Eeg Microstates and Balance Parameters for Stroke Discrimination: A Machine Learning Approach.

Journal: Brain topography
Published Date:

Abstract

Electroencephalography microstates (EEG-MS) show promise to be a neurobiological biomarker in stroke. Thus, the aim of the study was to identify biomarkers to discriminate stroke patients from healthy individuals based on EEG-MS and clinical features using a machine learning approach. Fifty-four participants (27 stroke patients and 27 healthy age and sex-matched controls) were recruited. We recorded EEG-MS using 32 channels during eyes-closed and eyes-open conditions and analyzed the four classical EEG-MS maps (A, B, C, D). Clinical information and motor aspects were evaluated. A machine learning method using k-means algorithms to discriminate stroke patients from healthy subjects showed that the most influential parameters in clustering were balance scores and microstate parameters (duration and coverage of microstate A, duration, coverage and occurrence of microstates C and global variance explained). To evaluate the quality of clustering, the Silhouette score was applied and the score was close to 0.20, indicating that the clusters overlap. These results are encouraging and support the usefulness of these methods for classifying stroke patients in order to contribute to the development of therapeutic strategies, improve the clinical management of these patients, and consequently reduce the associated costs.

Authors

  • Eloise de Oliveira Lima
    Aging and Neuroscience Laboratory (LABEN), Federal University of Paraíba, João Pessoa, PB, Brazil.
  • José Maurício Ramos de Souza Neto
    Center for Alternative and Renewable Energies (CEAR), Federal University of Paraíba, João Pessoa, PB, Brazil.
  • Felipe Leonardo Seixas Castro
    Center for Alternative and Renewable Energies (CEAR), Federal University of Paraíba, João Pessoa, PB, Brazil.
  • Letícia Maria Silva
    Aging and Neuroscience Laboratory (LABEN), Federal University of Paraíba, João Pessoa, PB, Brazil.
  • Rebeca Andrade Laurentino
    Aging and Neuroscience Laboratory (LABEN), Federal University of Paraíba, João Pessoa, PB, Brazil.
  • Vitória Ferreira Calado
    Aging and Neuroscience Laboratory (LABEN), Federal University of Paraíba, João Pessoa, PB, Brazil.
  • Isolda Maria Barros Torquato
    Department of Physiotherapy, Federal University of Paraíba, João Pessoa, PB, Brazil.
  • Karen Lúcia de Araújo Freitas Moreira
    Department of Physiotherapy, Federal University of Paraíba, João Pessoa, PB, Brazil.
  • Suellen Marinho Andrade
    Aging and Neuroscience Laboratory (LABEN), Federal University of Paraíba, João Pessoa, PB, Brazil. suellenandrade@gmail.com.