Literature DB >> 26760968

Discrimination and Characterization of Parkinsonian Rest Tremors by Analyzing Long-Term Correlations and Multifractal Signatures.

Lorenzo Livi, Alireza Sadeghian, Hamid Sadeghian.   

Abstract

GOAL: We analyze 48 signals of rest tremor velocity related to 12 distinct subjects affected by the Parkinson's disease. The subjects belong to two different groups, high- and low-amplitude rest tremors, with four and eight subjects, respectively. Each subject has been tested in four settings given by combining the use of deep brain stimulation and L-DOPA medication.
METHODS: We develop two main feature-based representations of the signals, which are obtained by considering 1) the long-term correlations and multifractal properties, and 2) the power spectra.
RESULTS: Our results show that, when medication is used, a qualitative change is observed in the related signals from anticorrelated to long term positively correlated. In addition, the medication effect yields statistically significant differences in both high- and low-amplitude tremor groups. We successively consider three different classification problems, involving the recognition of 1) the use of medication, 2) the use of deep brain stimulation, and 3) the membership to the high- and low-amplitude tremor groups. Classification results show that the best results are obtained with a parsimonious, two-dimensional (2-D) representation encoding the long-term correlations and multifractal properties of the signals.
CONCLUSIONS: Long-term correlations and multifractal signatures of time series provided an effective tool to analyze Parkinsonian rest tremor signals. SIGNIFICANCE: The developed 2-D representation is a parsimonious and effective representation for rest tremor signals that could be adopted in clinical settings, even by considering resource-constrained scenarios.

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Year:  2016        PMID: 26760968     DOI: 10.1109/TBME.2016.2515760

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  1 in total

1.  Data-Driven Prediction of Freezing of Gait Events From Stepping Data.

Authors:  Midhun Parakkal Unni; Prathyush P Menon; Lorenzo Livi; Mark R Wilson; William R Young; Helen M Bronte-Stewart; Krasimira Tsaneva-Atanasova
Journal:  Front Med Technol       Date:  2020-11-20
  1 in total

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