about
Optimizing real time fMRI neurofeedback for therapeutic discovery and developmentSpatiotemporal Dynamics of Cortical Representations during and after Stimulus Presentation.A Hitchhiker's Guide to Functional Magnetic Resonance ImagingProbabilistic independent component analysis for functional magnetic resonance imagingPartial least squares analysis of neuroimaging data: applications and advancesIndependent component analysis of functional MRI: what is signal and what is noise?A semi-parametric nonlinear model for event-related fMRI.Feature-based fusion of medical imaging data.Spatial mixture modeling of fMRI data.Evaluation and comparison of GLM- and CVA-based fMRI processing pipelines with Java-based fMRI processing pipeline evaluation system.Dimensionality estimation for optimal detection of functional networks in BOLD fMRI data.Feature-space clustering for fMRI meta-analysisConnectivity concordance mapping: a new tool for model-free analysis of FMRI data of the human brainCommon component classification: what can we learn from machine learning?Independent component analysis of functional networks for response inhibition: Inter-subject variation in stop signal reaction time.Functional networks for cognitive control in a stop signal task: independent component analysis.The impact of temporal regularization on estimates of the BOLD hemodynamic response function: a comparative analysis.What can modern statistics offer imaging neuroscience?Evaluating the impact of spatio-temporal smoothness constraints on the BOLD hemodynamic response function estimation: an analysis based on Tikhonov regularization.The precision of textural analysis in (18)F-FDG-PET scans of oesophageal cancer.Machine Learning in Medical Imaging.Hand motion classification using a multi-channel surface electromyography sensor.Clustering fMRI data with a robust unsupervised learning algorithm for neuroscience data mining.Functional MR imaging: Methods and new perspectivesImproved application of independent component analysis to functional magnetic resonance imaging study via linear projection techniques.Response inhibition and fronto-striatal-thalamic circuit dysfunction in cocaine addictionExperiences with Matlab and VRML in Functional Neuroimaging VisualizationsInterpretability in Intelligent Systems – A New Concept?
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P800
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P2860
description
1999 nî lūn-bûn
@nan
1999 թուականի Սեպտեմբերին հրատարակուած գիտական յօդուած
@hyw
1999 թվականի սեպտեմբերին 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
Plurality and resemblance in fMRI data analysis
@ast
Plurality and resemblance in fMRI data analysis
@da
Plurality and resemblance in fMRI data analysis
@de
Plurality and resemblance in fMRI data analysis
@en
Plurality and resemblance in fMRI data analysis
@en-gb
Plurality and resemblance in fMRI data analysis
@fo
Plurality and resemblance in fMRI data analysis
@fr
Plurality and resemblance in fMRI data analysis
@is
Plurality and resemblance in fMRI data analysis
@kl
Plurality and resemblance in fMRI data analysis
@nb
type
label
Plurality and resemblance in fMRI data analysis
@ast
Plurality and resemblance in fMRI data analysis
@da
Plurality and resemblance in fMRI data analysis
@de
Plurality and resemblance in fMRI data analysis
@en
Plurality and resemblance in fMRI data analysis
@en-gb
Plurality and resemblance in fMRI data analysis
@fo
Plurality and resemblance in fMRI data analysis
@fr
Plurality and resemblance in fMRI data analysis
@is
Plurality and resemblance in fMRI data analysis
@kl
Plurality and resemblance in fMRI data analysis
@nb
prefLabel
Plurality and resemblance in fMRI data analysis
@ast
Plurality and resemblance in fMRI data analysis
@da
Plurality and resemblance in fMRI data analysis
@de
Plurality and resemblance in fMRI data analysis
@en
Plurality and resemblance in fMRI data analysis
@en-gb
Plurality and resemblance in fMRI data analysis
@fo
Plurality and resemblance in fMRI data analysis
@fr
Plurality and resemblance in fMRI data analysis
@is
Plurality and resemblance in fMRI data analysis
@kl
Plurality and resemblance in fMRI data analysis
@nb
P2860
P50
P3181
P356
P1433
P1476
Plurality and resemblance in fMRI data analysis
@en
P1922
We apply nine analytic methods ...... mances under each signal type.
@en
P2284
P2860
P304
P3181
P356
10.1006/NIMG.1999.0472
P4028
9951111061585787338
P407
P433
P50
P577
1999-09-01T00:00:00Z