4.7 Article

Robust EEG-based cross-site and cross-protocol classification of states of consciousness

期刊

BRAIN
卷 141, 期 -, 页码 3179-3192

出版社

OXFORD UNIV PRESS
DOI: 10.1093/brain/awy251

关键词

electroencephalography; disorders of consciousness; biomarker; machine learning; diagnosis

资金

  1. ERC proof of concept grant
  2. Institut National de la Sante et de la Recherche Medicale (France)
  3. James S. McDonnell Foundation
  4. Institut du Cerveau et de la Moelle Epiniere (France)
  5. Consejo Nacional de Investigaciones Cientificas y Tecnicas (Argentina)
  6. FRM Equipe 2015 grant
  7. STIC-AmSud
  8. Belgian Funds for Scientific Research (FRS-FNRS)
  9. European Commission
  10. European Space Agency
  11. Fondazione Europea di Ricerca Biomedica
  12. BIAL
  13. Wallonia-Brussels Federation Concerted Research Action
  14. Mind Science Foundation
  15. CIFAR
  16. Amazon Web Services research grant
  17. INRTA
  18. European Union [720270, 785907]
  19. Luminous project [EU-H2020-fetopen-ga686764]
  20. Center-tbi
  21. [ERCYStG-263584]

向作者/读者索取更多资源

Determining the state of consciousness in patients with disorders of consciousness is a challenging practical and theoretical problem. Recent findings suggest that multiple markers of brain activity extracted from the EEG may index the state of consciousness in the human brain. Furthermore, machine learning has been found to optimize their capacity to discriminate different states of consciousness in clinical practice. However, it is unknown how dependable these EEG markers are in the face of signal variability because of different EEG configurations, EEG protocols and subpopulations from different centres encountered in practice. In this study we analysed 327 recordings of patients with disorders of consciousness (148 unresponsive wakefulness syndrome and 179 minimally conscious state) and 66 healthy controls obtained in two independent research centres (Paris Pitie-Salpetriere and Liege). We first show that a non-parametric classifier based on ensembles of decision trees provides robust out-of-sample performance on unseen data with a predictive area under the curve (AUC) of similar to 0.77 that was only marginally affected when using alternative EEG configurations (different numbers and positions of sensors, numbers of epochs, average AUC = 0.750 +/- 0.014). In a second step, we observed that classifiers based on multiple as well as single EEG features generalize to recordings obtained from different patient cohorts, EEG protocols and different centres. However, the multivariate model always performed best with a predictive AUC of 0.73 for generalization from Paris 1 to Paris 2 datasets, and an AUC of 0.78 from Paris to Liege datasets. Using simulations, we subsequently demonstrate that multivariate pattern classification has a decisive performance advantage over univariate classification as the stability of EEG features decreases, as different EEG configurations are used for feature-extraction or as noise is added. Moreover, we show that the generalization performance from Paris to Liege remains stable even if up to 20% of the diagnostic labels are randomly flipped. Finally, consistent with recent literature, analysis of the learned decision rules of our classifier suggested that markers related to dynamic fluctuations in theta and alpha frequency bands carried independent information and were most influential. Our findings demonstrate that EEG markers of consciousness can be reliably, economically and automatically identified with machine learning in various clinical and acquisition contexts.

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