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Patient specific Parkinson's disease detection for adaptive deep brain stimulation

Patient specific Parkinson's disease detection for adaptive deep brain stimulation
Patient specific Parkinson's disease detection for adaptive deep brain stimulation

Continuous deep brain stimulation for Parkinson's disease (PD) patients results in side effects and shortening of the pacemaker battery life. This can be remedied using adaptive stimulation. To achieve adaptive DBS, patient customized PD detection is required due to the inconsistency associated with biomarkers across patients and time. This paper proposes the use of patient specific feature extraction together with adaptive support vector machine (SVM) classifiers to create a patient customized detector for PD. The patient specific feature extraction is obtained using the extrema of the ratio between the PD and non-PD spectra bands of each patient as features, while the adaptive SVM classifier adjusts its decision boundary until a suitable model is obtained. This yields individualised features and classifier pairs for each patient. Datasets containing local field potentials of PD patients were used to validate the method. Six of the nine patient datasets tested achieved a classification accuracy greater than 98%. The adaptive detector is suitable for realization on chip.

1557-170X
1528-1531
IEEE
Mohammed, Ameer
b9e468df-0f22-45da-a24f-692f5b7ac1ef
Zamani, Majid
431788cc-0702-4fa9-9709-f5777a2d0d25
Bayford, Richard
114e3270-c5ad-4095-ab62-20e9e26c7790
Demosthenous, Andreas
bed19531-d770-4f48-8464-59d225ddea8d
Mohammed, Ameer
b9e468df-0f22-45da-a24f-692f5b7ac1ef
Zamani, Majid
431788cc-0702-4fa9-9709-f5777a2d0d25
Bayford, Richard
114e3270-c5ad-4095-ab62-20e9e26c7790
Demosthenous, Andreas
bed19531-d770-4f48-8464-59d225ddea8d

Mohammed, Ameer, Zamani, Majid, Bayford, Richard and Demosthenous, Andreas (2015) Patient specific Parkinson's disease detection for adaptive deep brain stimulation. In 2015 37th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, EMBC 2015. vol. 2015-November, IEEE. pp. 1528-1531 . (doi:10.1109/EMBC.2015.7318662).

Record type: Conference or Workshop Item (Paper)

Abstract

Continuous deep brain stimulation for Parkinson's disease (PD) patients results in side effects and shortening of the pacemaker battery life. This can be remedied using adaptive stimulation. To achieve adaptive DBS, patient customized PD detection is required due to the inconsistency associated with biomarkers across patients and time. This paper proposes the use of patient specific feature extraction together with adaptive support vector machine (SVM) classifiers to create a patient customized detector for PD. The patient specific feature extraction is obtained using the extrema of the ratio between the PD and non-PD spectra bands of each patient as features, while the adaptive SVM classifier adjusts its decision boundary until a suitable model is obtained. This yields individualised features and classifier pairs for each patient. Datasets containing local field potentials of PD patients were used to validate the method. Six of the nine patient datasets tested achieved a classification accuracy greater than 98%. The adaptive detector is suitable for realization on chip.

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More information

Published date: 5 November 2015
Additional Information: Publisher Copyright: © 2015 IEEE.
Venue - Dates: 37th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, EMBC 2015, , Milan, Italy, 2015-08-25 - 2015-08-29

Identifiers

Local EPrints ID: 489167
URI: http://eprints.soton.ac.uk/id/eprint/489167
ISSN: 1557-170X
PURE UUID: 60403fe8-26cf-48ee-9f9e-2c15a341fe52
ORCID for Majid Zamani: ORCID iD orcid.org/0009-0007-0844-473X

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Date deposited: 16 Apr 2024 16:36
Last modified: 18 Apr 2024 02:09

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Contributors

Author: Ameer Mohammed
Author: Majid Zamani ORCID iD
Author: Richard Bayford
Author: Andreas Demosthenous

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