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Brain computer interface (BCI) provides a promising and intelligent rehabilitation method for motor function, and it is crucial to acquire the patient's movement intentions accurately through decoding motor imagery EEG (MI-EEG) . Because of the inter-individual heterogeneity, the decoding model should demonstrate dynamic adaptation abilities.Domain adaptation (DA) is effective to enhance model generalization by reducing the inherent distribution difference among subjects. However, the existing DA methods usually mix the multiple source domains into a new domain, the resulting multi-source domain conflict may cause negative transfer. In this paper, we propose a multi-source dynamic conditional domain adaptation network (MSDCDA). First, a multi-channel attention block is employed in the feature extractor to focus on the channels relevant to the corresponding MI task. Subsequently, the shallow spatial-temporal features are extracted using a spatial-temporal convolution block. And a dynamic residual block is applied in the feature extractor to dynamically adapt specific features of each subject to alleviate conflicts among multiple source domains since each domain is viewed as a distribution of electroencephalogram (EEG) signals. Furthermore, we employ the Margin Disparity Discrepancy (MDD) as the metric to achieve conditional distribution domain adaptation between the source and target domains through adversarial learning with an auxiliary classifier. MSDCDA achieved accuracies of 78.55 and 85.08 on Datasets IIa and IIb of BCI Competition IV, respectively. Our experimental results demonstrate that MSDCDA can effectively address multi-source domain conflicts and significantly enhance the decoding performance of target subjects. This study positively facilitates the application of BCI based on motor function rehabilitation.
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http://dx.doi.org/10.1186/s40708-025-00267-w | DOI Listing |
Integr Med Res
March 2026
National Research Center in Complementary and Alternative Medicine (NAFKAM), Department of Community Medicine, Faculty of Health Sciences, The Arctic University of Norway UiT, Tromsø, Norway.
Background: Athroplastic surgery often results in acute post-operative pain, hindering rehabilitation compliance. To improve pain management and functional recovery, guided and motor imagery (GMI) exercises were introduced in hip and knee arthroplasty.
Methods: A pragmatic prospective mixed-methods implementation evaluation was conducted at the orthopaedic department of Schakelring, the Netherlands.
Cureus
September 2025
Rheumatology, University Hospitals Coventry & Warwickshire, Coventry, GBR.
Complex regional pain syndrome (CRPS) is a debilitating chronic pain condition that may develop after fractures, surgery, or soft tissue trauma. It is characterized by pain disproportionate to the initial injury, often accompanied by sensory, motor, autonomic, and trophic changes. Despite extensive research, pathophysiology remains unclear, and treatment approaches are varied, with inconsistent supporting evidence.
View Article and Find Full Text PDFBrain Stimul
September 2025
Department of Philosophy, University of Milan, Milan, via Festa Del Perdono, 7, 20122, Italy; Cognition in Action (CIA) Unit, PHILAB, University of Milan, Via Santa Sofia, 9, 20122, Italy. Electronic address:
Background: To investigate covert motor processes, transcranial magnetic stimulation (TMS) studies often use motor-evoked potentials (MEPs) as a proxy for inferring the state of motor representations. Typically, these studies test motor representations of actions that can be produced by the isolated contraction of one muscle, limiting both the number of recorded muscles and the complexity of tested actions. Furthermore, univariate analyses treat MEPs from different muscles as independent, overlooking potentially meaningful intermuscular relationships encoded in MEPs amplitude patterns at the single-trial level.
View Article and Find Full Text PDFIEEE J Biomed Health Inform
September 2025
The multi-user motor imagery brain-computer interface (BCI) is a new approach that uses information from multiple users to improve decision-making and social interaction. Although researchers have shown interest in this field, the current decoding methods are limited to basic approaches like linear averaging or feature integration. They ignored accurately assessing the coupling relationship features, which results in incomplete extraction of multi-source information.
View Article and Find Full Text PDFGait Posture
September 2025
UHasselt, REVAL Rehabilitation Research Center, Faculty of Rehabilitation Sciences, Wetenschapspark 7, Diepenbeek 3590, Belgium. Electronic address:
Objective: Although emotions and postural control are strongly intertwined, more research is necessary to understand this intricate relationship. Therefore, we examined the effect of script-driven emotional imagery on postural control in healthy individuals.
Methods: Forty-four healthy participants (50 % female, median age=27) imagined three emotional imagery scripts (hostile, acceptance, relaxation) in upright standing without visual input while center of pressure (CoP) was measured (mean sway, sway velocity, , and standard deviation in antero-posterior and medio-lateral directions, and sway path and area).