Title of article
Neuronal event detection in fMRI time series using iterative deconvolution techniques
Author/Authors
Hugo Ricardo Hernandez Garcia، نويسنده , , Luis and Ulfarsson، نويسنده , , Magnus O. Myreen، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
12
From page
353
To page
364
Abstract
An iterative estimation algorithm for deconvolution of neuronal activity from Blood Oxygen Level Dependent (BOLD) time series data is presented. The algorithm requires knowledge of the hemodynamic impulse response function but does not require knowledge of the stimulation function. The method uses majorization–minimization of a cost function to find an optimal solution to the inverse problem. The cost function includes penalties for the l1 norm, total variation and negativity. The algorithm is able to identify the occurrence of neuronal activity bursts from BOLD time series accurately. The accuracy of the algorithm was tested in simulations and experimental fMRI data using blocked and event-related designs. The simulations revealed that the algorithm is most sensitive to contrast-to-noise ratio levels and to errors in the assumed hemodynamic model and least sensitive to autocorrelation in the noise. Within normal fMRI conditions, the method is effective for event detection.
Keywords
event detection , l1-Norm , Total variation , FMRI , Deconvolution , Non-negativity
Journal title
Magnetic Resonance Imaging
Serial Year
2011
Journal title
Magnetic Resonance Imaging
Record number
1833122
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