Discrimination and characterization of Parkinsonian rest tremors by analyzing long-term correlations and multifractal signatures
Lorenzo Livi, Alireza Sadeghian, Hamid Sadeghian

TL;DR
This study analyzes Parkinsonian rest tremor signals using long-term correlations and multifractal signatures, revealing medication effects and achieving high classification accuracy with simple feature representations.
Contribution
It introduces a novel approach combining multifractal and correlation features for tremor analysis, improving classification of medication effects and tremor severity.
Findings
Medication significantly affects tremor features.
Deep brain stimulation does not significantly alter tremor signals.
A two-dimensional feature set effectively classifies medication status.
Abstract
In this paper, we analyze 48 signals of rest tremor velocity related to 12 distinct subjects affected by Parkinson's disease. The subjects belong to two different groups, formed by four and eight subjects with, respectively, high- and low-amplitude rest tremors. Each subject is tested in four settings, given by combining the use of deep brain stimulation and L-DOPA medication. We develop two main feature-based representations of such signals, which are obtained by considering (i) the long-term correlations and multifractal properties, and (ii) the power spectra. The feature-based representations are initially utilized for the purpose of characterizing the subjects under different settings. In agreement with previous studies, we show that deep brain stimulation does not significantly characterize neither of the two groups, regardless of the adopted representation. On the other hand, the…
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