Cargando…

Performance of ECG‐based seizure detection algorithms strongly depends on training and test conditions

OBJECTIVE: To identify non‐EEG‐based signals and algorithms for detection of motor and non‐motor seizures in people lying in bed during video‐EEG (VEEG) monitoring and to test whether these algorithms work in freely moving people during mobile EEG recordings. METHODS: Data of three groups of adult p...

Descripción completa

Detalles Bibliográficos
Autores principales: Jahanbekam, Amirhossein, Baumann, Jan, Nass, Robert D., Bauckhage, Christian, Hill, Holger, Elger, Christian E., Surges, Rainer
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8408591/
https://www.ncbi.nlm.nih.gov/pubmed/34250754
http://dx.doi.org/10.1002/epi4.12520
_version_ 1783746855530659840
author Jahanbekam, Amirhossein
Baumann, Jan
Nass, Robert D.
Bauckhage, Christian
Hill, Holger
Elger, Christian E.
Surges, Rainer
author_facet Jahanbekam, Amirhossein
Baumann, Jan
Nass, Robert D.
Bauckhage, Christian
Hill, Holger
Elger, Christian E.
Surges, Rainer
author_sort Jahanbekam, Amirhossein
collection PubMed
description OBJECTIVE: To identify non‐EEG‐based signals and algorithms for detection of motor and non‐motor seizures in people lying in bed during video‐EEG (VEEG) monitoring and to test whether these algorithms work in freely moving people during mobile EEG recordings. METHODS: Data of three groups of adult people with epilepsy (PwE) were analyzed. Group 1 underwent VEEG with additional devices (accelerometry, ECG, electrodermal activity); group 2 underwent VEEG; and group 3 underwent mobile EEG recordings both including one‐lead ECG. All seizure types were analyzed. Feature extraction and machine‐learning techniques were applied to develop seizure detection algorithms. Performance was expressed as sensitivity, precision, F (1) score, and false positives per 24 hours. RESULTS: The algorithms were developed in group 1 (35 PwE, 33 seizures) and achieved best results (F (1) score 56%, sensitivity 67%, precision 45%, false positives 0.7/24 hours) when ECG features alone were used, with no improvement by including accelerometry and electrodermal activity. In group 2 (97 PwE, 255 seizures), this ECG‐based algorithm largely achieved the same performance (F (1) score 51%, sensitivity 39%, precision 73%, false positives 0.4/24 hours). In group 3 (30 PwE, 51 seizures), the same ECG‐based algorithm failed to meet up with the performance in groups 1 and 2 (F (1) score 27%, sensitivity 31%, precision 23%, false positives 1.2/24 hours). ECG‐based algorithms were also separately trained on data of groups 2 and 3 and tested on the data of the other groups, yielding maximal F (1) scores between 8% and 26%. SIGNIFICANCE: Our results suggest that algorithms based on ECG features alone can provide clinically meaningful performance for automatic detection of all seizure types. Our study also underscores that the circumstances under which such algorithms were developed, and the selection of the training and test data sets need to be considered and limit the application of such systems to unseen patient groups behaving in different conditions.
format Online
Article
Text
id pubmed-8408591
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher John Wiley and Sons Inc.
record_format MEDLINE/PubMed
spelling pubmed-84085912021-09-03 Performance of ECG‐based seizure detection algorithms strongly depends on training and test conditions Jahanbekam, Amirhossein Baumann, Jan Nass, Robert D. Bauckhage, Christian Hill, Holger Elger, Christian E. Surges, Rainer Epilepsia Open Full‐length Original Research OBJECTIVE: To identify non‐EEG‐based signals and algorithms for detection of motor and non‐motor seizures in people lying in bed during video‐EEG (VEEG) monitoring and to test whether these algorithms work in freely moving people during mobile EEG recordings. METHODS: Data of three groups of adult people with epilepsy (PwE) were analyzed. Group 1 underwent VEEG with additional devices (accelerometry, ECG, electrodermal activity); group 2 underwent VEEG; and group 3 underwent mobile EEG recordings both including one‐lead ECG. All seizure types were analyzed. Feature extraction and machine‐learning techniques were applied to develop seizure detection algorithms. Performance was expressed as sensitivity, precision, F (1) score, and false positives per 24 hours. RESULTS: The algorithms were developed in group 1 (35 PwE, 33 seizures) and achieved best results (F (1) score 56%, sensitivity 67%, precision 45%, false positives 0.7/24 hours) when ECG features alone were used, with no improvement by including accelerometry and electrodermal activity. In group 2 (97 PwE, 255 seizures), this ECG‐based algorithm largely achieved the same performance (F (1) score 51%, sensitivity 39%, precision 73%, false positives 0.4/24 hours). In group 3 (30 PwE, 51 seizures), the same ECG‐based algorithm failed to meet up with the performance in groups 1 and 2 (F (1) score 27%, sensitivity 31%, precision 23%, false positives 1.2/24 hours). ECG‐based algorithms were also separately trained on data of groups 2 and 3 and tested on the data of the other groups, yielding maximal F (1) scores between 8% and 26%. SIGNIFICANCE: Our results suggest that algorithms based on ECG features alone can provide clinically meaningful performance for automatic detection of all seizure types. Our study also underscores that the circumstances under which such algorithms were developed, and the selection of the training and test data sets need to be considered and limit the application of such systems to unseen patient groups behaving in different conditions. John Wiley and Sons Inc. 2021-07-20 /pmc/articles/PMC8408591/ /pubmed/34250754 http://dx.doi.org/10.1002/epi4.12520 Text en © 2021 The Authors. Epilepsia Open published by Wiley Periodicals LLC on behalf of International League Against Epilepsy. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/) License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Full‐length Original Research
Jahanbekam, Amirhossein
Baumann, Jan
Nass, Robert D.
Bauckhage, Christian
Hill, Holger
Elger, Christian E.
Surges, Rainer
Performance of ECG‐based seizure detection algorithms strongly depends on training and test conditions
title Performance of ECG‐based seizure detection algorithms strongly depends on training and test conditions
title_full Performance of ECG‐based seizure detection algorithms strongly depends on training and test conditions
title_fullStr Performance of ECG‐based seizure detection algorithms strongly depends on training and test conditions
title_full_unstemmed Performance of ECG‐based seizure detection algorithms strongly depends on training and test conditions
title_short Performance of ECG‐based seizure detection algorithms strongly depends on training and test conditions
title_sort performance of ecg‐based seizure detection algorithms strongly depends on training and test conditions
topic Full‐length Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8408591/
https://www.ncbi.nlm.nih.gov/pubmed/34250754
http://dx.doi.org/10.1002/epi4.12520
work_keys_str_mv AT jahanbekamamirhossein performanceofecgbasedseizuredetectionalgorithmsstronglydependsontrainingandtestconditions
AT baumannjan performanceofecgbasedseizuredetectionalgorithmsstronglydependsontrainingandtestconditions
AT nassrobertd performanceofecgbasedseizuredetectionalgorithmsstronglydependsontrainingandtestconditions
AT bauckhagechristian performanceofecgbasedseizuredetectionalgorithmsstronglydependsontrainingandtestconditions
AT hillholger performanceofecgbasedseizuredetectionalgorithmsstronglydependsontrainingandtestconditions
AT elgerchristiane performanceofecgbasedseizuredetectionalgorithmsstronglydependsontrainingandtestconditions
AT surgesrainer performanceofecgbasedseizuredetectionalgorithmsstronglydependsontrainingandtestconditions