Title :
Parallel ICA methods for EEG neuroimaging
Author :
Keith, Dan B. ; Hoge, Christian C. ; Frank, Robert M. ; Malony, Allen D.
Author_Institution :
Neuroinformatics Center, Oregon Univ., Eugene, OR, USA
Abstract :
HiPerSAT, a C++ library and tools, processes EEG data sets with ICA (independent component analysis) methods. HiPerSAT uses BLAS, LAPACK, MPI and OpenMP to achieve a high performance solution that exploits parallel hardware. ICA is a class of methods for analyzing a large set of data samples and extracting independent components that explain the observed data. ICA is used in EEG research for data cleaning and separation of spatiotemporal patterns that may reflect different underlying neural processes. We present two ICA implementations (FastICA and Info-max) that exploit parallelism to provide an EEG component decomposition solution of higher performance and data capacity than current MATLAB-based implementations. Experimental results and the methodology used to obtain them are presented. Integrating HiPerSAT with EEGLAB (A. Delorme and S. Makeig, 2004) is described, as well as future plans for this research.
Keywords :
C++ language; electroencephalography; independent component analysis; mathematics computing; medical image processing; neurophysiology; spatiotemporal phenomena; BLAS; C++ language; EEG neuroimaging; HiPerSAT; LAPACK; MATLAB-based implementations; MPI; OpenMP; parallel ICA methods; spatiotemporal patterns; Data mining; Electric variables measurement; Electroencephalography; Hardware; Independent component analysis; Libraries; Neuroimaging; Scalp; Sensor phenomena and characterization; Signal to noise ratio;
Conference_Titel :
Parallel and Distributed Processing Symposium, 2006. IPDPS 2006. 20th International
Print_ISBN :
1-4244-0054-6
DOI :
10.1109/IPDPS.2006.1639299