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利用肌肉活动的锋电位触发平均法来量化运动神经元池的输入。

Use of spike triggered averaging of muscle activity to quantify inputs to motoneuron pools.

作者信息

Fortier P A

机构信息

Department of Anatomy and Neurobiology, Faculty of Medicine, University of Ottawa, Ontario, Canada.

出版信息

J Neurophysiol. 1994 Jul;72(1):248-65. doi: 10.1152/jn.1994.72.1.248.

Abstract
  1. The goal of this study was to determine the extent to which postspike facilitation (PSpF) of electromyograms (EMGs) could be used to estimate the inputs to separate motoneuron pools, under conditions where there was wide variability in the parameters of muscle activity. These parameters included cancellation of motor unit action potentials (MUAPs), variations in EMG noise, and changes in MUAP amplitude and duration. A systematic series of computer simulations with increasing complexity were used to achieve this goal. The initial simulations (model I) included a premotoneuronal (PreM) cell connected to a single postsynaptic motoneuron (Mn), which in turn projected to a muscle. The next simulations (model II) included other target motoneurons with their efferents each projecting to separate muscles. The last simulations (model III) included more than one postsynaptic motoneuron per Mn-pool, as is the case in mammalian neuromuscular systems. 2. A sample simulation (model I) was performed to determine if the PreM-evoked effects were within physiologically observed values. A cross-correlogram (XC) calculated from a PreM cell and its target Mn, receiving a PreM-evoked excitatory postsynaptic potential (EPSP) of 0.5 mV, produced a XC peak area of 0.04 Mn-spikes/PreM-trigger. The PSpF of EMG activity evoked by this PreM cell had a mean percent increase of 4.6% (MPI = mean bin amplitude of PSpF above baseline/mean baseline level x 100). These XC and PSpF values were within the range of values previously obtained from animal experiments. 3. The magnitude of MUAP cancellation in the EMG was tested by calculating two spike-triggered averages (SpTAs) of EMGs from Mn-triggers (not PreM-triggers as in the other SpTAs): one using typical bipolar MUAPs and another using their rectified counterpart of only positive polarity to eliminate the possibility of MUAP cancellation. The PSpF calculated from bipolar spikes was 24.8% smaller than the one calculated using unipolar spikes. This cancellation could be greater or smaller depending on the state of parameters, such as the shape and number of MUAPs, that determine the probability of overlap between MUAP components of opposite polarity. All subsequent computer simulations used typical bipolar MUAPs. 4. A series of increasing motoneuron EPSP amplitudes were used to determine the relationship between PreM-Mn connection strength and PSpF area. A nearly perfect linear relationship between EPSP amplitude and PSpF area was obtained for SpTAs of rectified EMGs (r = 0.99). An equally linear relationship was obtained when averaging nonrectified EMGs (r = 0.99), but the smaller EPSPs or weaker synaptic connections were not detected.(ABSTRACT TRUNCATED AT 400 WORDS)
摘要
  1. 本研究的目的是确定在肌肉活动参数存在广泛变异性的情况下,肌电图(EMG)的峰后易化(PSpF)在何种程度上可用于估计不同运动神经元池的输入。这些参数包括运动单位动作电位(MUAP)的抵消、EMG噪声的变化以及MUAP幅度和持续时间的改变。为实现这一目标,进行了一系列复杂度不断增加的计算机模拟。最初的模拟(模型I)包括一个运动前神经元(PreM)细胞连接到单个突触后运动神经元(Mn),该运动神经元进而投射到一块肌肉。接下来的模拟(模型II)包括其他靶运动神经元,其传出纤维分别投射到不同的肌肉。最后的模拟(模型III)每个Mn池包含不止一个突触后运动神经元,这与哺乳动物神经肌肉系统的情况相同。2. 进行了一次样本模拟(模型I),以确定PreM诱发的效应是否在生理观察值范围内。从一个PreM细胞及其靶Mn计算得到的互相关图(XC),该靶Mn接受0.5 mV的PreM诱发兴奋性突触后电位(EPSP),产生的XC峰面积为0.04个Mn峰/PreM触发。由该PreM细胞诱发的EMG活动的PSpF平均增加百分比为4.6%(MPI = PSpF高于基线的平均区间幅度/平均基线水平×100)。这些XC和PSpF值在先前动物实验获得的值范围内。3. 通过计算来自Mn触发(与其他SpTA中使用的PreM触发不同)的EMG的两个峰触发平均值(SpTA)来测试EMG中MUAP抵消的程度:一个使用典型的双极MUAP,另一个使用仅正极性的整流对应物以消除MUAP抵消的可能性。从双极峰计算得到的PSpF比使用单极峰计算得到的PSpF小24.8%。这种抵消可能根据参数状态(如MUAP的形状和数量)而更大或更小,这些参数决定了相反极性的MUAP成分之间重叠的概率。所有后续计算机模拟均使用典型的双极MUAP。4. 使用一系列逐渐增加的运动神经元EPSP幅度来确定PreM - Mn连接强度与PSpF面积之间的关系。对于整流后的EMG的SpTA,EPSP幅度与PSpF面积之间获得了近乎完美的线性关系(r = 0.99)。对未整流的EMG进行平均时也获得了同样的线性关系(r = 0.99),但较小的EPSP或较弱的突触连接未被检测到。(摘要截断于400字)

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