The major obstacle in building classifiers that robustly detect a particular cognitive state across different subjects using fMRI images has been the high inter-subject functional variability in brain activation patterns. To overcome this obstacle, firstly, the brain regions that are relevant to the problem under study are determined from the training data; then, statistical information of each brain region is extracted to form regional features, which are robust to inter-subject functional variations within the brain region; finally, the regional feature statistical variations across different samples are further alleviated by a PCA technique. To improve the generalization ability and efficiency of the classification, from the extracted re...
Multivariate decoding methods have revolutionized cognitive neuroimaging in recent years by enabling...
peer reviewedPredicting a particular cognitive state from a specific pattern of fMRI voxel values is...
Patterns of brain activity during deception have recently been characterized with fMRI on the multi-...
AbstractIt is widely known that task-specific analyses are used to understand human brain functionin...
One of the key challenges in cognitive neuroscience is determining the mapping between neural activi...
Over 100 years, many neuroimaging techniques have been developed to study the functional organizatio...
Over the past decade functional Magnetic Resonance Imaging (fMRI) has emerged as a powerful techniqu...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
Is it feasible to train cross-subject classifiers to decode the cognitive states of human subjects ...
Is it feasible to train classifiers to decode the cognitive state of a human subject, based on singl...
Two of the most fundamental questions in the field of neurosciences are how information is represent...
In recent years, the efficacy and accuracy of multivariate analysis techniques on neuroimaging data ...
Pattern classification in functional MRI (fMRI) is a novel methodology to automatically identify dif...
We consider learning to classify cognitive states of human subjects, based on their brain activity o...
Functional magnetic resonance imaging (fMRI) makes it possible to detect brain activities in order t...
Multivariate decoding methods have revolutionized cognitive neuroimaging in recent years by enabling...
peer reviewedPredicting a particular cognitive state from a specific pattern of fMRI voxel values is...
Patterns of brain activity during deception have recently been characterized with fMRI on the multi-...
AbstractIt is widely known that task-specific analyses are used to understand human brain functionin...
One of the key challenges in cognitive neuroscience is determining the mapping between neural activi...
Over 100 years, many neuroimaging techniques have been developed to study the functional organizatio...
Over the past decade functional Magnetic Resonance Imaging (fMRI) has emerged as a powerful techniqu...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
Is it feasible to train cross-subject classifiers to decode the cognitive states of human subjects ...
Is it feasible to train classifiers to decode the cognitive state of a human subject, based on singl...
Two of the most fundamental questions in the field of neurosciences are how information is represent...
In recent years, the efficacy and accuracy of multivariate analysis techniques on neuroimaging data ...
Pattern classification in functional MRI (fMRI) is a novel methodology to automatically identify dif...
We consider learning to classify cognitive states of human subjects, based on their brain activity o...
Functional magnetic resonance imaging (fMRI) makes it possible to detect brain activities in order t...
Multivariate decoding methods have revolutionized cognitive neuroimaging in recent years by enabling...
peer reviewedPredicting a particular cognitive state from a specific pattern of fMRI voxel values is...
Patterns of brain activity during deception have recently been characterized with fMRI on the multi-...