Hartveit Espen, Veruki Margaret Lin
University of Bergen, Department of Biomedicine, Jonas Lies vei 91, N-5009 Bergen, Norway.
J Physiol. 2006 Aug 1;574(Pt 3):751-85. doi: 10.1113/jphysiol.2006.111856. Epub 2006 May 25.
The properties of neurotransmitter receptor channels are important for determining synaptic transmission in the nervous system. The presence of quantal variability complicates the use of conventional non-stationary noise analysis for determining the unitary conductance and number of channels involved in synaptic currents. Peak-scaled non-stationary noise analysis has been used to compensate for quantal variability, but there is evidence that the resulting variance versus mean relationships can be transformed from parabolic to skewed. We have used computer modelling based on experimentally derived kinetic schemes to investigate such relationships and demonstrate that their shape is a consequence of the temporal structure of the fluctuations during synaptic responses. Covariance analysis showed that peak-scaling generates a skewed relationship when the covariance function decays rapidly (compared to the average response waveform), corresponding to a low correlation between fluctuations at the peak and in neighbouring regions of the decay phase. A parabolic relationship is obtained when the covariance function decays more slowly, corresponding to a higher correlation. Irrespective of a skewed or parabolic relationship, we demonstrate that the unitary current can be reliably estimated, with a coefficient of variation (CV) as low as 0.05 and bias as low as +/-2% under ideal conditions. While the shape of the variance versus mean curve after peak-scaled non-stationary noise analysis is ultimately a consequence of the kinetic properties of the channels, inadequate alignment of individual waveforms can transform the relationship from parabolic to skewed, and low-pass filtering can transform the relationship from skewed to parabolic. These findings have important implications for analysis of experimental data.
神经递质受体通道的特性对于确定神经系统中的突触传递非常重要。量子变异性的存在使得使用传统的非平稳噪声分析来确定参与突触电流的单通道电导和通道数量变得复杂。峰值缩放非平稳噪声分析已被用于补偿量子变异性,但有证据表明,由此产生的方差与均值关系可以从抛物线形转变为偏态。我们基于实验得出的动力学方案使用计算机建模来研究这种关系,并证明它们的形状是突触反应期间波动的时间结构的结果。协方差分析表明,当协方差函数快速衰减(与平均响应波形相比)时,峰值缩放会产生偏态关系,这对应于峰值处的波动与衰减阶段相邻区域的波动之间的低相关性。当协方差函数衰减较慢时,会得到抛物线形关系,这对应于较高的相关性。无论关系是偏态还是抛物线形,我们都证明在理想条件下,单通道电流可以可靠地估计,变异系数(CV)低至0.05,偏差低至±2%。虽然峰值缩放非平稳噪声分析后的方差与均值曲线的形状最终是通道动力学特性的结果,但单个波形的对齐不足会将关系从抛物线形转变为偏态,而低通滤波会将关系从偏态转变为抛物线形。这些发现对实验数据分析具有重要意义。