Bi-cephalic self-attended model to classify Parkinson's disease patients with freezing of gait

arXiv — cs.LGFriday, December 5, 2025 at 5:00:00 AM
  • A novel Bi-cephalic Self-Attention Model (BiSAM) has been developed to classify Parkinson's disease patients, particularly those experiencing freezing of gait (FOG). This model utilizes resting-state EEG signals along with demographic and clinical variables from a dataset of 124 participants, including 42 PD patients with FOG, to enhance the detection of gait dysfunction objectively.
  • The introduction of BiSAM represents a significant advancement in the objective assessment of gait dysfunction in Parkinson's disease, moving away from subjective methods and specialized tools. This could lead to improved diagnosis and treatment strategies for patients suffering from FOG, ultimately enhancing their quality of life.
  • The development of BiSAM aligns with ongoing efforts in the field of brain-computer interfaces (BCIs) and EEG analysis, where researchers are exploring innovative methods to decode brain signals for various applications. This trend highlights the increasing importance of data-driven approaches in medical diagnostics, as well as the potential for EEG technology to bridge gaps in understanding complex neurological conditions.
— via World Pulse Now AI Editorial System

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