Analysis of multidimensional neural activity via CNN-UM |
| |
Authors: | Gál Viktor Grün Sonja Tetzlaff Ronald |
| |
Institution: | Analogical and Neural Computing Laboratory, Hungarian Academy of Sciences Computer and Automation Research Institute, Lágymányosi u. 13, Budapest, H-1111, Hungary. gal@sztaki.hu |
| |
Abstract: | In this paper we show that the Cellular Nonlinear Network Universal Machine (CNN-UM) is an excellent tool for analyzing time series of multidimensional binary signals. The developed algorithm is dedicated to process electrophysiological multi-neuron recordings: our aim is to find specific multidimensional activity patterns, which may reflect higher order functional cell-assemblies. The analysis consists of two parts: first, the occurrences of different patterns are counted, then the statistical significance of each occurrence frequency is calculated separately. |
| |
Keywords: | |
本文献已被 PubMed 等数据库收录! |
|