Consciousness can be defined by two components: arousal (wakefulness) and awareness (subjective experience). However, neurophysiological consciousness metrics able to disentangle between these components have not been reported. Here, we propose an explainable consciousness indicator (ECI) using deep learning to disentangle the components of consciousness. We employ electroencephalographic (EEG) responses to transcranial magnetic stimulation under various conditions, including sleep (n = 6), general anesthesia (n = 16), and severe brain injury (n = 34). We also test our framework using resting-state EEG under general anesthesia (n = 15) and severe brain injury (n = 34). ECI simultaneously quantifies arousal and awareness under physiological, pharmacological, and pathological conditions. Particularly, ketamine-induced anesthesia and rapid eye movement sleep with low arousal and high awareness are clearly distinguished from other states. In addition, parietal regions appear most relevant for quantifying arousal and awareness. This indicator provides insights into the neural correlates of altered states of consciousness.

Quantifying arousal and awareness in altered states of consciousness using interpretable deep learning / M. Lee, L.R.D. Sanz, A. Barra, A. Wolff, J.O. Nieminen, M. Boly, M.C.E. Rosanova, S. Casarotto, O. Bodart, J. Annen, A. Thibaut, R. Panda, V. Bonhomme, M. Massimini, G. Tononi, S. Laureys, O. Gosseries, S. Lee. - In: NATURE COMMUNICATIONS. - ISSN 2041-1723. - 13:(2022 Feb 25), pp. 1064.1-1064.14. [10.1038/s41467-022-28451-0]

Quantifying arousal and awareness in altered states of consciousness using interpretable deep learning

M.C.E. Rosanova;S. Casarotto;M. Massimini;
2022

Abstract

Consciousness can be defined by two components: arousal (wakefulness) and awareness (subjective experience). However, neurophysiological consciousness metrics able to disentangle between these components have not been reported. Here, we propose an explainable consciousness indicator (ECI) using deep learning to disentangle the components of consciousness. We employ electroencephalographic (EEG) responses to transcranial magnetic stimulation under various conditions, including sleep (n = 6), general anesthesia (n = 16), and severe brain injury (n = 34). We also test our framework using resting-state EEG under general anesthesia (n = 15) and severe brain injury (n = 34). ECI simultaneously quantifies arousal and awareness under physiological, pharmacological, and pathological conditions. Particularly, ketamine-induced anesthesia and rapid eye movement sleep with low arousal and high awareness are clearly distinguished from other states. In addition, parietal regions appear most relevant for quantifying arousal and awareness. This indicator provides insights into the neural correlates of altered states of consciousness.
Settore BIO/09 - Fisiologia
Settore ING-INF/06 - Bioingegneria Elettronica e Informatica
   A Multimodal Approach to Personalized Tracking of Evolving State-Of-Consciousness in Brain-Injured Patients (PerBrain)
   PerBrain
   FONDAZIONE REGIONALE PER LA RICERCA BIOMEDICA
25-feb-2022
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/913294
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