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首页> 外文期刊>Journal of electromyography and kinesiology: Official journal of the International Society of Electrophysiological Kinesiology >Statistical Parametric Mapping (SPM) for alpha-based statistical analyses of multi-muscle EMG time-series
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Statistical Parametric Mapping (SPM) for alpha-based statistical analyses of multi-muscle EMG time-series

机译:统计参数映射(SPM)用于对多肌肉EMG时间序列进行基于alpha的统计分析

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摘要

Multi-muscle EMG time-series are highly correlated and time dependent yet traditional statistical analysis of scalars from an EMG time-series fails to account for such dependencies. This paper promotes the use of SPM vector-field analysis for the generalised analysis of EMG time-series. We reanalysed a publicly available dataset of Young versus Adult EMG gait data to contrast scalar and SPM vector-field analysis. Independent scalar analyses of EMG data between 35% and 45% stance phase showed no statistical differences between the Young and Adult groups. SPM vector-field analysis did however identify statistical differences within this time period. As scalar analysis failed to consider the multi-muscle and time dependence of the EMG time-series it exhibited Type II error. SPM vector-field analysis on the other hand accounts for both dependencies whilst tightly controlling for Type I and Type II error making it highly applicable to EMG data analysis. Additionally SPM vector-field analysis is generalizable to linear and non-linear parametric and non-parametric statistical models, allowing its use under constraints that are common to electromyography and kinesiology. (C) 2014 Elsevier Ltd. All rights reserved.
机译:多肌肉EMG时间序列具有高度相关性,并且与时间相关,而对EMG时间序列中标量的传统统计分析却无法解决此类依赖性。本文提倡将SPM矢量场分析用于EMG时间序列的广义分析。我们重新分析了年轻人和成人EMG步态数据的公开数据集,以对比标量和SPM矢量场分析。在35%至45%站姿阶段之间的EMG数据的独立标量分析显示,青年组和成人组之间无统计学差异。但是,SPM向量场分析确实确定了该时间段内的统计差异。由于标量分析未能考虑EMG时间序列的多肌肉和时间依赖性,因此表现出II型误差。另一方面,SPM向量场分析既考虑了这两种依赖性,又严密控制了I型和II型错误,使其非常适用于EMG数据分析。此外,SPM矢量场分析可推广到线性和非线性参数和非参数统计模型,从而允许在肌电图和运动学通用的约束条件下使用。 (C)2014 Elsevier Ltd.保留所有权利。

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