A model-free de-drifting approach for detecting BOLD activities in fMRI data
Abstract
A model-free method for efficiently capturing
drifts in functional magnetic resonance imaging (fMRI)
data is presented. The proposed algorithm applies a first
order differencing to the fMRI time series samples in order
to remove the drift effect. Initially, a consistent hemodynamic
response function (HRF) of the fMRI voxel is
estimated using linear least-squares. An optimal estimate of
the drift is then obtained based on a wavelet thresholding
technique applied to the generated residuals after eliminating
the induced activation response. Finally, the de-drifted
fMRI voxel response is acquired by removing the estimated
drift from the fMRI time-series. Its performance is assessed
using simulated and motor-task real fMRI data sets obtained
from both block and event-related designs. The application
results reveal that the proposed method, which avoids
the selection of a model to remove the drift component
unlike traditional methods, is efficient in de-drifting the
fMRI time-series and offers blood oxygen level-dependent
(BOLD)-fMRI signal improvement and enhanced activation
detection.
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Journal of Signal Processing Systems