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Journal ArticleDOI

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

TLDR
In this article, the authors used a first-order, finite-state, discrete-time Markov process to extract small, single channel ion currents from background noise, which can be used to detect signals that do not conform to a firstorder Markov model, but the method is less accurate when the background noise is not white.
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.

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Citations
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Journal ArticleDOI

Hidden Markov processes

TL;DR: An overview of statistical and information-theoretic aspects of hidden Markov processes (HMPs) is presented and consistency and asymptotic normality of the maximum-likelihood parameter estimator were proved under some mild conditions.
Journal ArticleDOI

Estimating single-channel kinetic parameters from idealized patch-clamp data containing missed events.

TL;DR: A maximal likelihood algorithm for estimating single-channel kinetic parameters from idealized patch-clamp data using a variable metric optimizer with analytical derivatives for rapidly maximizing the likelihood.
Journal ArticleDOI

Single-Channel Recording

TL;DR: This unit provides detailed descriptions for the steps of patch excision, data acquisition, and data analysis, and elaborates upon the relevant issues discussed in other units from Chapter 3.
Journal ArticleDOI

Mutation of the acetylcholine receptor α subunit causes a slow-channel myasthenic syndrome by enhancing agonist binding affinity

TL;DR: In five members of a family and another unrelated person affected by a slow-channel congenital myasthenic syndrome, molecular genetic analysis of acetylcholine receptor (AChR) subunit genes revealed a heterozygous G to A mutation at nucleotide 457 of the alpha subunit, converting codon 153 from glycine to serine (alpha G153S).
Journal ArticleDOI

Restoration of Single-Channel Currents Using the Segmental k-Means Method Based on Hidden Markov Modeling

TL;DR: A statistical procedure based on hidden Markov modeling and k-means segmentation for patch-clamp recording that allows for a low signal/noise ratio, and consequently a relatively high bandwidth.
References
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Journal ArticleDOI

A tutorial on hidden Markov models and selected applications in speech recognition

TL;DR: In this paper, the authors provide an overview of the basic theory of hidden Markov models (HMMs) as originated by L.E. Baum and T. Petrie (1966) and give practical details on methods of implementation of the theory along with a description of selected applications of HMMs to distinct problems in speech recognition.
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The viterbi algorithm

TL;DR: This paper gives a tutorial exposition of the Viterbi algorithm and of how it is implemented and analyzed, and increasing use of the algorithm in a widening variety of areas is foreseen.
Journal ArticleDOI

An introduction to hidden Markov models

TL;DR: The purpose of this tutorial paper is to give an introduction to the theory of Markov models, and to illustrate how they have been applied to problems in speech recognition.