Krausz H I, Friesen W O
J Gen Physiol. 1977 Aug;70(2):243-65. doi: 10.1085/jgp.70.2.243.
In order to characterize synaptic transmission at a unitary facilitating synapse in the lobster cardiac ganglion, a new nonlinear systems analysis technique for discrete-input systems was developed and applied. From the output of the postsynaptic cell in response to randomly occurring presynaptic nerve impulses, a set of kernels, analogous to Wiener kernels, was computed. The kernels up to third order served to characterize, with reasonable accuracy, the input-output properties of the synapse. A mathematical model of the synapse was also tested with a random impulse train and model predictions were compared with experimental synaptic output. Although the model proved to be even more accurate overall than the kernel characterization, there were slight but consistent errors in the model's performance. These were also reflected as differences between model and experimental kernels. It is concluded that a random train analysis provides a comprehensive and objective comparison between model and experiment and automatically provides an arbitrarily accurate characterization of a system's input-output behavior, even in complicated cases where other approaches are impractical.
为了表征龙虾心脏神经节中单一易化突触的突触传递,开发并应用了一种用于离散输入系统的新型非线性系统分析技术。根据突触后细胞对随机出现的突触前神经冲动的反应输出,计算出一组类似于维纳核的核。高达三阶的核能够以合理的精度表征突触的输入-输出特性。还用随机脉冲序列测试了突触的数学模型,并将模型预测结果与实验性突触输出进行了比较。尽管该模型总体上比核表征更为准确,但模型性能仍存在微小但一致的误差。这些误差也反映在模型核与实验核之间的差异上。得出的结论是,随机序列分析为模型与实验之间提供了全面且客观的比较,并且即使在其他方法不实用的复杂情况下,也能自动对系统的输入-输出行为进行任意精确的表征。