REM behaviour disorder detection associated with neurodegenerative diseases

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Standard

REM behaviour disorder detection associated with neurodegenerative diseases. / Kempfner, Jacob; Sorensen, Gertrud; Zoetmulder, Marielle; Jennum, Poul; Sorensen, Helge B D.

I: I E E E Engineering in Medicine and Biology Society. Conference Proceedings, Bind 2010, 01.01.2010, s. 5093-6.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Kempfner, J, Sorensen, G, Zoetmulder, M, Jennum, P & Sorensen, HBD 2010, 'REM behaviour disorder detection associated with neurodegenerative diseases', I E E E Engineering in Medicine and Biology Society. Conference Proceedings, bind 2010, s. 5093-6. https://doi.org/10.1109/IEMBS.2010.5626212

APA

Kempfner, J., Sorensen, G., Zoetmulder, M., Jennum, P., & Sorensen, H. B. D. (2010). REM behaviour disorder detection associated with neurodegenerative diseases. I E E E Engineering in Medicine and Biology Society. Conference Proceedings, 2010, 5093-6. https://doi.org/10.1109/IEMBS.2010.5626212

Vancouver

Kempfner J, Sorensen G, Zoetmulder M, Jennum P, Sorensen HBD. REM behaviour disorder detection associated with neurodegenerative diseases. I E E E Engineering in Medicine and Biology Society. Conference Proceedings. 2010 jan. 1;2010:5093-6. https://doi.org/10.1109/IEMBS.2010.5626212

Author

Kempfner, Jacob ; Sorensen, Gertrud ; Zoetmulder, Marielle ; Jennum, Poul ; Sorensen, Helge B D. / REM behaviour disorder detection associated with neurodegenerative diseases. I: I E E E Engineering in Medicine and Biology Society. Conference Proceedings. 2010 ; Bind 2010. s. 5093-6.

Bibtex

@article{3dff63cd84c342f889d800e383005412,
title = "REM behaviour disorder detection associated with neurodegenerative diseases",
abstract = "Abnormal skeleton muscle activity during REM sleep is characterized as REM Behaviour Disorder (RBD), and may be an early marker for different neurodegenerative diseases. Early detection of RBD is therefore highly important, and in this ongoing study a semi-automatic method for RBD detection is proposed by analyzing the motor activity during sleep. Method: A total number of twelve patients have been involved in this study, six normal controls and six patients diagnosed with Parkinsons Disease (PD) with RBD. All subjects underwent at least one ambulant polysomnographic (PSG) recording. The sleep recordings were scored, according to the new sleep-scoring standard from the American Academy of Sleep Medicine, by two independent sleep specialists. A follow-up analysis of the scoring consensus between the two specialists has been conducted. Based on the agreement of the two manual scorings, a computerized algorithm has been attempted implemented. By analysing the REM and non-REM EMG activity, using advanced signal processing tools combined with a statistical classifier, it is possible to discriminate normal and abnormal EMG activity. Due to the small number of patients, the overall performance of the algorithm was calculated using the leave-one-out approach and benchmarked against a previously published computerized/visual method. Results: Based on the available data and using optimal settings, it was possible to correctly classify PD subjects with RBD with 100% sensitivity, 100% specificity, which is an improvement compared to previous published studies. Conclusion: The overall result indicates the usefulness of a computerized scoring algorithm and may be a feasible way of reducing scoring time. Further enhancement on additional data, i.e. subjects with idiopathic RBD (iRBD) and PD without RBD, is needed to validate its robustness and the overall result.",
author = "Jacob Kempfner and Gertrud Sorensen and Marielle Zoetmulder and Poul Jennum and Sorensen, {Helge B D}",
year = "2010",
month = jan,
day = "1",
doi = "10.1109/IEMBS.2010.5626212",
language = "English",
volume = "2010",
pages = "5093--6",
journal = "Annual International Conference of the IEEE Engineering in Medicine and Biology - Proceedings",
issn = "0589-1019",
publisher = "IEEE Signal Processing Society",

}

RIS

TY - JOUR

T1 - REM behaviour disorder detection associated with neurodegenerative diseases

AU - Kempfner, Jacob

AU - Sorensen, Gertrud

AU - Zoetmulder, Marielle

AU - Jennum, Poul

AU - Sorensen, Helge B D

PY - 2010/1/1

Y1 - 2010/1/1

N2 - Abnormal skeleton muscle activity during REM sleep is characterized as REM Behaviour Disorder (RBD), and may be an early marker for different neurodegenerative diseases. Early detection of RBD is therefore highly important, and in this ongoing study a semi-automatic method for RBD detection is proposed by analyzing the motor activity during sleep. Method: A total number of twelve patients have been involved in this study, six normal controls and six patients diagnosed with Parkinsons Disease (PD) with RBD. All subjects underwent at least one ambulant polysomnographic (PSG) recording. The sleep recordings were scored, according to the new sleep-scoring standard from the American Academy of Sleep Medicine, by two independent sleep specialists. A follow-up analysis of the scoring consensus between the two specialists has been conducted. Based on the agreement of the two manual scorings, a computerized algorithm has been attempted implemented. By analysing the REM and non-REM EMG activity, using advanced signal processing tools combined with a statistical classifier, it is possible to discriminate normal and abnormal EMG activity. Due to the small number of patients, the overall performance of the algorithm was calculated using the leave-one-out approach and benchmarked against a previously published computerized/visual method. Results: Based on the available data and using optimal settings, it was possible to correctly classify PD subjects with RBD with 100% sensitivity, 100% specificity, which is an improvement compared to previous published studies. Conclusion: The overall result indicates the usefulness of a computerized scoring algorithm and may be a feasible way of reducing scoring time. Further enhancement on additional data, i.e. subjects with idiopathic RBD (iRBD) and PD without RBD, is needed to validate its robustness and the overall result.

AB - Abnormal skeleton muscle activity during REM sleep is characterized as REM Behaviour Disorder (RBD), and may be an early marker for different neurodegenerative diseases. Early detection of RBD is therefore highly important, and in this ongoing study a semi-automatic method for RBD detection is proposed by analyzing the motor activity during sleep. Method: A total number of twelve patients have been involved in this study, six normal controls and six patients diagnosed with Parkinsons Disease (PD) with RBD. All subjects underwent at least one ambulant polysomnographic (PSG) recording. The sleep recordings were scored, according to the new sleep-scoring standard from the American Academy of Sleep Medicine, by two independent sleep specialists. A follow-up analysis of the scoring consensus between the two specialists has been conducted. Based on the agreement of the two manual scorings, a computerized algorithm has been attempted implemented. By analysing the REM and non-REM EMG activity, using advanced signal processing tools combined with a statistical classifier, it is possible to discriminate normal and abnormal EMG activity. Due to the small number of patients, the overall performance of the algorithm was calculated using the leave-one-out approach and benchmarked against a previously published computerized/visual method. Results: Based on the available data and using optimal settings, it was possible to correctly classify PD subjects with RBD with 100% sensitivity, 100% specificity, which is an improvement compared to previous published studies. Conclusion: The overall result indicates the usefulness of a computerized scoring algorithm and may be a feasible way of reducing scoring time. Further enhancement on additional data, i.e. subjects with idiopathic RBD (iRBD) and PD without RBD, is needed to validate its robustness and the overall result.

U2 - 10.1109/IEMBS.2010.5626212

DO - 10.1109/IEMBS.2010.5626212

M3 - Journal article

VL - 2010

SP - 5093

EP - 5096

JO - Annual International Conference of the IEEE Engineering in Medicine and Biology - Proceedings

JF - Annual International Conference of the IEEE Engineering in Medicine and Biology - Proceedings

SN - 0589-1019

ER -

ID: 34190215