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Cholinergic capacity mediates prefrontal engagement during challenges to attention: evidence from imaging genetics.A review of feature reduction techniques in neuroimagingCross-Modal Decoding of Neural Patterns Associated with Working Memory: Evidence for Attention-Based Accounts of Working MemoryFrom perceptual to lexico-semantic analysis--cortical plasticity enabling new levels of processing.Combining PET images and neuropsychological test data for automatic diagnosis of Alzheimer's diseaseBrain responses to biological motion predict treatment outcome in young children with autismDistinguishing Parkinson's disease from atypical parkinsonian syndromes using PET data and a computer system based on support vector machines and Bayesian networksCoSMoMVPA: Multi-Modal Multivariate Pattern Analysis of Neuroimaging Data in Matlab/GNU OctaveAuditory prediction errors as individual biomarkers of schizophrenia.Endogenous opioids regulate social threat learning in humansSupport Vector Machine Analysis of Functional Magnetic Resonance Imaging of Interoception Does Not Reliably Predict Individual Outcomes of Cognitive Behavioral Therapy in Panic Disorder with Agoraphobia.Neural basis of self-initiative in relation to apathy in a student sample.Distinct distributed patterns of neural activity are associated with two languages in the bilingual brain.Takotsubo Syndrome - Predictable from brain imaging data.Toward literature-based feature selection for diagnostic classification: a meta-analysis of resting-state fMRI in depression.Multivariate neuroanatomical classification of cognitive subtypes in schizophrenia: a support vector machine learning approach.Disorder-specific predictive classification of adolescents with attention deficit hyperactivity disorder (ADHD) relative to autism using structural magnetic resonance imaging.Altered white matter architecture in BDNF met carriers.Machine learning for neuroimaging with scikit-learnPredicting long-term outcome of Internet-delivered cognitive behavior therapy for social anxiety disorder using fMRI and support vector machine learning.Prediction of brain age suggests accelerated atrophy after traumatic brain injury.Brain activity classifies adolescents with and without a familial history of substance use disorders.The Decoding Toolbox (TDT): a versatile software package for multivariate analyses of functional imaging data.Predicting the Naturalistic Course of Major Depressive Disorder Using Clinical and Multimodal Neuroimaging Information: A Multivariate Pattern Recognition StudyStructural MRI-Based Predictions in Patients with Treatment-Refractory Depression (TRD).Using network dynamic fMRI for detection of epileptogenic foci.Decoding intracranial EEG data with multiple kernel learning method.Can Emotional and Behavioral Dysregulation in Youth Be Decoded from Functional Neuroimaging?Characterising the grey matter correlates of leukoaraiosis in cerebral small vessel disease.NeuroGam Software Analysis in Epilepsy Diagnosis Using 99mTc-ECD Brain Perfusion SPECT ImagingLong-Term Effects of Acute Stress on the Prefrontal-Limbic System in the Healthy Adult.Separating generalized anxiety disorder from major depression using clinical, hormonal, and structural MRI data: A multimodal machine learning study.Multivariate Analysis of 18F-DMFP PET Data to Assist the Diagnosis of ParkinsonismJumping the Gun: Mapping Neural Correlates of Waiting Impulsivity and Relevance Across Alcohol Misuse.MRI visual rating scales in the diagnosis of dementia: evaluation in 184 post-mortem confirmed cases.Multimodal Neuroimaging-Informed Clinical Applications in Neuropsychiatric Disorders.Quantifying patterns of brain activity: Distinguishing unaffected siblings from participants with ADHD and healthy individuals.Clinical utility of machine-learning approaches in schizophrenia: improving diagnostic confidence for translational neuroimagingClassifying social anxiety disorder using multivoxel pattern analyses of brain function and structureMapping human temporal and parietal neuronal population activity and functional coupling during mathematical cognition.
P2860
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P2860
description
article científic
@ca
article scientifique
@fr
articolo scientifico
@it
artigo científico
@pt
bilimsel makale
@tr
scientific article published on July 2013
@en
vedecký článok
@sk
vetenskaplig artikel
@sv
videnskabelig artikel
@da
vědecký článek
@cs
name
PRoNTo: pattern recognition for neuroimaging toolbox.
@en
PRoNTo: pattern recognition for neuroimaging toolbox.
@en-gb
PRoNTo: pattern recognition for neuroimaging toolbox.
@nl
type
label
PRoNTo: pattern recognition for neuroimaging toolbox.
@en
PRoNTo: pattern recognition for neuroimaging toolbox.
@en-gb
PRoNTo: pattern recognition for neuroimaging toolbox.
@nl
prefLabel
PRoNTo: pattern recognition for neuroimaging toolbox.
@en
PRoNTo: pattern recognition for neuroimaging toolbox.
@en-gb
PRoNTo: pattern recognition for neuroimaging toolbox.
@nl
P2093
P2860
P50
P1433
P1476
PRoNTo: pattern recognition for neuroimaging toolbox
@en
P2093
J M Rondina
J Mourão-Miranda
P2860
P2888
P304
P356
10.1007/S12021-013-9178-1
P577
2013-07-01T00:00:00Z