Fully automatic peak frequency estimation of the posterior dominant rhythm in a large retrospective hospital EEG cohort

Objective: To develop and test a fully automated method for estimation of the peak frequency of the posterior dominant rhythm (PDR) in a large retrospective EEG cohort. Methods: Thresholding was used to select suitable EEG data segments for spectral estimation for electrode O1 and O2. A random sampl...

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Main Authors: Ivan C. Zibrandtsen, Troels W. Kjaer
Format: Article
Language:English
Published: Elsevier 2021-01-01
Series:Clinical Neurophysiology Practice
Subjects:
EEG
App
Online Access:http://www.sciencedirect.com/science/article/pii/S2467981X20300317
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spelling doaj-bf262d94490f4d53aa512153d13c39132020-12-25T05:11:04ZengElsevierClinical Neurophysiology Practice2467-981X2021-01-01619Fully automatic peak frequency estimation of the posterior dominant rhythm in a large retrospective hospital EEG cohortIvan C. Zibrandtsen0Troels W. Kjaer1Neurological Department, Zealand University Hospital, Roskilde, Denmark; Corresponding author at: Department of Neurology, Zealand University Hospital, Sygehusvej 10, 4000 Roskilde, Denmark.Neurological Department, Zealand University Hospital, Roskilde, Denmark; Department of Clinical Medicine, University of Copenhagen, Copenhagen, DenmarkObjective: To develop and test a fully automated method for estimation of the peak frequency of the posterior dominant rhythm (PDR) in a large retrospective EEG cohort. Methods: Thresholding was used to select suitable EEG data segments for spectral estimation for electrode O1 and O2. A random sample of 100 peak frequency estimates were blindly rated by two independent raters to validate the results of the automatic PDR peak frequency estimates. We investigated the relationship with age, sex and binary EEG classification. Results: There were 9197 eligible EEGs which resulted in a total of 6104 PDR peak frequency estimates. The relationship between automatic estimates and age was found to be consistent with the literature. The correlation between human ratings and automatic scoring was very high, rho = 0.94–0.95. There was a sex difference of d = 0.33 emerging at puberty with females having a faster PDR peak frequency than males. Conclusions: Fully automatic PDR peak frequency estimation not dependent on annotated EEG produced results that are very close to human ratings. Significance: PDR peak frequency can be automatically estimated. A compiled version of the algorithm is included as an app for independent use.http://www.sciencedirect.com/science/article/pii/S2467981X20300317Posterior dominant rhythmEEGSpectral estimationAutomationApp
collection DOAJ
language English
format Article
sources DOAJ
author Ivan C. Zibrandtsen
Troels W. Kjaer
spellingShingle Ivan C. Zibrandtsen
Troels W. Kjaer
Fully automatic peak frequency estimation of the posterior dominant rhythm in a large retrospective hospital EEG cohort
Clinical Neurophysiology Practice
Posterior dominant rhythm
EEG
Spectral estimation
Automation
App
author_facet Ivan C. Zibrandtsen
Troels W. Kjaer
author_sort Ivan C. Zibrandtsen
title Fully automatic peak frequency estimation of the posterior dominant rhythm in a large retrospective hospital EEG cohort
title_short Fully automatic peak frequency estimation of the posterior dominant rhythm in a large retrospective hospital EEG cohort
title_full Fully automatic peak frequency estimation of the posterior dominant rhythm in a large retrospective hospital EEG cohort
title_fullStr Fully automatic peak frequency estimation of the posterior dominant rhythm in a large retrospective hospital EEG cohort
title_full_unstemmed Fully automatic peak frequency estimation of the posterior dominant rhythm in a large retrospective hospital EEG cohort
title_sort fully automatic peak frequency estimation of the posterior dominant rhythm in a large retrospective hospital eeg cohort
publisher Elsevier
series Clinical Neurophysiology Practice
issn 2467-981X
publishDate 2021-01-01
description Objective: To develop and test a fully automated method for estimation of the peak frequency of the posterior dominant rhythm (PDR) in a large retrospective EEG cohort. Methods: Thresholding was used to select suitable EEG data segments for spectral estimation for electrode O1 and O2. A random sample of 100 peak frequency estimates were blindly rated by two independent raters to validate the results of the automatic PDR peak frequency estimates. We investigated the relationship with age, sex and binary EEG classification. Results: There were 9197 eligible EEGs which resulted in a total of 6104 PDR peak frequency estimates. The relationship between automatic estimates and age was found to be consistent with the literature. The correlation between human ratings and automatic scoring was very high, rho = 0.94–0.95. There was a sex difference of d = 0.33 emerging at puberty with females having a faster PDR peak frequency than males. Conclusions: Fully automatic PDR peak frequency estimation not dependent on annotated EEG produced results that are very close to human ratings. Significance: PDR peak frequency can be automatically estimated. A compiled version of the algorithm is included as an app for independent use.
topic Posterior dominant rhythm
EEG
Spectral estimation
Automation
App
url http://www.sciencedirect.com/science/article/pii/S2467981X20300317
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