步态周期归一化对主激活的影响

Gregorio Dotti, M. Ghislieri, S. Rosati, V. Agostini, M. Knaflitz, G. Balestra
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摘要

聚类识别肌肉激活模式(CIMAP)算法最近被提出,以应对肌肉激活模式的高受试者内部可变性,并允许提取主激活(PAs),定义为执行特定任务严格必要的肌肉激活间隔。为了评估不同pa之间的差异,需要使用步态周期归一化技术来处理受试者之间和受试者内部的可变性。本贡献的目的是评估两种不同的时间归一化技术(线性长度归一化和分段线性长度归一化)在主题间相似性方面对PA提取的影响。结果显示,两种测试方法的主体间相似度差异无统计学意义,平均相似度高于0.64。此外,评估肌肉之间的主体间相似性具有统计学显著差异,表明考虑到下肢远端肌肉,提取的PAs具有更高的相似性。总之,我们的研究结果表明,在舒适的步行速度下,从健康受试者中提取的pa不受时间归一化方法的影响。
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Influence of Gait Cycle Normalization on Principal Activations
The Clustering for Identification of Muscle Activation Pattern (CIMAP) algorithm has been recently proposed to cope with the high intra-subject variability of muscle activation patterns and to allow the extraction of principal activations (PAs), defined as those muscle activation intervals that are strictly necessary to perform a specific task. To assess differences between different PAs, gait cycle normalization techniques are needed to handle between- and within-subject variability. The aim of this contribution is to assess the effect of two different time-normalization techniques (Linear Length Normalization and Piecewise Linear Length Normalization) on PA extraction, in terms of inter-subject similarity. Results demonstrated no statistically significant differences in the inter-subject similarity between the two tested approaches, revealing, on the average, inter-subject similarity values higher than 0.64. Moreover, a statistically significant difference in the inter-subject similarity among muscles was assessed, revealing a higher similarity of PAs extracted considering the distal lower limb muscles. In conclusion, our results demonstrated that PAs extracted from healthy subjects during a walking task at comfortable walking speed are not affected by the time-normalization approach implemented.
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