The ability to maintain our body’s balance and stability in space is crucial for performing daily activities. Effective postural control (PC) strategies rely on integrating visual, vestibular, and proprioceptive sensory inputs. While neuroimaging has revealed key areas involved in PC—including brainstem, cerebellum, and cortical networks—the rapid neural mechanisms underlying dynamic postural tasks remain less understood. Therefore, we used EEG microstate analysis within the BioVRSea experiment to explore the temporal brain dynamics that support PC. This complex paradigm simulates maintaining an upright posture on a moving platform, integrated with virtual reality (VR), to replicate the sensation of balancing on a boat. Data were acquired from 266 healthy subjects using a 64-channel EEG system. Using a modified k-means method, five EEG microstate maps were identified to best model the paradigm. Differences in each microstate maps feature (occurrence, duration, and coverage) between experimental phases were analyzed using a linear mixed model, revealing significant differences between microstates within the experiment phases. The temporal parameters of microstate C showed significantly higher levels in all experimental phases compared to other microstate maps, whereas microstate B displayed an opposite pattern, consistently showing lower levels. This study marks the first attempt to use microstate analysis during a dynamic task, demonstrating the decisive role of microstate C and, conversely, microstate B in differentiating the PC phases. These results demonstrate the utility of microstate technique in studying temporal brain dynamics during PC, with potential applications in the early detection of neurodegenerative diseases.

Gelormini, C., Guerrini, L., Pescaglia, F., Aubonnet, R., Jónsson, H., Petersen, H., et al. (2025). Assessing Brain Network Dynamics During Postural Control Task Using EEG Microstates. BRAIN TOPOGRAPHY, 38(4) [10.1007/s10548-025-01119-w].

Assessing Brain Network Dynamics During Postural Control Task Using EEG Microstates

Gelormini, C;Aubonnet, R;Di Lorenzo, G;
2025-06-03

Abstract

The ability to maintain our body’s balance and stability in space is crucial for performing daily activities. Effective postural control (PC) strategies rely on integrating visual, vestibular, and proprioceptive sensory inputs. While neuroimaging has revealed key areas involved in PC—including brainstem, cerebellum, and cortical networks—the rapid neural mechanisms underlying dynamic postural tasks remain less understood. Therefore, we used EEG microstate analysis within the BioVRSea experiment to explore the temporal brain dynamics that support PC. This complex paradigm simulates maintaining an upright posture on a moving platform, integrated with virtual reality (VR), to replicate the sensation of balancing on a boat. Data were acquired from 266 healthy subjects using a 64-channel EEG system. Using a modified k-means method, five EEG microstate maps were identified to best model the paradigm. Differences in each microstate maps feature (occurrence, duration, and coverage) between experimental phases were analyzed using a linear mixed model, revealing significant differences between microstates within the experiment phases. The temporal parameters of microstate C showed significantly higher levels in all experimental phases compared to other microstate maps, whereas microstate B displayed an opposite pattern, consistently showing lower levels. This study marks the first attempt to use microstate analysis during a dynamic task, demonstrating the decisive role of microstate C and, conversely, microstate B in differentiating the PC phases. These results demonstrate the utility of microstate technique in studying temporal brain dynamics during PC, with potential applications in the early detection of neurodegenerative diseases.
3-giu-2025
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore MED/25
Settore MEDS-11/A - Psichiatria
English
Electroencephalography (EEG); Microstates; Neural Networks; Postural Control; Temporal Brain Dynamics
Virtual Reality
Gelormini, C., Guerrini, L., Pescaglia, F., Aubonnet, R., Jónsson, H., Petersen, H., et al. (2025). Assessing Brain Network Dynamics During Postural Control Task Using EEG Microstates. BRAIN TOPOGRAPHY, 38(4) [10.1007/s10548-025-01119-w].
Gelormini, C; Guerrini, L; Pescaglia, F; Aubonnet, R; Jónsson, H; Petersen, H; Di Lorenzo, G; Gargiulo, P
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/465743
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