Spatio-Temporal Fractal Dimension Analysis from Resting State EEG Signals in Parkinson’s Disease
Metadata
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Ruiz de Miras, JuanEditorial
MDPI
Materia
Fractal dimension Box counting EEG Parkinson’s disease Neurodegeneration
Date
2023-07-02Referencia bibliográfica
Ruiz de Miras, J.; Derchi, C.-C.; Atzori, T.; Mazza, A.; Arcuri, P.; Salvatore, A.; Navarro, J.; Saibene, F.L.; Meloni, M.; Comanducci, A. Spatio-Temporal Fractal Dimension Analysis from Resting State EEG Signals in Parkinson’s Disease. Entropy 2023, 25, 1017. [https://doi.org/10.3390/e25071017]
Sponsorship
Project PID2019-105145RB-I00; Spanish Government (MCIN/AEI/10.13039/501100011033); Italian Ministry of Health—(Ricerca Corrente 2022–2024); National PhD in Artificial Intelligence, XXXVII cycle; Health and life sciences, organized by Università Campus Bio-Medico di RomaAbstract
Complexity analysis of electroencephalogram (EEG) signals has emerged as a valuable tool
for characterizing Parkinson’s disease (PD). Fractal dimension (FD) is a widely employed method
for measuring the complexity of shapes with many applications in neurodegenerative disorders.
Nevertheless, very little is known on the fractal characteristics of EEG in PD measured by FD. In
this study we performed a spatio-temporal analysis of EEG in PD using FD in four dimensions
(4DFD).We analyzed 42 resting-state EEG recordings comprising two groups: 27 PD patients without
dementia and 15 healthy control subjects (HC). From the original resting-state EEG we derived the
cortical activations defined by a source reconstruction at each time sample, generating point clouds in
three dimensions. Then, a sliding window of one second (the fourth dimension) was used to compute
the value of 4DFD by means of the box-counting algorithm. Our results showed a significantly higher
value of 4DFD in the PD group (p < 0.001). Moreover, as a diagnostic classifier of PD, 4DFD obtained
an area under curve value of 0.97 for a receiver operating characteristic curve analysis. These results
suggest that 4DFD could be a promising method for characterizing the specific changes in the brain
dynamics associated with PD