Temporal fluctuations in functional Magnetic Resonance Imaging (fMRI) have been profitably used to study brain activity and connectivity for over two decades. Unfortunately, fMRI data also contain structured temporal "noise" from a variety of sources, including subject motion, subject physiology, and the MRI equipment. Recently, methods have been developed to automatically and selectively remove spatially specific structured noise from fMRI data using spatial Independent Components Analysis (ICA) and machine learning classifiers. Spatial ICA is particularly effective at removing spatially specific structured noise from high temporal and spatial resolution fMRI data of the type acquired by the Human Connectome Project and similar studies. Ho...
We respond to a critique of our temporal Independent Components Analysis (ICA) method for separating...
We respond to a critique of our temporal Independent Components Analysis (ICA) method for separating...
© 2015 Dr. Kaushik BhaganagarapuBrain imaging techniques, specifically, functional Magnetic Resonanc...
Temporal fluctuations in functional Magnetic Resonance Imaging (fMRI) have been profitably used to s...
When applied to functional magnetic resonance imaging (fMRI) data, spatial independent component ana...
Many sources of fluctuation contribute to the fMRI signal, and this makes identifying the effects th...
Many sources of fluctuation contribute to the fMRI signal, and this makes identifying the effects th...
Many sources of fluctuation contribute to the fMRI signal, and this makes identifying the effects th...
Independent component analysis (ICA) has been successfully employed to decompose functional MRI (fMR...
Independent component analysis (ICA) has been successfully employed to decompose functional MRI (fMR...
In this study, a semi-automatic, easy-to-use classification method for the identification and remova...
Independent component analysis applied to functional magnetic resonance imaging is a promising techn...
Analyzing Functional Magnetic Resonance Imaging (fMRI) of resting brains to determine the spatial lo...
Item does not contain fulltextThe identification of resting state networks (RSNs) and the quantifica...
We respond to a critique of our temporal Independent Components Analysis (ICA) method for separating...
We respond to a critique of our temporal Independent Components Analysis (ICA) method for separating...
© 2015 Dr. Kaushik BhaganagarapuBrain imaging techniques, specifically, functional Magnetic Resonanc...
Temporal fluctuations in functional Magnetic Resonance Imaging (fMRI) have been profitably used to s...
When applied to functional magnetic resonance imaging (fMRI) data, spatial independent component ana...
Many sources of fluctuation contribute to the fMRI signal, and this makes identifying the effects th...
Many sources of fluctuation contribute to the fMRI signal, and this makes identifying the effects th...
Many sources of fluctuation contribute to the fMRI signal, and this makes identifying the effects th...
Independent component analysis (ICA) has been successfully employed to decompose functional MRI (fMR...
Independent component analysis (ICA) has been successfully employed to decompose functional MRI (fMR...
In this study, a semi-automatic, easy-to-use classification method for the identification and remova...
Independent component analysis applied to functional magnetic resonance imaging is a promising techn...
Analyzing Functional Magnetic Resonance Imaging (fMRI) of resting brains to determine the spatial lo...
Item does not contain fulltextThe identification of resting state networks (RSNs) and the quantifica...
We respond to a critique of our temporal Independent Components Analysis (ICA) method for separating...
We respond to a critique of our temporal Independent Components Analysis (ICA) method for separating...
© 2015 Dr. Kaushik BhaganagarapuBrain imaging techniques, specifically, functional Magnetic Resonanc...