Fractal dimension analysis of resting state functional networks in schizophrenia from EEG signals
Metadatos
Mostrar el registro completo del ítemEditorial
Frontiers Media
Materia
Fractal dimension EEG Resting state Functional network Schizophrenia
Fecha
2023-09-20Referencia bibliográfica
Ruiz de Miras J, Ibáñez-Molina AJ, Soriano MF and Iglesias-Parro S (2023) Fractal dimension analysis of resting state functional networks in schizophrenia from EEG signals. Front. Hum. Neurosci. 17:1236832. [doi: 10.3389/fnhum.2023.1236832]
Patrocinador
Project PID2019-105145RB-I00 supported by the Spanish Government (MCIN/AEI/10.13039/501100011033)Resumen
Fractal dimension (FD) has been revealed as a very useful tool in analyzing
the changes in brain dynamics present in many neurological disorders. The
fractal dimension index (FDI) is a measure of the spatiotemporal complexity of
brain activations extracted from EEG signals induced by transcranial magnetic
stimulation. In this study, we assess whether the FDI methodology can be also
useful for analyzing resting state EEG signals, by characterizing the brain dynamic
changes in different functional networks affected by schizophrenia, a mental
disorder associated with dysfunction in the information flow dynamics in the
spontaneous brain networks. We analyzed 31 resting-state EEG records of 150 s
belonging to 20 healthy subjects (HC group) and 11 schizophrenia patients (SCZ
group). Brain activations at each time sample were established by a thresholding
process applied on the 15,002 sources modeled from the EEG signal. FDI was
then computed individually in each resting-state functional network, averaging
all the FDI values obtained using a sliding window of 1 s in the epoch. Compared
to the HC group, significant lower values of FDI were obtained in the SCZ group
for the auditory network (p < 0.05), the dorsal attention network (p < 0.05), and
the salience network (p < 0.05). We found strong negative correlations (p < 0.01)
between psychopathological scores and FDI in all resting-state networks analyzed,
except the visual network. A receiver operating characteristic curve analysis also
revealed that the FDI of the salience network performed very well as a potential
feature for classifiers of schizophrenia, obtaining an area under curve value of 0.83.
These results suggest that FDI is a promising method for assessing the complexity
of the brain dynamics in different regions of interest, and from long resting-state
EEG signals. Regarding the specific changes associated with schizophrenia in the
dynamics of the spontaneous brain networks, FDI distinguished between patients
and healthy subjects, and correlated to clinical variables.