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Classification of Parkinson's disease severity using gait stance signals in a spatiotemporal deep learning classifier.

Authors :
Muñoz-Mata BG
Dorantes-Méndez G
Piña-Ramírez O
Source :
Medical & biological engineering & computing [Med Biol Eng Comput] 2024 Nov; Vol. 62 (11), pp. 3493-3506. Date of Electronic Publication: 2024 Jun 17.
Publication Year :
2024

Abstract

Parkinson's disease (PD) is a degenerative nervous system disorder involving motor disturbances. Motor alterations affect the gait according to the progression of PD and can be used by experts in movement disorders to rate the severity of the disease. However, this rating depends on the expertise of the clinical specialist. Therefore, the diagnosis may be inaccurate, particularly in the early stages of PD where abnormal gait patterns can result from normal aging or other medical conditions. Consequently, several classification systems have been developed to enhance PD diagnosis. In this paper, a PD gait severity classification algorithm was developed using vertical ground reaction force (VGRF) signals. The VGRF records used are from a public database that includes 93 PD patients and 72 healthy controls adults. The work presented here focuses on modeling each foot's gait stance phase signals using a modified convolutional long deep neural network (CLDNN) architecture. Subsequently, the results of each model are combined to predict PD severity. The classifier performance was evaluated using ten-fold cross-validation. The best-weighted accuracies obtained were 99.296(0.128)% and 99.343(0.182)%, with the Hoehn-Yahr and UPDRS scales, respectively, outperforming previous results presented in the literature. The classifier proposed here can effectively differentiate gait patterns of different PD severity levels based on gait signals of the stance phase.<br /> (© 2024. International Federation for Medical and Biological Engineering.)

Details

Language :
English
ISSN :
1741-0444
Volume :
62
Issue :
11
Database :
MEDLINE
Journal :
Medical & biological engineering & computing
Publication Type :
Academic Journal
Accession number :
38884852
Full Text :
https://doi.org/10.1007/s11517-024-03148-2