Title :
A probabilistic model of coherent spatiotemporal dynamics in neuronal data
Author :
Eghbalnia, H.R. ; Assadi, Amir ; Bahrami, Arash
Author_Institution :
Dept. of Biochem., Wisconsin Univ., Madison, WI
Abstract :
We propose a representation for analyzing a collection of time series data that is suited to the detection and representation of temporal or spatial coherence structure among the elements of the collection. Our method is principally different from any of the existing method in that it focuses on the statistical structure of the "generators" of the observed discrete data. We introduce the concept "feature dimension" and the "structure shape" and use them to parameterize the family of generators. The generators are useful for finding coherences among time series without the need for correlating a base structure to the time series data. Data of this nature is commonplace in brain imaging modalities such as fMRI, EEG, and MEG. As a proof of principle, we use the observed values of voxels\´ signal intensity in the case of fMRI to construct a system of generators for the observed values and show how our method reveals the coherent feature of the data
Keywords :
Markov processes; brain; data analysis; feature extraction; image representation; medical image processing; time series; Markov model; brain imaging; coherent spatiotemporal dynamics; data analysis; feature dimension; neuronal data; probabilistic model; spatial coherence structure; statistical structure; structure shape; temporal coherence structure; time series data; voxel signal intensity; Biochemical analysis; Biochemistry; Brain; Magnetic analysis; Mathematics; Scattering; Signal to noise ratio; Spatiotemporal phenomena; Statistical analysis; Time series analysis; Dyanmics; Markov; Non-stationary; Nonlinear; fMRI;
Conference_Titel :
Machine Learning for Signal Processing, 2005 IEEE Workshop on
Conference_Location :
Mystic, CT
Print_ISBN :
0-7803-9517-4
DOI :
10.1109/MLSP.2005.1532933