4.7 Article

Neural oscillations track recovery of consciousness in acute traumatic brain injury patients

Journal

HUMAN BRAIN MAPPING
Volume 43, Issue 6, Pages 1804-1820

Publisher

WILEY
DOI: 10.1002/hbm.25725

Keywords

biomarker; coma; consciousness; EEG; mesocircuit; neural oscillations; traumatic brain injury

Funding

  1. National Institute of Neurological Disorders and Stroke [NS049471, NS058489, NS100064]
  2. State of California Neurotrauma Initiative
  3. Tiny Blue Dot Foundation

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This study confirms the validity of the ABCD model in predicting behavioral recovery in patients with moderate-to-severe traumatic brain injury. It outperforms data-driven clustering methods and may be equally effective as a more simplified categorization. Additionally, a correlation between EEG findings and functional magnetic resonance imaging provides further evidence for investigation in larger studies.
Electroencephalography (EEG), easily deployed at the bedside, is an attractive modality for deriving quantitative biomarkers of prognosis and differential diagnosis in severe brain injury and disorders of consciousness (DOC). Prior work by Schiff has identified four dynamic regimes of progressive recovery of consciousness defined by the presence or absence of thalamically-driven EEG oscillations. These four predefined categories (ABCD model) relate, on a theoretical level, to thalamocortical integrity and, on an empirical level, to behavioral outcome in patients with cardiac arrest coma etiologies. However, whether this theory-based stratification of patients might be useful as a diagnostic biomarker in DOC and measurably linked to thalamocortical dysfunction remains unknown. In this work, we relate the reemergence of thalamically-driven EEG oscillations to behavioral recovery from traumatic brain injury (TBI) in a cohort of N = 38 acute patients with moderate-to-severe TBI and an average of 1 week of EEG recorded per patient. We analyzed an average of 3.4 hr of EEG per patient, sampled to coincide with 30-min periods of maximal behavioral arousal. Our work tests and supports the ABCD model, showing that it outperforms a data-driven clustering approach and may perform equally well compared to a more parsimonious categorization. Additionally, in a subset of patients (N = 11), we correlated EEG findings with functional magnetic resonance imaging (fMRI) connectivity between nodes in the mesocircuit-which has been theoretically implicated by Schiff in DOC-and report a trend-level relationship that warrants further investigation in larger studies.

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