Article ID Journal Published Year Pages File Type
4337203 Journal of Neuroscience Methods 2006 11 Pages PDF
Abstract

In this work we develop an approach to extracting information from neural spike trains. Using the expectation-maximization (EM) algorithm, interspike interval data from experiments and simulations are fitted by mixtures of distributions, including Gamma, inverse Gaussian, log-normal, and the distribution of the interspike intervals of the leaky integrate-and-fire model. In terms of the Kolmogorov–Smirnov test for goodness-of-fit, our approach is proved successful (P > 0.05) in fitting benchmark data for which a classical parametric approach has been shown to fail before. In addition, we present a novel method to fit mixture models to censored data, and discuss two examples of the application of such a method, which correspond to the case of multiple-trial and multielectrode array data. A MATLAB implementation of the algorithm is available for download from http://www.informatics.sussex.ac.uk/users/er28/em/.

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