Search results for "independent component analysis"

showing 10 items of 82 documents

SINGLE-TRIAL BASED INDEPENDENT COMPONENT ANALYSIS ON MISMATCH NEGATIVITY IN CHILDREN

2010

Independent component analysis (ICA) does not follow the superposition rule. This motivates us to study a negative event-related potential — mismatch negativity (MMN) estimated by the single-trial based ICA (sICA) and averaged trace based ICA (aICA), respectively. To sICA, an optimal digital filter (ODF) was used to remove low-frequency noise. As a result, this study demonstrates that the performance of the sICA+ODF and aICA could be different. Moreover, MMN under sICA+ODF fits better with the theoretical expectation, i.e., larger deviant elicits larger MMN peak amplitude.

AdolescentLearning DisabilitiesComputer Networks and CommunicationsSpeech recognitionMismatch negativityElectroencephalographyGeneral MedicineIndependent component analysisNoiseAcoustic StimulationAttention Deficit Disorder with HyperactivityEvoked Potentials AuditoryHumansSingle trialChildEvoked PotentialsDigital filterAlgorithmsMathematicsInternational Journal of Neural Systems
researchProduct

Distributed BOLD-response in association cortex vector state space predicts reaction time during selective attention.

2006

Human cortical information processing is thought to be dominated by distributed activity in vector state space (Churchland, P.S., Sejnowski, T.J., 1992. The Computational Brain. MIT Press, Cambridge.). In principle, it should be possible to quantify distributed brain activation with independent component analysis (ICA) through vector-based decomposition, i.e., through a separation of a mixture of sources. Using event-related functional magnetic resonance imaging (fMRI) during a selective attention-requiring task (visual oddball), we explored how the number of independent components within activated cortical areas is related to reaction time. Prior to ICA, the activated cortical areas were d…

AdultMaleCognitive NeuroscienceBrain mappingImaging Three-DimensionalCortex (anatomy)medicineImage Processing Computer-AssistedReaction TimeHumansAttentionPrefrontal cortexDominance CerebralOddball paradigmCerebral CortexNeuronsBrain MappingPrincipal Component AnalysisBasis (linear algebra)medicine.diagnostic_testImage EnhancementIndependent component analysisEvent-Related Potentials P300Magnetic Resonance ImagingOxygenmedicine.anatomical_structureNeurologyPattern Recognition VisualCerebral cortexLinear ModelsFemaleNerve NetPsychologyFunctional magnetic resonance imagingNeuroscienceNeuroImage
researchProduct

Increased amygdala and parahippocampal gyrus activation in schizophrenic patients with auditory hallucinations: An fMRI study using independent compo…

2010

Objective: Hallucinations in patients with schizophrenia have strong emotional connotations. Functional neuroimaging techniques have been widely used to study brain activity in patients with schizophrenia with hallucinations or emotional impairments. However, few of these Studies have investigated the association between hallucinations and emotional dysfunctions using an emotional auditory paradigm. Independent component analysis (ICA) is an analysis method that is especially useful for decomposing activation during complex cognitive tasks in which multiple operations occur simultaneously. Our aim in this Study is to analyze brain activation after the presentation of emotional auditory stim…

AdultMalePsychosisFACIAL EXPRESSIONSHallucinationsBrain activity and meditationDIFFERENTIAL NEURAL RESPONSENEUROBIOLOGYFEARFUL FACESIndependent component analysisAuditory hallucinationsAmygdalaSeverity of Illness IndexPSYCHOSISFunctional neuroimagingBrief Psychiatric Rating ScalemedicineEMOTIONHumansBRAINBiological PsychiatryAuditory hallucinationSALIENCEmedicine.diagnostic_testABNORMALITIESfMRIRECOGNITIONmedicine.diseaseAmygdalaMagnetic Resonance ImagingAuditory emotional paradigmPsychiatry and Mental healthmedicine.anatomical_structureSchizophreniaParahippocampal Gyrusmedicine.symptomPsychologyFunctional magnetic resonance imagingBrain activityNeuroscienceParahippocampal gyrus
researchProduct

Dimension reduction: additional benefit of an optimal filter for independent component analysis to extract event-related potentials.

2011

The present study addresses benefits of a linear optimal filter (OF) for independent component analysis (ICA) in extracting brain event-related potentials (ERPs). A filter such as the digital filter is usually considered as a denoising tool. Actually, in filtering ERP recordings by an OF, the ERP' topography should not be changed by the filter, and the output should also be able to be modeled by the linear transformation. Moreover, an OF designed for a specific ERP source or component may remove noise, as well as reduce the overlap of sources and even reject some non-targeted sources in the ERP recordings. The OF can thus accomplish both the denoising and dimension reduction (reducing the n…

AdultMaleUnderdetermined systemSpeech recognitionNoise reductionYoung AdultHumansChildEvoked Potentialsta515ta217Mathematicsta113Principal Component Analysisbusiness.industryGeneral NeuroscienceDimensionality reductionPattern recognitionElectroencephalographyFilter (signal processing)Independent component analysisNoisePrincipal component analysisLinear ModelsFemaleArtificial intelligencebusinessDigital filterPhotic StimulationJournal of neuroscience methods
researchProduct

Model order effects on ICA of resting-state complex-valued fMRI data : application to schizophrenia

2018

Abstract Background Component splitting at higher model orders is a widely accepted finding for independent component analysis (ICA) of functional magnetic resonance imaging (fMRI) data. However, our recent study found that intact components occurred with subcomponents at higher model orders. New method This study investigated model order effects on ICA of resting-state complex-valued fMRI data from 82 subjects, which included 40 healthy controls (HCs) and 42 schizophrenia patients. In addition, we explored underlying causes for distinct component splitting between complex-valued data and magnitude-only data by examining model order effects on ICA of phase fMRI data. A best run selection me…

AdultMalecomplex-valued fMRI dataSchizophrenia (object-oriented programming)RestModels Neurologicalphase datata3112050105 experimental psychology03 medical and health sciences0302 clinical medicinetoiminnallinen magneettikuvausComponent (UML)medicineImage Processing Computer-AssistedHumans0501 psychology and cognitive sciencesDefault mode networkMathematicsta113model orderBrain MappingPrincipal Component AnalysisskitsofreniaResting state fMRImedicine.diagnostic_testModel orderbusiness.industryGeneral Neuroscience05 social sciencesBrainsignaalianalyysiPattern recognitionData applicationcomponent splittingIndependent component analysisMagnetic Resonance ImagingOxygenSchizophreniaFemaleArtificial intelligencebusinessFunctional magnetic resonance imagingindependent component analysis (ICA)030217 neurology & neurosurgery
researchProduct

Key issues in decomposing fMRI during naturalistic and continuous music experience with independent component analysis

2014

Background: Independent component analysis (ICA) has been often used to decompose fMRI data mostly for the resting-state, block and event-related designs due to its outstanding advantage. For fMRI data during free-listening experiences, only a few exploratory studies applied ICA.New method: For processing the fMRI data elicited by 512-s modern tango, a FFT based band-pass filter was used to further pre-process the fMRI data to remove sources of no interest and noise. Then, a fast model order selection method was applied to estimate the number of sources. Next, both individual ICA and group ICA were performed. Subsequently, ICA components whose temporal courses were significantly correlated …

AdultMalereal-world experiencesComputer scienceSpeech recognitionFast Fourier transformDiffusion mapTIME-SERIESfast model order selectionORDER SELECTION050105 experimental psychologyYoung AdultNUMBER03 medical and health sciences0302 clinical medicineImage Processing Computer-AssistedDiffusion mapHumans0501 psychology and cognitive sciencesICABlock (data storage)ta113Brain MappingPrincipal Component AnalysisGeneral NeurosciencefMRI05 social sciencesBrainFilter (signal processing)Magnetic Resonance ImagingIndependent component analysisSpectral clusteringOxygenMODELDIFFUSION MAPSAcoustic StimulationFFT filterta6131Auditory PerceptionFemaleHUMAN BRAIN ACTIVITYNoise (video)DYNAMICAL-SYSTEMSDigital filterMusic030217 neurology & neurosurgeryMRIJournal of Neuroscience Methods
researchProduct

Testing different ICA algorithms and connectivity analyses on MS patients.

2015

Multiple sclerosis (MS) is a progressive neurological disorder that affects the central nervous system. Functional magnetic resonance imaging (fMRI) has been employed to track the course and disease progression in patients with MS. The two main aims of this study were to apply in a data-driven approach the independent component analysis (ICA) in the spatial domain to depict the active sources and to look at the effective connectivity between the identified spatial sources. Several ICA algorithms have been proposed for fMRI data analysis. In this study, we aimed to test two well characterized algorithms, namely, the fast ICA and the complex infomax algorithms, followed by two effective conne…

Brain MappingMultiple Sclerosismedicine.diagnostic_testComputer scienceMultiple sclerosisCentral nervous systemBrainMagnetic resonance imagingCoherence (statistics)Neurological disordermedicine.diseaseIndependent component analysisBrain mappingMagnetic Resonance Imagingmedicine.anatomical_structureRobustness (computer science)medicineHumansInfomaxFunctional magnetic resonance imagingAlgorithmDefault mode networkAlgorithmsAnnual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual International Conference
researchProduct

On the Computation of Symmetrized M-Estimators of Scatter

2016

This paper focuses on the computational aspects of symmetrized Mestimators of scatter, i.e. the multivariate M-estimators of scatter computed on the pairwise differences of the data. Such estimators do not require a location estimate, and more importantly, they possess the important block and joint independence properties. These properties are needed, for example, when solving the independent component analysis problem. Classical and recently developed algorithms for computing the M-estimators and the symmetrized M-estimators are discussed. The effect of parallelization is considered as well as new computational approach based on using only a subset of pairwise differences. Efficiencies and…

Computer scienceComputation05 social sciencesEstimatorMultivariate normal distributionM-estimators01 natural sciencesIndependent component analysisscatter010104 statistics & probabilityScatter matrix0502 economics and businessPairwise comparison0101 mathematicsAlgorithmIndependence (probability theory)050205 econometrics Block (data storage)
researchProduct

Atrial activity extraction for atrial fibrillation analysis using blind source separation.

2004

This contribution addresses the extraction of atrial activity (AA) from real electrocardiogram (ECG) recordings of atrial fibrillation (AF). We show the appropriateness of independent component analysis (ICA) to tackle this biomedical challenge when regarded as a blind source separation (BSS) problem. ICA is a statistical tool able to reconstruct the unobservable independent sources of bioelectric activity which generate, through instantaneous linear mixing, a measurable set of signals. The three key hypothesis that make ICA applicable in the present scenario are discussed and validated: 1) AA and ventricular activity (VA) are generated by sources of independent bioelectric activity; 2) AA …

Computer scienceSpeech recognitionHeart VentriclesBiomedical EngineeringSignalBlind signal separationSensitivity and SpecificityElectrocardiographyRobustness (computer science)Heart Conduction SystemAtrial FibrillationmedicineHumansDiagnosis Computer-AssistedHeart AtriaPrincipal Component Analysismedicine.diagnostic_testBody Surface Potential MappingContrast (statistics)Reproducibility of ResultsAtrial fibrillationmedicine.diseaseIndependent component analysisKurtosisElectrocardiographyAlgorithmsIEEE transactions on bio-medical engineering
researchProduct

ERP qualification exploiting waveform, spectral and time-frequency infomax

2008

The present contribution briefly introduces an event related potential (ERP) detector. The specified detector includes three kinds of features of ERP. They are the ERP waveform feature, ERP spectral feature and ERP time-frequency feature respectively. According to these characteristics, two parameters are defined to reflect the timing feature of ERP. The mismatch negativity (MMN) is taken as the example to design an exact qualification detector. The experiment validates that the computer can automatically detect the raw trace to reflect the quality of the dataset, qualify the filtered trace to test whether the artifacts have been filtered out, and select the ERP-like component to reject art…

Computer sciencebusiness.industrySpeech recognitionDetectorMismatch negativityPattern recognitionIndependent component analysisTime–frequency analysisFeature (computer vision)WaveformArtificial intelligenceInfomaxbusinessTRACE (psycholinguistics)2008 3rd International Symposium on Communications, Control and Signal Processing
researchProduct