Scientific Reports (Oct 2024)

Differentiating neurodegenerative diseases based on EEG complexity

  • Giovanni Mostile,
  • Roberta Terranova,
  • Giulia Carlentini,
  • Federico Contrafatto,
  • Claudio Terravecchia,
  • Giulia Donzuso,
  • Giorgia Sciacca,
  • Calogero Edoardo Cicero,
  • Antonina Luca,
  • Alessandra Nicoletti,
  • Mario Zappia

DOI
https://doi.org/10.1038/s41598-024-74035-x
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 10

Abstract

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Abstract Neurodegenerative diseases are common causes of impaired mobility and cognition in the elderly. Among them, tauopathies and α-synucleinopathies were considered. The neurodegenerative processes and relative differential diagnosis were addressed through a qEEG non-linear analytic method. Study aims were to test accuracy of the power law exponent β applied to EEG in differentiating neurodegenerative diseases and to explore differences in neuronal connectivity among different neurodegenerative processes based on β. N = 230 patients with a diagnosis of tauopathy or α-synucleinopathy and at least one artifact-free EEG recording were selected. Periodogram was applied to EEG signal epochs from continuous recordings. Power law exponent β was determined by the slope of the signal power spectrum versus frequency in logarithmic scale. A data-driven clustering based on β values was performed to identify independent subgroups. Data-driven clustering based on β differentiated tauopathies (overall lower β values) from α-synucleinopathies (higher β values) with high sensitivity and specificity. Tauopathies also presented lower values in the correlation coefficients matrix among frontal sites of recording. In conclusion, significant differences in β values were found between tauopathies and α-synucleinopathies. Hence, β is proposed as a possible biomarker of differential diagnosis and neuronal connectivity.

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