Lu Ude, Song Dong, Berger Theodore W
Department of Biomedical Engineering, University of Southern California, Los Angeles, CA 90089, USA. ulu@ usc.edu
Annu Int Conf IEEE Eng Med Biol Soc. 2008;2008:2469-72. doi: 10.1109/IEMBS.2008.4649700.
Nonlinear dynamic models were built with Volterra Lagurre kernel method to characterize the input-output properties of single hippocampal CA1 pyramidal neurons. Broadband Poisson random impulse trains with a 2 Hz mean frequency, which include the majorities of the spike patterns in behaving rats, were used to stimulate the Schaffer collaterals. Corresponding random-interval post-synaptic potential (PSP) and spike train data were recorded from the cell bodies using whole-cell recording technique and then analyzed with the nonlinear dynamic model. The model consists of two major components, i.e., a feedforward three order Volterra kernel model characterizing the transformation of presynaptic stimulations to pre-threshold PSPs, and a feedback one order Volterra kernel model capturing the spike-triggered after-potential. Results showed that the model could predict 1) the sub-threshold PSPs trace with a normalized mean square error around 10% and 2) the spikes with accuracy higher than 80%.
采用Volterra Lagurre核方法建立非线性动力学模型,以表征单个海马CA1锥体神经元的输入输出特性。使用平均频率为2Hz的宽带泊松随机脉冲序列(其包含行为大鼠中的大多数放电模式)刺激海马的Schaffer侧支。采用全细胞记录技术从细胞体记录相应的随机间隔突触后电位(PSP)和放电序列数据,然后用非线性动力学模型进行分析。该模型由两个主要部分组成,即一个前馈三阶Volterra核模型,用于表征突触前刺激到阈下PSP的转换;以及一个反馈一阶Volterra核模型,用于捕捉放电触发后电位。结果表明,该模型能够:1)以约10%的归一化均方误差预测阈下PSP轨迹;2)以高于80%的准确率预测放电。