Integrating EEG and Machine Learning to Analyze Brain Changes during the Rehabilitation of Broca's Aphasia.

Broca’s aphasia EEG functional connectivity neural network classification

Journal

Sensors (Basel, Switzerland)
ISSN: 1424-8220
Titre abrégé: Sensors (Basel)
Pays: Switzerland
ID NLM: 101204366

Informations de publication

Date de publication:
05 Jan 2024
Historique:
received: 13 11 2023
revised: 27 12 2023
accepted: 03 01 2024
medline: 23 1 2024
pubmed: 23 1 2024
entrez: 23 1 2024
Statut: epublish

Résumé

The fusion of electroencephalography (EEG) with machine learning is transforming rehabilitation. Our study introduces a neural network model proficient in distinguishing pre- and post-rehabilitation states in patients with Broca's aphasia, based on brain connectivity metrics derived from EEG recordings during verbal and spatial working memory tasks. The Granger causality (GC), phase-locking value (PLV), weighted phase-lag index (wPLI), mutual information (MI), and complex Pearson correlation coefficient (CPCC) across the delta, theta, and low- and high-gamma bands were used (excluding GC, which spanned the entire frequency spectrum). Across eight participants, employing leave-one-out validation for each, we evaluated the intersubject prediction accuracy across all connectivity methods and frequency bands. GC, MI theta, and PLV low-gamma emerged as the top performers, achieving 89.4%, 85.8%, and 82.7% accuracy in classifying verbal working memory task data. Intriguingly, measures designed to eliminate volume conduction exhibited the poorest performance in predicting rehabilitation-induced brain changes. This observation, coupled with variations in model performance across frequency bands, implies that different connectivity measures capture distinct brain processes involved in rehabilitation. The results of this paper contribute to current knowledge by presenting a clear strategy of utilizing limited data to achieve valid and meaningful results of machine learning on post-stroke rehabilitation EEG data, and they show that the differences in classification accuracy likely reflect distinct brain processes underlying rehabilitation after stroke.

Identifiants

pubmed: 38257423
pii: s24020329
doi: 10.3390/s24020329
pii:
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Subventions

Organisme : Slovenian Research Agency
ID : P3-0293
Organisme : Slovenian Research Agency
ID : P5-0110
Organisme : Slovenian Research Agency
ID : P3-0338

Auteurs

Vanesa Močilnik (V)

Faculty of Medicine, University of Ljubljana, 1000 Ljubljana, Slovenia.

Veronika Rutar Gorišek (V)

University Medical Centre Ljubljana, 1000 Ljubljana, Slovenia.

Jakob Sajovic (J)

Faculty of Medicine, University of Ljubljana, 1000 Ljubljana, Slovenia.
University Medical Centre Ljubljana, 1000 Ljubljana, Slovenia.

Janja Pretnar Oblak (J)

Faculty of Medicine, University of Ljubljana, 1000 Ljubljana, Slovenia.
University Medical Centre Ljubljana, 1000 Ljubljana, Slovenia.

Gorazd Drevenšek (G)

Faculty of Medicine, University of Ljubljana, 1000 Ljubljana, Slovenia.
Faculty of Mathematics, Natural Sciences and Information Technologies, University of Primorska, 6000 Koper, Slovenia.

Peter Rogelj (P)

Faculty of Mathematics, Natural Sciences and Information Technologies, University of Primorska, 6000 Koper, Slovenia.

Classifications MeSH