Literature DB >> 23076101

Reliable evaluation of the quantal determinants of synaptic efficacy using Bayesian analysis.

G S Bhumbra1, M Beato.   

Abstract

Communication between neurones in the central nervous system depends on synaptic transmission. The efficacy of synapses is determined by pre- and postsynaptic factors that can be characterized using quantal parameters such as the probability of neurotransmitter release, number of release sites, and quantal size. Existing methods of estimating the quantal parameters based on multiple probability fluctuation analysis (MPFA) are limited by their requirement for long recordings to acquire substantial data sets. We therefore devised an algorithm, termed Bayesian Quantal Analysis (BQA), that can yield accurate estimates of the quantal parameters from data sets of as small a size as 60 observations for each of only 2 conditions of release probability. Computer simulations are used to compare its performance in accuracy with that of MPFA, while varying the number of observations and the simulated range in release probability. We challenge BQA with realistic complexities characteristic of complex synapses, such as increases in the intra- or intersite variances, and heterogeneity in release probabilities. Finally, we validate the method using experimental data obtained from electrophysiological recordings to show that the effect of an antagonist on postsynaptic receptors is correctly characterized by BQA by a specific reduction in the estimates of quantal size. Since BQA routinely yields reliable estimates of the quantal parameters from small data sets, it is ideally suited to identify the locus of synaptic plasticity for experiments in which repeated manipulations of the recording environment are unfeasible.

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Year:  2012        PMID: 23076101      PMCID: PMC3574980          DOI: 10.1152/jn.00528.2012

Source DB:  PubMed          Journal:  J Neurophysiol        ISSN: 0022-3077            Impact factor:   2.714


  46 in total

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6.  Unitary conductance changes at teleost Mauthner cell glycinergic synapses: a voltage-clamp and pharmacologic analysis.

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Journal:  J Neurophysiol       Date:  1988-12       Impact factor: 2.714

7.  Transmission at a central inhibitory synapse. II. Quantal description of release, with a physical correlate for binomial n.

Authors:  H Korn; A Mallet; A Triller; D S Faber
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8.  Fluctuating responses at a central synapse: n of binomial fit predicts number of stained presynaptic boutons.

Authors:  H Korn; A Triller; A Mallet; D S Faber
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9.  Quantal analysis of inhibitory synaptic transmission in the dentate gyrus of rat hippocampal slices: a patch-clamp study.

Authors:  F A Edwards; A Konnerth; B Sakmann
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Authors:  R A Silver; A Momiyama; S G Cull-Candy
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  13 in total

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Review 6.  Functional consequences of pre- and postsynaptic expression of synaptic plasticity.

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Review 7.  Model-Based Inference of Synaptic Transmission.

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8.  Extracting quantal properties of transmission at central synapses.

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9.  Quantifying Repetitive Transmission at Chemical Synapses: A Generative-Model Approach.

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10.  Probabilistic inference of short-term synaptic plasticity in neocortical microcircuits.

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