Hierarchical Mixture Models in Neurological Transmission Analysis

Abstract Hierarchically structured mixture models are studied in the context of data analysis and inference on neural synaptic transmission characteristics in mammalian, and other, central nervous systems. Mixture structures arise due to uncertainties about the stochastic mechanisms governing the responses to electrochemical stimulation of individual neurotransmitter release sites at nerve junctions. Models attempt to capture such scientific features as the sensitivity of individual synaptic transmission sites to electrochemical stimuli and the extent of their electrochemical responses when stimulated. This is done via suitably structured classes of prior distributions for parameters describing these features. Such priors may be structured to permit assessment of currently topical scientific hypotheses about fundamental neural function. Posterior analysis is implemented via stochastic simulation. Several data analyses are described to illustrate the approach, with resulting neurophysiological insights in ...

[1]  A. F. Smith,et al.  Statistical analysis of finite mixture distributions , 1986 .

[2]  D. Kullmann,et al.  Applications of the expectation-maximization algorithm to quantal analysis of postsynaptic potentials , 1989, Journal of Neuroscience Methods.

[3]  S. MacEachern Estimating normal means with a conjugate style dirichlet process prior , 1994 .

[4]  J. Skilling,et al.  Bayesian Density Estimation , 1996 .

[5]  Michael A. West,et al.  Deconvolution of Mixtures in Analysis of Neural Synaptic Transmission , 1994 .

[6]  K. Stratford,et al.  Quantal synaptic transmission? , 1991, Nature.

[7]  B. Walmsley,et al.  Nonuniform release probabilities underlie quantal synaptic transmission at a mammalian excitatory central synapse. , 1988, Journal of neurophysiology.

[8]  L. Tierney Markov Chains for Exploring Posterior Distributions , 1994 .

[9]  M. West,et al.  Bayesian analysis of mixtures applied to post-synaptic potential fluctuations , 1993, Journal of Neuroscience Methods.

[10]  T. Ferguson A Bayesian Analysis of Some Nonparametric Problems , 1973 .

[11]  A. R. Martin,et al.  Quantal Nature of Synaptic Transmission , 1966 .

[12]  D A Turner,et al.  Excitatory synaptic site heterogeneity during paired pulse plasticity in CA1 pyramidal cells in rat hippocampus in vitro. , 1997, The Journal of physiology.

[13]  Stephen Redman,et al.  The recovery of a random variable from a noisy record with application to the study of fluctuations in synaptic potentials , 1980, Journal of Neuroscience Methods.

[14]  Adrian F. M. Smith,et al.  Sampling-Based Approaches to Calculating Marginal Densities , 1990 .

[15]  Dennis A. Turner,et al.  Data acquisition and analysis system for intracellular neuronal signals , 1990, Journal of Neuroscience Methods.

[16]  R. Nicoll,et al.  Long-term potentiation is associated with increases in quantal content and quantal amplitude , 1992, Nature.

[17]  M. Escobar,et al.  Bayesian Density Estimation and Inference Using Mixtures , 1995 .

[18]  B. Walmsley,et al.  The probabilistic nature of synaptic transmission at a mammalian excitatory central synapse , 1987, The Journal of neuroscience : the official journal of the Society for Neuroscience.

[19]  T. Teyler,et al.  Long-term potentiation. , 1987, Annual review of neuroscience.

[20]  S. Redman Quantal analysis of synaptic potentials in neurons of the central nervous system. , 1990, Physiological reviews.

[21]  Adrian F. M. Smith,et al.  Bayesian computation via the gibbs sampler and related markov chain monte carlo methods (with discus , 1993 .

[22]  Dimitri M. Kullmann,et al.  Quantal analysis using maximum entropy noise deconvolution , 1992, Journal of Neuroscience Methods.

[23]  J. Besag,et al.  Spatial Statistics and Bayesian Computation , 1993 .

[24]  D A Turner,et al.  Excitatory synaptic potentials in kainic acid-denervated rat CA1 pyramidal neurons , 1991, The Journal of neuroscience : the official journal of the Society for Neuroscience.

[25]  L. Ling,et al.  Recovering the parameters of finite mixtures of normal distributions from a noisy record: an empirical comparison of different estimating procedures , 1983, Journal of Neuroscience Methods.

[26]  Michael A. West,et al.  Assessing Mechanisms of Neural Synaptic Activity , 1993 .