Türker K S, Powers R K
Discipline of Physiology, School of Molecular and Biomedical Sciences, University of Adelaide, SA 5005, Australia.
J Physiol. 2003 Sep 1;551(Pt 2):419-31. doi: 10.1113/jphysiol.2003.044982. Epub 2003 Jul 18.
Classical techniques for estimating postsynaptic potentials in motoneurones include spike-triggered averages of rectified surface and multiunit electromyographic recordings (SEMG and MU-EMG), as well as the compilation of peristimulus time histograms (PSTH) based on the discharge of single motor units (SMU). These techniques rely on the probability of spike occurrence in relation to the stimulus and can be contaminated by count- and synchronization-related errors, arising from post-spike refractoriness and the discharge statistics of motoneurones. On the other hand, since these probability-based techniques are easy to use and require only inexpensive equipment, it is very likely that they will continue to be used in clinical and laboratory settings for the foreseeable future. One aim of the present study was to develop a modification of these probability-based analyses in order to provide a better estimate of the initial phase of postsynaptic potentials. An additional aim was to combine probability-based analyses with frequency-based analyses to provide a more reliable estimate of later phases of postsynaptic potentials. To achieve these aims, we have injected simple as well as complex current transients into regularly discharging hypoglossal motoneurones recorded in vitro from rat brainstem slices. We examined the discharge output of these cells using both probability- and frequency-based analyses to identify which of the two represented the profile of the postsynaptic potential more closely. This protocol was designed to obtain PSTHs of the responses of single motor units to repeated application of the same afferent input. We have also simulated multiunit responses to afferent input by replacing the times of spike occurrence in individual trials with a representation of either an intramuscular or surface-recording single motor unit waveform and summing many of these trials to obtain either a simulated SEMG or MU-EMG. We found that in a regularly discharging motoneurone, the rising phase of an EPSP moves the occurrence of spikes forward and hence induces a substantial peak in all probability-based records. This peak is followed immediately by a period of reduced activity ('silent period') due to the phase advancement of spikes that were to occur at this period. Similarly, the falling phase of an IPSP delays spikes so that they occur during the rising phase of the IPSP. During the delay, the probability-based analyses display gaps and during the occurrence of the delayed spikes they generate peaks. We found that all the probability-based analyses (SEMG, MU-EMG and PSTH) can be made useful for illustrating the underlying initial PSP by a special use of the cumulative sum (CUSUM) calculation. We have illustrated that, in most cases, the CUSUM of probability-based analyses can overcome the delay- or advance-related (i.e. the count-related) errors of the classical methods associated with the first PSP only. The probability-based records also induce secondary and tertiary peaks and troughs due to synchronization of the spikes in relation to the stimulus (i.e. the synchronization-related errors) by the first PSP to occur at fixed times from the stimulus. Special CUSUM analyses cannot overcome these synchronization-related errors. Frequency-based analysis (PSFreq) of individual and summed trials gave comparable and often better indications of the underlying PSPs than the probability-based analyses. When used in combination, these analyses compliment each other so that a more accurate estimation of the underlying PSP is possible. Since the correct identification of the connections in the central nervous system is of utmost importance in order to understand the operation of the system, we suggest that as well as the using the special CUSUM approach on probability-based records, researchers should seriously consider the use of frequency-based analyses in their indirect estimation of stimulus-induced compound synaptic potentials in human motoneurones.
估计运动神经元突触后电位的经典技术包括对整流后的表面肌电图和多单位肌电图记录(SEMG和MU - EMG)进行触发峰平均,以及基于单个运动单位(SMU)放电编制刺激时间直方图(PSTH)。这些技术依赖于与刺激相关的峰出现概率,并且可能受到与计数和同步相关的误差影响,这些误差源于峰后的不应期和运动神经元的放电统计。另一方面,由于这些基于概率的技术易于使用且仅需要廉价的设备,在可预见的未来它们很可能会继续在临床和实验室环境中使用。本研究的一个目的是对这些基于概率的分析方法进行改进,以便更好地估计突触后电位的初始阶段。另一个目的是将基于概率的分析与基于频率的分析相结合,以更可靠地估计突触后电位的后期阶段。为了实现这些目标,我们将简单和复杂的电流瞬变注入从大鼠脑干切片体外记录的规则放电的舌下运动神经元中。我们使用基于概率和基于频率的分析方法来检查这些细胞的放电输出,以确定两者中哪一个更能准确反映突触后电位的特征。该方案旨在获得单个运动单位对重复施加相同传入输入的反应的PSTH。我们还通过用肌内或表面记录的单个运动单位波形表示替换单个试验中的峰出现时间,并对许多这些试验进行求和,以获得模拟的SEMG或MU - EMG,从而模拟多单位对传入输入的反应。我们发现,在规则放电的运动神经元中,兴奋性突触后电位(EPSP)的上升相使峰的出现提前,因此在所有基于概率的记录中都诱导出一个明显的峰值。紧接着这个峰值之后是一段活动减少的时期(“静息期”),这是由于原本在此期间出现的峰的相位提前。同样,抑制性突触后电位(IPSP)的下降相延迟峰,使其在IPSP的上升相期间出现。在延迟期间,基于概率的分析显示出间隙,而在延迟峰出现期间则产生峰值。我们发现,通过特殊使用累积和(CUSUM)计算,所有基于概率的分析(SEMG、MU - EMG和PSTH)都可用于阐明潜在的初始突触后电位(PSP)。我们已经表明,在大多数情况下,基于概率的分析的CUSUM仅能克服与经典方法中与第一个PSP相关的延迟或提前相关(即计数相关)的误差。基于概率的记录还会由于第一个PSP在相对于刺激的固定时间发生时峰的同步(即同步相关误差)而诱导出次级和三级峰与谷。特殊的CUSUM分析无法克服这些同步相关误差。对单个试验和求和试验进行基于频率的分析(PSFreq),与基于概率的分析相比,能给出更可比且通常更好的关于潜在PSP的指示。当结合使用时,这些分析相互补充,从而能够更准确地估计潜在的PSP。由于正确识别中枢神经系统中的连接对于理解系统的运作至关重要,我们建议,除了对基于概率的记录使用特殊的CUSUM方法外,研究人员在间接估计人类运动神经元中刺激诱导的复合突触电位时,应认真考虑使用基于频率的分析方法。