Completely locked-in (CLIS) patients are characterized by
sufficiently intact cognitive functions, but a complete
paralysis that prevents them to interact with their
surroundings. On one hand, studies have shown that the ability
to communicate plays an important part in these patients'
quality of life and prognosis. On the other hand, brain-computer
interfaces (BCIs) provide a means for them to communicate using
their brain signals. However, one major problem for such
patients is the difficulty to determine if they are conscious or
not at a specific time. This work aims to combine different sets
of features consisting of spectral, complexity and connectivity
measures, to increase the probability of correctly estimating
CLIS patients' consciousness levels. The proposed approach was
tested on data from one CLIS patient, which is particular in the
sense that the experimenter was able to point out one time frame
$\Delta$t during which he was undoubtedly conscious. Results
showed that the method presented in this paper was able to
detect increases and decreases of the patient's consciousness
levels. More specifically, increases were observed during this
$\Delta$t, corroborating the assertion of the experimenter
reporting that the patient was definitely conscious then.
Assessing the patients' consciousness is intended as a step
prior attempting to communicate with them, in order to maximize
the efficiency of BCI-based communication systems.
%0 Journal Article
%1 AdamaBogdan2022-ol
%A Adama, Sophie
%A Bogdan, Martin
%D 2022
%I MDPI AG
%J Brain Sci.
%K complexity electrocorticogram consciousness spectral analysis from:scadsfct extraction features syndrome connectivity completely locked-in soft-clustering
%N 1
%P 65
%T Application of soft-clustering to assess consciousness in a CLIS patient
%V 13
%X Completely locked-in (CLIS) patients are characterized by
sufficiently intact cognitive functions, but a complete
paralysis that prevents them to interact with their
surroundings. On one hand, studies have shown that the ability
to communicate plays an important part in these patients'
quality of life and prognosis. On the other hand, brain-computer
interfaces (BCIs) provide a means for them to communicate using
their brain signals. However, one major problem for such
patients is the difficulty to determine if they are conscious or
not at a specific time. This work aims to combine different sets
of features consisting of spectral, complexity and connectivity
measures, to increase the probability of correctly estimating
CLIS patients' consciousness levels. The proposed approach was
tested on data from one CLIS patient, which is particular in the
sense that the experimenter was able to point out one time frame
$\Delta$t during which he was undoubtedly conscious. Results
showed that the method presented in this paper was able to
detect increases and decreases of the patient's consciousness
levels. More specifically, increases were observed during this
$\Delta$t, corroborating the assertion of the experimenter
reporting that the patient was definitely conscious then.
Assessing the patients' consciousness is intended as a step
prior attempting to communicate with them, in order to maximize
the efficiency of BCI-based communication systems.
@article{AdamaBogdan2022-ol,
abstract = {Completely locked-in (CLIS) patients are characterized by
sufficiently intact cognitive functions, but a complete
paralysis that prevents them to interact with their
surroundings. On one hand, studies have shown that the ability
to communicate plays an important part in these patients'
quality of life and prognosis. On the other hand, brain-computer
interfaces (BCIs) provide a means for them to communicate using
their brain signals. However, one major problem for such
patients is the difficulty to determine if they are conscious or
not at a specific time. This work aims to combine different sets
of features consisting of spectral, complexity and connectivity
measures, to increase the probability of correctly estimating
CLIS patients' consciousness levels. The proposed approach was
tested on data from one CLIS patient, which is particular in the
sense that the experimenter was able to point out one time frame
$\Delta$t during which he was undoubtedly conscious. Results
showed that the method presented in this paper was able to
detect increases and decreases of the patient's consciousness
levels. More specifically, increases were observed during this
$\Delta$t, corroborating the assertion of the experimenter
reporting that the patient was definitely conscious then.
Assessing the patients' consciousness is intended as a step
prior attempting to communicate with them, in order to maximize
the efficiency of BCI-based communication systems.},
added-at = {2025-01-07T11:27:49.000+0100},
author = {Adama, Sophie and Bogdan, Martin},
biburl = {https://puma.scadsai.uni-leipzig.de/bibtex/232a1acdf18865e62af94af3638dba47b/scads.ai},
copyright = {https://creativecommons.org/licenses/by/4.0/},
interhash = {bdb2d3898f9322558d7854087e041e7c},
intrahash = {32a1acdf18865e62af94af3638dba47b},
journal = {Brain Sci.},
keywords = {complexity electrocorticogram consciousness spectral analysis from:scadsfct extraction features syndrome connectivity completely locked-in soft-clustering},
language = {en},
month = dec,
number = 1,
pages = 65,
publisher = {MDPI AG},
timestamp = {2025-01-07T11:27:49.000+0100},
title = {Application of soft-clustering to assess consciousness in a {CLIS} patient},
volume = 13,
year = 2022
}