIE), the most common cause of brain injury
in full term infants. For each neonate, multiple 1-hour epochs of good quality
EEG were selected and then graded for background abnormalities. The grading
system assesses EEG attributes such as amplitude and frequency, continuity,
sleep-wake cycling, symmetry and synchrony, and abnormal waveforms. Background
severity was then categorised into 4 grades: normal or mildly abnormal,
moderately abnormal, severely abnormal, and inactive EEG. The data can be used
as a reference set of multi-channel EEG for neonates with HIE, for EEG training
purposes, or for developing and evaluating automated grading algorithms.
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