Title :
Mixtures of independent component analyzers for microarousal detection
Author :
Safont, Gonzalo ; Salazar, Addisson ; Vergara, Luis ; Gomez, Eva ; Villanueva, Vicente
Author_Institution :
Univ. Politec. de Valencia, Valencia, Spain
Abstract :
This paper presents a study of the application of new variants of the Sequential Independent Analysis Mixture Models (SICAMM) to the modeling and classification of electroencephalographic (EEG) signals. The real application approached was the detection of microarousals in EEG signals from sleep apnea patients. In addition, the proposed methods were tested on synthetic data with probability density changing in time in order to imitate the intrinsic nonlinearity and nonstationarity of the EEG signals. Thus, sequential dependence and sensitivity analyses with controlled simulated data are included. The SICAMM-based methods were compared with Dynamic Bayesian Networks (DBN) implementing Gaussian mixture models and static versions of the methods. We demonstrate that the proposed methods obtain the best performance in microarousal detection and their parameters adapt better for EEG signal dynamic modeling.
Keywords :
Gaussian processes; electroencephalography; feature extraction; independent component analysis; medical disorders; medical signal detection; medical signal processing; mixture models; pneumodynamics; sensitivity analysis; signal classification; signal reconstruction; sleep; EEG signal classification; EEG signal dynamic modeling; EEG signal modeling; Gaussian mixture models; SICAMM variant application; SICAMM-based methods; changing probability density; dynamic Bayesian networks; electroencephalographic signal; independent component analyzer mixtures; intrinsic EEG signal nonlinearity; intrinsic EEG signal nonstationarity; microarousal detection; microarousal parameters; sensitivity analysis; sequential dependence; sequential independent analysis mixture models; sleep apnea patients; static versions; Brain models; Data models; Electroencephalography; Hidden Markov models; Sleep; Training;
Conference_Titel :
Biomedical and Health Informatics (BHI), 2014 IEEE-EMBS International Conference on
Conference_Location :
Valencia
DOI :
10.1109/BHI.2014.6864473