*Department of Physical Medicine and Rehabilitation, Johns Hopkins University, School of Medicine, 98 N. Broadway, Suite 409, Baltimore, MD 21231, USA; Museum of Comparative Zoology, Harvard University, Cambridge, MA 02138, USA; Department of Physiology, King's College London, London SE1 7EH UK.
Integr Comp Biol. 2008 Aug;48(2):283-93. doi: 10.1093/icb/icn022. Epub 2008 May 6.
Recordings of naturally occurring Electromyographic (EMG) signals are variable. One of the first formal and successful attempts to quantify variation in EMG signals was Shaffer and Lauder's (1985) study examining several levels of variation but not within muscle. The goal of the current study was to quantify the variation that exists at different levels, using more detailed measures of EMG activity than did Shaffer and Lauder (1985). The importance of accounting for different levels of variation in an EMG study is both biological and statistical. Signal variation within the same muscle for a stereotyped action suggests that each recording represents a sample drawn from a pool of a large number of motor units that, while biologically functioning in an integrated fashion, showed statistical variation. Different levels of variation for different muscles could be related to different functions or different tasks of those muscles. The statistical impact of unaccounted or inappropriately analyzed variation can lead to false rejection (type I error) or false acceptance (type II error) of the null hypothesis. Type II errors occur because such variation will accrue to the error, reducing power, and producing an artificially low F-value. Type I errors are associated with pseudoreplication, in which the replicated units are not truly independent, thereby leading to inflated degrees of freedom, and an underestimate of the error mean square. To address these problems, we used a repeated measures, nested multifactor model to measure the relative contribution of different hierarchical levels of variation to the total variation in EMG signals during swallowing. We found that variation at all levels, among electrodes in the same muscle, in sequences of the same animal, and among individuals and between differently named muscles, was significant. These findings suggest that a single intramuscular electrode, recording from a limited sample of the motor units, cannot be relied upon to characterize the activity of an entire muscle. Furthermore, the use of both a repeated-measures model, to avoid pseudoreplication, and a nested model, to account for variation, is critical for a correct testing of biological hypotheses about differences in EMG signals.
自然发生的肌电图(EMG)信号的记录是多变的。量化 EMG 信号变化的最早和最成功的尝试之一是 Shaffer 和 Lauder(1985)的研究,该研究检查了几个层次的变化,但不包括肌肉内的变化。本研究的目的是使用比 Shaffer 和 Lauder(1985)更详细的 EMG 活动测量方法,量化存在于不同层次的变化。在 EMG 研究中,考虑到不同层次的变化是非常重要的,因为它既有生物学意义,也有统计学意义。对于一个刻板的动作,同一肌肉内的信号变化表明,每个记录都是从大量运动单元中抽取的样本,这些运动单元虽然在生物学上以集成的方式运作,但表现出统计学上的变化。不同肌肉的不同层次的变化可能与这些肌肉的不同功能或不同任务有关。如果不考虑或不恰当地分析变化,可能会导致对零假设的错误拒绝(I 类错误)或错误接受(II 类错误)。II 类错误的发生是因为这种变化会累积到误差中,降低功率,并产生人为的低 F 值。I 类错误与伪复制有关,在伪复制中,复制的单元不是真正独立的,从而导致自由度膨胀,并低估误差均方。为了解决这些问题,我们使用重复测量嵌套多因素模型来测量不同层次的变化对吞咽过程中 EMG 信号总变化的相对贡献。我们发现,同一肌肉内电极之间、同一动物序列中、个体之间以及不同命名肌肉之间的所有层次的变化都是显著的。这些发现表明,单个肌内电极,从有限数量的运动单元中记录,不能被用来描述整个肌肉的活动。此外,使用重复测量模型来避免伪复制,以及嵌套模型来解释变化,对于正确检验关于 EMG 信号差异的生物学假设是至关重要的。