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Published:2025/12/3 20:52:22

パーキンソン病をAIで診断!?FOG(すくみ足)を早期発見しちゃお!✨

超要約: パーキンソン病の歩行異常を、脳波とAIで診断するスゴ技!早期発見でQOL爆上がり!

ギャル的キラキラポイント✨

● パーキンソン病の歩行障害を、AIで客観的に診断できるって、未来すぎる💖 ● 脳波(脳みその電気信号)と患者さんの情報を組み合わせるのが、新しいよね! ● 早期発見できれば、治療も早く始められるから、患者さんの生活の質も上がるって最高じゃん?😭

詳細解説

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

Shomoita Jahid Mitin (Biomedical and Translational Sciences / University of South Dakota / Vermillion / SD / USA and / Artificial Intelligence Research lab / Department of Computer Science / University of South Dakota / Vermillion / SD and) / Rodrigue Rizk (Artificial Intelligence Research lab / Department of Computer Science / University of South Dakota / Vermillion / SD and) / Maximilian Scherer (Department of Neurology / Ludwig Maximilian University / Munich / Germany and) / Thomas Koeglsperger (Department of Neurology / Ludwig Maximilian University / Munich / Germany and) / Daniel Lench (Department of Neurology / Medical University of South Carolina / Charleston / SC / USA and) / KC Santosh (Artificial Intelligence Research lab / Department of Computer Science / University of South Dakota / Vermillion / SD and) / Arun Singh (Biomedical and Translational Sciences / University of South Dakota / Vermillion / SD / USA and / Department of Neuroscience / Sanford School of Medicine / University of South Dakota / Sioux Falls / SD / USA)

Parkinson Disease (PD) often results in motor and cognitive impairments, including gait dysfunction, particularly in patients with freezing of gait (FOG). Current detection methods are either subjective or reliant on specialized gait analysis tools. This study aims to develop an objective, data-driven, and multi-modal classification model to detect gait dysfunction in PD patients using resting-state EEG signals combined with demographic and clinical variables. We utilized a dataset of 124 participants: 42 PD patients with FOG (PDFOG+), 41 without FOG (PDFOG-), and 41 age-matched healthy controls. Features extracted from resting-state EEG and descriptive variables (age, education, disease duration) were used to train a novel Bi-cephalic Self-Attention Model (BiSAM). We tested three modalities: signal-only, descriptive-only, and multi-modal, across different EEG channel subsets (BiSAM-63, -16, -8, and -4). Signal-only and descriptive-only models showed limited performance, achieving a maximum accuracy of 55% and 68%, respectively. In contrast, the multi-modal models significantly outperformed both, with BiSAM-8 and BiSAM-4 achieving the highest classification accuracy of 88%. These results demonstrate the value of integrating EEG with objective descriptive features for robust PDFOG+ detection. This study introduces a multi-modal, attention-based architecture that objectively classifies PDFOG+ using minimal EEG channels and descriptive variables. This approach offers a scalable and efficient alternative to traditional assessments, with potential applications in routine clinical monitoring and early diagnosis of PD-related gait dysfunction.

cs / cs.LG