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The quality of maximum likelihood estimates of ion channel rate constants.离子通道速率常数最大似然估计的质量。
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根据宏观电流波动估算离子通道动力学

Estimation of ion channel kinetics from fluctuations of macroscopic currents.

作者信息

Moffatt Luciano

机构信息

Instituto de Química Física de los Materiales, Medio Ambiente y Energía, Consejo Nacional de Investigaciones Científicas y Técnicas, Facultad de Ciencias Exactas y Naturales, Universidad de Buenos Aires, Buenos Aires, Argentina.

出版信息

Biophys J. 2007 Jul 1;93(1):74-91. doi: 10.1529/biophysj.106.101212. Epub 2007 Apr 6.

DOI:10.1529/biophysj.106.101212
PMID:17416622
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC1914441/
Abstract

For single channel recordings, the maximum likelihood estimation (MLE) of kinetic rates and conductance is well established. A direct extrapolation of this method to macroscopic currents is computationally prohibitive: it scales as a power of the number of channels. An approximated MLE that ignored the local time correlation of the data has been shown to provide estimates of the kinetic parameters. In this article, an improved approximated MLE that takes into account the local time correlation is proposed. This method estimates the channel kinetics using both the time course and the random fluctuations of the macroscopic current generated by a homogeneous population of ion channels under white noise. It allows arbitrary kinetic models and stimulation protocols. The application of the proposed algorithm to simulated data from a simple three-state model on nonstationary conditions showed reliable estimates of all the kinetic constants, the conductance and the number of channels, and reliable values for the standard error of those estimates. Compared to the previous approximated MLE, it reduces by a factor of 10 the amount of data needed to secure a given accuracy and it can even determine the kinetic rates in macroscopic stationary conditions.

摘要

对于单通道记录,动力学速率和电导的最大似然估计(MLE)已经得到了很好的确立。将此方法直接外推到宏观电流在计算上是 prohibitive 的:它随着通道数量的幂次增长。一种忽略数据局部时间相关性的近似 MLE 已被证明能提供动力学参数的估计值。在本文中,提出了一种考虑局部时间相关性的改进近似 MLE。该方法利用由白噪声下离子通道均匀群体产生的宏观电流的时间进程和随机波动来估计通道动力学。它允许使用任意的动力学模型和刺激方案。将所提出的算法应用于非平稳条件下简单三态模型的模拟数据,结果表明所有动力学常数、电导和通道数量都能得到可靠估计,并且这些估计值的标准误差也有可靠的值。与之前的近似 MLE 相比,它将获得给定精度所需的数据量减少了 10 倍,甚至可以在宏观稳态条件下确定动力学速率。