Data Sheet 1_Anticipatory prediction of sit-to-stand and stand-to-sit transitions: a unified approach.pdf
收藏NIAID Data Ecosystem2026-05-10 收录
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https://figshare.com/articles/dataset/Data_Sheet_1_Anticipatory_prediction_of_sit-to-stand_and_stand-to-sit_transitions_a_unified_approach_pdf/31910032
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IntroductionSit-to-stand (SiTSt) and stand-to-sit (StTSi) motions, collectively referred to as STS motions, are fundamental movements for independent daily living. However, many individuals are unable to generate sufficient strength and balance during these motions, which increases the risk of fall-related accidents. Therefore, proper and timely mechanical assistance is needed to improve the quality of daily life for people with weak muscles or insufficient motor control.
MethodsTo support the development of such assistance, we analyzed SiTSt and StTSi) motions performed using two different strategies by means of electromyography. Muscle synergy analysis was used to provide a compact and physiologically interpretable description of myoelectric patterns, enabling systematic comparisons of neuromuscular control across the two movement strategies, namely the momentum transfer strategy and the stabilization strategy. Based on these findings, we further proposed a deep neural network framework to predict motion states prior to motion initiation.
ResultsThe experimental results demonstrated that at least four synergy patterns were sufficient to represent these STS motions. In addition, the proposed method achieved an accuracy of 92.97 ± 0.86% with a forecasting time of 300 ms for motion state prediction, while the average temporal error remained consistently below 50 ms.
DiscussionThese findings indicate that muscle synergy analysis can effectively characterize different STS movement strategies and that the proposed deep neural network framework can provide sufficient lead time for assistive device activation. This approach may contribute to the development of effective mechanical assistance systems for individuals with impaired muscle strength or motor control.
创建时间:
2026-04-01



