Awiszus F
Medizinische Hochschule Hannover, Abteilung Neurophysiologie, Germany.
Biol Cybern. 1993;68(3):267-74. doi: 10.1007/BF00224862.
Usually neuronal responses to short-lasting stimuli are displayed as peri-stimulus time histogram. The function estimated by such a histogram allows to obtain informations about stimulus-induced postsynaptic events as long as the interpretation is restricted to the first response component after the stimulus. The interpretation of secondary response components is much more difficult, as they may be either due to stimulus effects or represent an "echo" of the primary response. In the present paper two output functions are developed that do not show such an echoing of responses. The first one, the interspike interval change function, represents an ideal way to quantify a neuronal stimulus response as its amplitude was found to be almost independent of the stimulation strategy used during acquisition of the spike train data. The other function, the displaced impulses function, allows to verify the statistical significance of an observed response component. Both functions may be estimated from stimulus-correlated spike train data, even if the neuron under investigation shows considerable interspike-interval variability in the absence of stimulation. The concepts underlying these neuronal output functions are developed on simulated responses of a Hodgkin-Huxley-type model for a mammalian neuron at body temperature that is exposed to a transient excitatory conductance increase. Additionally, estimation of these output functions is also demonstrated on responses of human soleus motoneurons that were exposed to electrical stimuli of the tibial nerve in the popliteal fossa.
通常,神经元对短时刺激的反应以刺激周围时间直方图的形式呈现。只要将解释限制在刺激后的第一个反应成分上,通过这种直方图估计的函数就能获取有关刺激诱发的突触后事件的信息。对次级反应成分的解释则困难得多,因为它们可能要么是由刺激效应引起的,要么代表初级反应的“回声”。在本文中,我们开发了两种不会出现这种反应回声的输出函数。第一种是峰峰间隔变化函数,它是量化神经元刺激反应的理想方法,因为发现其幅度几乎与在获取尖峰序列数据期间使用的刺激策略无关。另一种函数是移位脉冲函数,它可以验证观察到的反应成分的统计显著性。即使所研究的神经元在无刺激时表现出相当大的峰峰间隔变异性,这两种函数都可以从与刺激相关的尖峰序列数据中估计出来。这些神经元输出函数背后的概念是基于一个霍奇金 - 赫胥黎型哺乳动物神经元模型在体温下暴露于短暂兴奋性电导增加时的模拟反应而发展起来的。此外,还展示了在人类比目鱼肌运动神经元对腘窝处胫神经电刺激的反应上对这些输出函数的估计。