Consciousness is something we experience in our everyday life,
more especially between the time we wake up in the morning and go
to sleep at night, but also during the rapid eye movement (REM)
sleep stage. Disorders of consciousness (DoC) are states in which
a person's consciousness is damaged, possibly after a traumatic
brain injury. Completely locked-in syndrome (CLIS) patients, on
the other hand, display covert states of consciousness. Although
they appear unconscious, their cognitive functions are mostly
intact. Only, they cannot externally display it due to their
quadriplegia and inability to speak. Determining these patients'
states constitutes a challenging task. The ultimate goal of the
approach presented in this paper is to assess these CLIS patients
consciousness states. EEG data from DoC patients are used here
first, under the assumption that if the proposed approach is able
to accurately assess their consciousness states, it will
assuredly do so on CLIS patients too. This method combines
different sets of features consisting of spectral, complexity and
connectivity measures in order to increase the probability of
correctly estimating their consciousness levels. The obtained
results showed that the proposed approach was able to correctly
estimate several DoC patients' consciousness levels. This
estimation is intended as a step prior attempting to communicate
with them, in order to maximise the efficiency of brain-computer
interfaces (BCI)-based communication systems.
%0 Journal Article
%1 Adama2023-px
%A Adama, Sophie
%A Bogdan, Martin
%D 2023
%J Brain Inform.
%K Brain-computer Complexity Connectivity Consciousness Disorders Electroencephalogram Soft-clustering Spectral Zno analysis consciousness interface
%N 1
%P 16
%T Assessing consciousness in patients with disorders of consciousness using soft-clustering
%V 10
%X Consciousness is something we experience in our everyday life,
more especially between the time we wake up in the morning and go
to sleep at night, but also during the rapid eye movement (REM)
sleep stage. Disorders of consciousness (DoC) are states in which
a person's consciousness is damaged, possibly after a traumatic
brain injury. Completely locked-in syndrome (CLIS) patients, on
the other hand, display covert states of consciousness. Although
they appear unconscious, their cognitive functions are mostly
intact. Only, they cannot externally display it due to their
quadriplegia and inability to speak. Determining these patients'
states constitutes a challenging task. The ultimate goal of the
approach presented in this paper is to assess these CLIS patients
consciousness states. EEG data from DoC patients are used here
first, under the assumption that if the proposed approach is able
to accurately assess their consciousness states, it will
assuredly do so on CLIS patients too. This method combines
different sets of features consisting of spectral, complexity and
connectivity measures in order to increase the probability of
correctly estimating their consciousness levels. The obtained
results showed that the proposed approach was able to correctly
estimate several DoC patients' consciousness levels. This
estimation is intended as a step prior attempting to communicate
with them, in order to maximise the efficiency of brain-computer
interfaces (BCI)-based communication systems.
@article{Adama2023-px,
abstract = {Consciousness is something we experience in our everyday life,
more especially between the time we wake up in the morning and go
to sleep at night, but also during the rapid eye movement (REM)
sleep stage. Disorders of consciousness (DoC) are states in which
a person's consciousness is damaged, possibly after a traumatic
brain injury. Completely locked-in syndrome (CLIS) patients, on
the other hand, display covert states of consciousness. Although
they appear unconscious, their cognitive functions are mostly
intact. Only, they cannot externally display it due to their
quadriplegia and inability to speak. Determining these patients'
states constitutes a challenging task. The ultimate goal of the
approach presented in this paper is to assess these CLIS patients
consciousness states. EEG data from DoC patients are used here
first, under the assumption that if the proposed approach is able
to accurately assess their consciousness states, it will
assuredly do so on CLIS patients too. This method combines
different sets of features consisting of spectral, complexity and
connectivity measures in order to increase the probability of
correctly estimating their consciousness levels. The obtained
results showed that the proposed approach was able to correctly
estimate several DoC patients' consciousness levels. This
estimation is intended as a step prior attempting to communicate
with them, in order to maximise the efficiency of brain-computer
interfaces (BCI)-based communication systems.},
added-at = {2025-01-07T11:18:08.000+0100},
author = {Adama, Sophie and Bogdan, Martin},
biburl = {https://puma.scadsai.uni-leipzig.de/bibtex/2295ca82926c3bc131f3b9d6700afd27d/scadsfct},
interhash = {61dc6f460ea97a9a4cc296244def0b25},
intrahash = {295ca82926c3bc131f3b9d6700afd27d},
journal = {Brain Inform.},
keywords = {Brain-computer Complexity Connectivity Consciousness Disorders Electroencephalogram Soft-clustering Spectral Zno analysis consciousness interface},
language = {en},
month = jul,
number = 1,
pages = 16,
timestamp = {2025-02-17T11:24:37.000+0100},
title = {Assessing consciousness in patients with disorders of consciousness using soft-clustering},
volume = 10,
year = 2023
}