about
The Functional Segregation and Integration Model: Mixture Model Representations of Consistent and Variable Group-Level Connectivity in fMRICluster analysis of activity-time series in motor learningFinding related functional neuroimaging volumesQuantifying functional connectivity in multi-subject fMRI data using component modelsA Hitchhiker's Guide to Functional Magnetic Resonance ImagingThe dynamic functional connectome: State-of-the-art and perspectivesA Supervoxel-Based Method for Groupwise Whole Brain Parcellation with Resting-State fMRI DataUnsupervised segmentation of task activated regions in fMRILocation of mammograms ROI's and reduction of false-positiveLearning Behavioral Fingerprints From Netflows Using Timed AutomataSupport vector machine classification of arterial volume-weighted arterial spin tagging imagesAnalyzing big time series data in solar engineering using features and PCAA multi-act sequential game-based multi-objective clustering approach for categorical dataMerging Student’s- t and Rayleigh distributions regression mixture model for clustering time-seriesTowards Tunable Consensus Clustering for Studying Functional Brain Connectivity During Affective Processing.Functional connectivity-based parcellation of amygdala using self-organized mapping: a data driven approachSpatial Patterns and Functional Profiles for Discovering Structure in fMRI DataFinding common task-related regions in fMRI data from multiple subjects by periodogram clustering and clustering ensemble.Statistical approaches to functional neuroimaging dataData-driven clustering reveals a fundamental subdivision of the human cortex into two global systemsContribution of exploratory methods to the investigation of extended large-scale brain networks in functional MRI: methodologies, results, and challengesUnsupervised spatiotemporal fMRI data analysis using support vector machines.Cluster analysis of time-dependent crystallographic data: Direct identification of time-independent structural intermediates.Analysis of activity in fMRI data using affinity propagation clustering.Feature-space clustering for fMRI meta-analysisSearch for patterns of functional specificity in the brain: a nonparametric hierarchical Bayesian model for group fMRI dataA neural network approach to fMRI binocular visual rivalry task analysis.Brain Imaging AnalysisUnsupervised spatiotemporal analysis of fMRI data using graph-based visualizations of self-organizing maps.Evaluating Functional Autocorrelation within Spatially Distributed Neural Processing Networks.Patterns of brain reorganization subsequent to left fusiform damage: fMRI evidence from visual processing of words and pseudowords, faces and objects.Longitudinal fMRI analysis: A review of methodsCombining self-organizing mapping and supervised affinity propagation clustering approach to investigate functional brain networks involved in motor imagery and execution with fMRI measurements.Infinite von Mises–Fisher Mixture Modeling of Whole Brain fMRI DataPractice-related changes in neural activation patterns investigated via wavelet-based clustering analysisMeasuring relative timings of brain activities using fMRIDissociating functional brain networks by decoding the between-subject variability.Gaze response to dyadic bids at 2 years related to outcomes at 3 years in autism spectrum disorders: a subtyping analysis.Connectome-scale functional intrinsic connectivity networks in macaques.Functional brain segmentation using inter-subject correlation in fMRI.
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description
1999 nî lūn-bûn
@nan
1999 թուականի Մարտին հրատարակուած գիտական յօդուած
@hyw
1999 թվականի մարտին հրատարակված գիտական հոդված
@hy
1999年の論文
@ja
1999年論文
@yue
1999年論文
@zh-hant
1999年論文
@zh-hk
1999年論文
@zh-mo
1999年論文
@zh-tw
1999年论文
@wuu
name
On clustering fMRI time series
@ast
On clustering fMRI time series
@da
On clustering fMRI time series
@de
On clustering fMRI time series
@en
On clustering fMRI time series
@en-gb
On clustering fMRI time series
@fo
On clustering fMRI time series
@fr
On clustering fMRI time series
@is
On clustering fMRI time series
@kl
On clustering fMRI time series
@nb
type
label
On clustering fMRI time series
@ast
On clustering fMRI time series
@da
On clustering fMRI time series
@de
On clustering fMRI time series
@en
On clustering fMRI time series
@en-gb
On clustering fMRI time series
@fo
On clustering fMRI time series
@fr
On clustering fMRI time series
@is
On clustering fMRI time series
@kl
On clustering fMRI time series
@nb
prefLabel
On clustering fMRI time series
@ast
On clustering fMRI time series
@da
On clustering fMRI time series
@de
On clustering fMRI time series
@en
On clustering fMRI time series
@en-gb
On clustering fMRI time series
@fo
On clustering fMRI time series
@fr
On clustering fMRI time series
@is
On clustering fMRI time series
@kl
On clustering fMRI time series
@nb
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On clustering fMRI time series
@en
P1922
Analysis of fMRI time series i ...... ers for the individual voxels.
@en
P2284
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10.1006/NIMG.1998.0391
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8969001428483503400
P407
P577
1999-03-01T00:00:00Z