Motor Subtypes of Parkinson's Disease can be Identified by Frequency Component of Postural Stability
Department
neurology
Document Type
Article
Abstract
Parkinson's disease (PD) can be divided into two subtypes based on clinical features€”namely tremor dominant (TD) and postural instability and gait difficulty (PIGD). This categorization is important at the early stage of PD, since identifying the subtypes can help to predict the clinical progression of the disease. Accordingly, correctly diagnosing subtypes is critical in initiating appropriate early interventions and tracking the progression of the disease. However, as the disease progresses, it becomes increasingly difficult to further distinguish those attributes that are relevant to the subtypes. In this study, we investigated whether a method using the standing center of pressure (COP) time series data can separate two subtypes of PD by looking at the frequency component of COP (i.e., COP position and speed). Thirty-six participants diagnosed with PD were evaluated, with their bare feet on the force platform, and were instructed to stand upright with their arms by their sides for 20 s (with their eyes open and closed), which is consistent with the traditional COP measures. Fast Fourier transform (FFT) and wavelet transform (WT) were performed to distinguish between the motor subtypes using the COP measures. The TD group exhibited larger amplitudes at the frequency range of 3-7 Hz when compared to the PIGD group. Both the FFT and WT methods were able to differentiate the subtypes. COP time series information can be used to differentiate between the two motor subtypes of PD, using the frequency component of postural stability.
Medical Subject Headings
neurology
Publication Date
2018
Publication Title
Sensors (Switzerland)
ISSN
1424-8220
Volume
18
Issue
4
Digital Object Identifier (DOI)
10.3390/s18041102
Recommended Citation
Rezvanian, Saba; Lockhart, Thurmon; Frames, Christopher; Soangra, Rahul; and Lieberman, Abraham N., "Motor Subtypes of Parkinson's Disease can be Identified by Frequency Component of Postural Stability" (2018). Neurology. 114.
https://scholar.barrowneuro.org/neurology/114