0000000000470753

AUTHOR

Vince D. Calhoun

0000-0001-9058-0747

showing 10 related works from this author

Comparison of Functional Network Connectivity and Granger Causality for Resting State fMRI Data

2017

Functional network connectivity (FNC) and Granger causality have been widely used to identify functional and effective connectivity for resting functional magnetic resonance imaging (fMRI) data. However, the relationship between these two approaches is still unclear, making it difficult to compare results. In this study, we investigate the relationship by constraining the FNC lags and the causality coherences for analyzing resting state fMRI data. The two techniques were applied respectively to examine the connectivity within default mode network related components extracted by group independent component analysis. The results show that FNC and Granger causality provide complementary result…

Resting state fMRImedicine.diagnostic_testComputer sciencebusiness.industryPattern recognitionCausality030227 psychiatryCausality (physics)Functional networks03 medical and health sciences0302 clinical medicineGranger causalitymedicineArtificial intelligencebusinessFunctional magnetic resonance imaging030217 neurology & neurosurgeryDefault mode network
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ICA of full complex-valued fMRI data using phase information of spatial maps.

2015

Background ICA of complex-valued fMRI data is challenging because of the ambiguous and noisy nature of the phase. A typical solution is to remove noisy regions from fMRI data prior to ICA. However, it may be more optimal to carry out ICA of full complex-valued fMRI data, since any filtering or voxel-based processing may disrupt information that can be useful to ICA. New method We enable ICA of the full complex-valued fMRI data by utilizing phase information of estimated spatial maps (SMs). The SM phases are first adjusted to properly represent spatial phase changes of all voxels based on estimated time courses (TCs), and then these are used to segment the voxels into BOLD-related and unwant…

Spatial map phaseAdultComputer scienceIndependent component analysis (ICA)Neuroscience(all)computer.software_genreta3112030218 nuclear medicine & medical imaging03 medical and health sciences0302 clinical medicineRobustness (computer science)VoxelImage Processing Computer-AssistedHumansComputer visionInfomaxPhase de-ambiguityta217ta113business.industryGeneral NeuroscienceComplex valuedBrainPattern recognitionMaximizationPhase positioningMagnetic Resonance ImagingComplex-valued fMRI dataPhase maskingSpatial mapsArtificial intelligencebusinesscomputer030217 neurology & neurosurgeryPsychomotor PerformanceJournal of neuroscience methods
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Questions and controversies in the study of time-varying functional connectivity in resting fMRI.

2020

The brain is a complex, multiscale dynamical system composed of many interacting regions. Knowledge of the spatiotemporal organization of these interactions is critical for establishing a solid understanding of the brain’s functional architecture and the relationship between neural dynamics and cognition in health and disease. The possibility of studying these dynamics through careful analysis of neuroimaging data has catalyzed substantial interest in methods that estimate time-resolved fluctuations in functional connectivity (often referred to as “dynamic” or time-varying functional connectivity; TVFC). At the same time, debates have emerged regarding the application of TVFC analyses to re…

confound regression strategiesComputer scienceBrain networksRest1.1 Normal biological development and functioningdynamic connectivityReviewDynamical systemlcsh:RC321-57103 medical and health sciencesFunctional connectivity0302 clinical medicineArtificial IntelligenceUnderpinning researchBehavioral and Social Sciencestate fmricognitive controlmotion correctionReview Articleslcsh:Neurosciences. Biological psychiatry. Neuropsychiatry030304 developmental biologyindividual-differencesRest (physics)0303 health sciencesApplied MathematicsGeneral NeuroscienceResting fmriFunctional connectivitytest-retest reliabilityfMRINeurosciencesComputer Science ApplicationsMental HealthNeurologicalwhole-brainNeurosciencedefault mode030217 neurology & neurosurgeryBrain dynamics
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Shift-Invariant Canonical Polyadic Decomposition of Complex-Valued Multi-Subject fMRI Data with a Phase Sparsity Constraint

2020

Canonical polyadic decomposition (CPD) of multi-subject complex-valued fMRI data can be used to provide spatially and temporally shared components among groups with both magnitude and phase information. However, the CPD model is not well formulated due to the large subject variability in the spatial and temporal modalities, as well as the high noise level in complex-valued fMRI data. Considering that the shift-invariant CPD can model temporal variability across subjects, we propose to further impose a phase sparsity constraint on the shared spatial maps to denoise the complex-valued components and to model the inter-subject spatial variability as well. More precisely, subject-specific time …

complex-valued fMRI dataComputer sciencespatiotemporal constraintscomputer.software_genrecanonical polyadic decomposition (CPD)030218 nuclear medicine & medical imaging03 medical and health sciences0302 clinical medicinetoiminnallinen magneettikuvausVoxelshift-invariantImage Processing Computer-AssistedmedicineHumansTensorElectrical and Electronic EngineeringInvariant (mathematics)Radiological and Ultrasound Technologymedicine.diagnostic_testsignaalinkäsittelyBrainComplex valuedsignaalianalyysiSignal Processing Computer-Assistedsource phase sparsityMagnetic Resonance ImagingComputer Science ApplicationsNorm (mathematics)Frequency domainSpatial variabilityFunctional magnetic resonance imagingAlgorithmcomputerAlgorithmsSoftware
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Classification of Schizophrenia Patients and Healthy Controls Using ICA of Complex-Valued fMRI Data and Convolutional Neural Networks

2019

Deep learning has contributed greatly to functional magnetic resonance imaging (fMRI) analysis, however, spatial maps derived from fMRI data by independent component analysis (ICA), as promising biomarkers, have rarely been directly used to perform individualized diagnosis. As such, this study proposes a novel framework combining ICA and convolutional neural network (CNN) for classifying schizophrenia patients (SZs) and healthy controls (HCs). ICA is first used to obtain components of interest which have been previously implicated in schizophrenia. Functionally informative slices of these components are then selected and labelled. CNN is finally employed to learn hierarchical diagnostic fea…

medicine.diagnostic_testbusiness.industryComputer scienceDeep learningSchizophrenia (object-oriented programming)05 social sciencesPattern recognitionmedicine.diseaseAuditory cortexConvolutional neural networkIndependent component analysis050105 experimental psychology03 medical and health sciences0302 clinical medicineSchizophreniamedicine0501 psychology and cognitive sciencesArtificial intelligencebusinessFunctional magnetic resonance imaging030217 neurology & neurosurgeryDefault mode networkDiagnosis of schizophrenia
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Adaptive independent vector analysis for multi-subject complex-valued fMRI data.

2017

Abstract Background Complex-valued fMRI data can provide additional insights beyond magnitude-only data. However, independent vector analysis (IVA), which has exhibited great potential for group analysis of magnitude-only fMRI data, has rarely been applied to complex-valued fMRI data. The main challenges in this application include the extremely noisy nature and large variability of the source component vector (SCV) distribution. New method To address these challenges, we propose an adaptive fixed-point IVA algorithm for analyzing multiple-subject complex-valued fMRI data. We exploited a multivariate generalized Gaussian distribution (MGGD)- based nonlinear function to match varying SCV dis…

Multivariate statisticscomplex-valued fMRI dataComputer scienceSpeech recognitionRestModels Neurological02 engineering and technologyMotor Activityta3112Shape parameterFingers03 medical and health sciencesMatrix (mathematics)0302 clinical medicine0202 electrical engineering electronic engineering information engineeringHumansComputer SimulationGeneralized normal distributionDefault mode networkta217ta113shape parametersubspace de-noisingBrain MappingLikelihood Functionsbusiness.industryGeneral NeuroscienceBrain020206 networking & telecommunicationsPattern recognitionMagnetic Resonance ImagingNonlinear systemNonlinear Dynamicsindependent vector analysis (IVA)MGGDMultivariate AnalysisAuditory PerceptionnoncircularityArtificial intelligenceNoise (video)businessArtifactspost-IVA phase de-noising030217 neurology & neurosurgerySubspace topologyAlgorithmsJournal of neuroscience methods
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Low-Rank Tucker-2 Model for Multi-Subject fMRI Data Decomposition with Spatial Sparsity Constraint

2022

Tucker decomposition can provide an intuitive summary to understand brain function by decomposing multi-subject fMRI data into a core tensor and multiple factor matrices, and was mostly used to extract functional connectivity patterns across time/subjects using orthogonality constraints. However, these algorithms are unsuitable for extracting common spatial and temporal patterns across subjects due to distinct characteristics such as high-level noise. Motivated by a successful application of Tucker decomposition to image denoising and the intrinsic sparsity of spatial activations in fMRI, we propose a low-rank Tucker-2 model with spatial sparsity constraint to analyze multi-subject fMRI dat…

Rank (linear algebra)Computer scienceMatrix normlow-rankmatrix decompositionsymbols.namesaketoiminnallinen magneettikuvausOrthogonalitytensorsTensor (intrinsic definition)Kronecker deltaTucker decompositionHumansElectrical and Electronic Engineeringcore tensorsparsity constraintRadiological and Ultrasound Technologybusiness.industrysignaalinkäsittelyfeature extractionsparse matricesBrainPattern recognitionbrain modelingMagnetic Resonance Imagingfunctional magnetic resonance imagingComputer Science ApplicationsConstraint (information theory)data modelssymbolsNoise (video)Artificial intelligencebusinessmulti-subject fMRI dataSoftwareAlgorithmsTucker decomposition
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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
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Multi-subject fMRI analysis via combined independent component analysis and shift-invariant canonical polyadic decomposition

2014

Canonical polyadic decomposition (CPD) may face a local optimal problem when analyzing multi-subject fMRI data with inter-subject variability. Beckmann and Smith proposed a tensor PICA approach that incorporated an independence constraint to the spatial modality by combining CPD with ICA, and alleviated the problem of inter-subject spatial map (SM) variability.This study extends tensor PICA to incorporate additional inter-subject time course (TC) variability and to connect CPD and ICA in a new way. Assuming multiple subjects share common TCs but with different time delays, we accommodate subject-dependent TC delays into the CP model based on the idea of shift-invariant CP (SCP). We use ICA …

Independent component analysis (ICA)Speech recognitionModels NeurologicalMotor ActivityNeuropsychological TestsInter-subject variabilityta3112TimeMulti-subject fMRI dataFingersHumansCanonical polyadic decomposition (CPD)Computer SimulationMotor activityInvariant (mathematics)ta217ta113Brain MappingShift-invariant CP (SCP)General NeuroscienceBrainMagnetic Resonance ImagingIndependent component analysisAuditory PerceptionTensor PICASpatial mapsPsychologyAlgorithmJournal of Neuroscience Methods
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Spatial source phase : A new feature for identifying spatial differences based on complex-valued resting-state fMRI data

2019

Spatial source phase, the phase information of spatial maps extracted from functional magnetic resonance imaging (fMRI) data by data‐driven methods such as independent component analysis (ICA), has rarely been studied. While the observed phase has been shown to convey unique brain information, the role of spatial source phase in representing the intrinsic activity of the brain is yet not clear. This study explores the spatial source phase for identifying spatial differences between patients with schizophrenia (SZs) and healthy controls (HCs) using complex‐valued resting‐state fMRI data from 82 individuals. ICA is first applied to preprocess fMRI data, and post‐ICA phase de‐ambiguity and den…

resting-state fMRI datadefault mode networktoiminnallinen magneettikuvausskitsofreniacomplex-valued fMRI dataauditory cortexspatial source phasesignaalianalyysiriippumattomien komponenttien analyysiaivotutkimus
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