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A machine learning approach involving functional connectivity features to classify rest-eeg psychogenic non-epileptic seizures from healthy controls

Articolo
Data di Pubblicazione:
2022
Citazione:
A machine learning approach involving functional connectivity features to classify rest-eeg psychogenic non-epileptic seizures from healthy controls / Varone, G.; Boulila, W.; Lo Giudice, M.; Benjdira, B.; Mammone, N.; Ieracitano, C.; Dashtipour, K.; Neri, S.; Gasparini, S.; Morabito, F. C.; Hussain, A.; Aguglia, U.. - In: SENSORS. - ISSN 1424-8220. - 22:1(2022), p. 129. [10.3390/s22010129]
Abstract:
Until now, clinicians are not able to evaluate the Psychogenic Non-Epileptic Seizures (PNES) from the rest-electroencephalography (EEG) readout. No EEG marker can help differentiate PNES cases from healthy subjects. In this paper, we have investigated the power spectrum density (PSD), in resting-state EEGs, to evaluate the abnormalities in PNES affected brains. Additionally, we have used functional connectivity tools, such as phase lag index (PLI), and graph-derived metrics to better observe the integration of distributed information of regular and synchronized multi-scale communication within and across inter-regional brain areas. We proved the utility of our method after enrolling a cohort study of 20 age-and gender-matched PNES and 19 healthy control (HC) subjects. In this work, three classification models, namely support vector machine (SVM), linear discriminant analysis (LDA), and Multilayer perceptron (MLP), have been employed to model the relationship between the functional connectivity features (rest-HC versus rest-PNES). The best performance for the discrimination of participants was obtained using the MLP classifier, reporting a precision of 85.73%, a recall of 86.57%, an F1-score of 78.98%, and, finally, an accuracy of 91.02%. In conclusion, our results hypothesized two main aspects. The first is an intrinsic organization of functional brain networks that reflects a dysfunctional level of integration across brain regions, which can provide new insights into the pathophysiological mechanisms of PNES. The second is that functional connectivity features and MLP could be a promising method to classify rest-EEG data of PNES form healthy controls subjects.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
EEG-based machine learning techniques for PNES; Phase lag index; Power spectral density; Psychogenic non-epileptic seizures; Rest-machine learning-based diagnosis; Cohort Studies; Humans; Machine Learning; Rest; Electroencephalography; Seizures
Elenco autori:
Varone, G.; Boulila, W.; Lo Giudice, M.; Benjdira, B.; Mammone, N.; Ieracitano, C.; Dashtipour, K.; Neri, S.; Gasparini, S.; Morabito, F. C.; Hussain, A.; Aguglia, U.
Autori di Ateneo:
IERACITANO Cosimo
MORABITO Francesco Carlo
Mammone Nadia
Link alla scheda completa:
https://iris.unirc.it/handle/20.500.12318/129431
Link al Full Text:
https://iris.unirc.it//retrieve/handle/20.500.12318/129431/274941/A%20Machine%20Learning%20Approach%20Involving%20Functional%20Connectivity%20Features%20to%20Classify%20Rest-EEG%20Psychogenic%20Non-Epileptic%20Seizures%20from%20Healthy%20Controls_PUBLISHED.pdf
Pubblicato in:
SENSORS
Journal
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