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基于隐马尔可夫模型的数字信号处理技术对单通道电流的表征

Characterization of single channel currents using digital signal processing techniques based on Hidden Markov Models.

作者信息

Chung S H, Moore J B, Xia L G, Premkumar L S, Gage P W

机构信息

Research School of Biological Sciences, Australian National University, Canberra.

出版信息

Philos Trans R Soc Lond B Biol Sci. 1990 Sep 29;329(1254):265-85. doi: 10.1098/rstb.1990.0170.

Abstract

Techniques for extracting small, single channel ion currents from background noise are described and tested. It is assumed that single channel currents are generated by a first-order, finite-state, discrete-time, Markov process to which is added 'white' background noise from the recording apparatus (electrode, amplifiers, etc). Given the observations and the statistics of the background noise, the techniques described here yield a posteriori estimates of the most likely signal statistics, including the Markov model state transition probabilities, duration (open- and closed-time) probabilities, histograms, signal levels, and the most likely state sequence. Using variations of several algorithms previously developed for solving digital estimation problems, we have demonstrated that: (1) artificial, small, first-order, finite-state, Markov model signals embedded in simulated noise can be extracted with a high degree of accuracy, (2) processing can detect signals that do not conform to a first-order Markov model but the method is less accurate when the background noise is not white, and (3) the techniques can be used to extract from the baseline noise single channel currents in neuronal membranes. Some studies have been included to test the validity of assuming a first-order Markov model for biological signals. This method can be used to obtain directly from digitized data, channel characteristics such as amplitude distributions, transition matrices and open- and closed-time durations.

摘要

本文描述并测试了从背景噪声中提取微小单通道离子电流的技术。假设单通道电流由一阶、有限状态、离散时间马尔可夫过程产生,并叠加了来自记录设备(电极、放大器等)的“白色”背景噪声。根据观测结果和背景噪声的统计特性,本文所述技术可得出最可能的信号统计量的后验估计值,包括马尔可夫模型状态转移概率、持续时间(开放时间和关闭时间)概率、直方图、信号电平以及最可能的状态序列。通过对先前开发的用于解决数字估计问题的几种算法进行改进,我们证明了:(1)嵌入模拟噪声中的人工微小一阶有限状态马尔可夫模型信号能够以高度准确性被提取;(2)该处理方法能够检测不符合一阶马尔可夫模型的信号,但当背景噪声不是白色时,该方法的准确性会降低;(3)这些技术可用于从基线噪声中提取神经元膜中的单通道电流。还纳入了一些研究来检验将生物信号假设为一阶马尔可夫模型的有效性。该方法可直接从数字化数据中获取通道特性,如幅度分布、转移矩阵以及开放和关闭时间持续时间。

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