| Literature DB >> 28794199 |
Ryohei Shibue1, Fumiyasu Komaki2,3.
Abstract
Neural decoding is a framework for reconstructing external stimuli from spike trains recorded by various neural recordings. Kloosterman et al. proposed a new decoding method using marked point processes (Kloosterman F, Layton SP, Chen Z, Wilson MA. J Neurophysiol 111: 217-227, 2014). This method does not require spike sorting and thereby improves decoding accuracy dramatically. In this method, they used kernel density estimation to estimate intensity functions of marked point processes. However, the use of kernel density estimation causes problems such as low decoding accuracy and high computational costs. To overcome these problems, we propose a new decoding method using infinite mixture models to estimate intensity. The proposed method improves decoding performance in terms of accuracy and computational speed. We apply the proposed method to simulation and experimental data to verify its performance.NEW & NOTEWORTHY We propose a new neural decoding method using infinite mixture models and nonparametric Bayesian statistics. The proposed method improves decoding performance in terms of accuracy and computation speed. We have successfully applied the proposed method to position decoding from spike trains recorded in a rat hippocampus.Entities:
Keywords: marked point processes; nonparametric Bayes statistics; place cells; spike sorting; state-space models
Year: 2017 PMID: 28794199 PMCID: PMC5686235 DOI: 10.1152/jn.00818.2016
Source DB: PubMed Journal: J Neurophysiol ISSN: 0022-3077 Impact factor: 2.714