WHOCARES: data-driven WHOle-brain CArdiac signal REgression from highly accelerated simultaneous multi-Slice fMRI acquisitions
Nigel Colenbier, Marco Marino, Giorgio Arcara, Blaise Frederick,, Giovanni Pellegrino, Daniele Marinazzo, Giulio Ferrazzi

TL;DR
WHOCARES is a novel data-driven method that accurately resolves and regresses cardiac signals from highly accelerated multi-slice fMRI data without external recordings, improving correction of cardiac confounds in brain imaging.
Contribution
It introduces a hyper-sampling based, fully data-driven approach for cardiac signal regression in fMRI, independent of external physiological recordings.
Findings
Successfully applied to 774 HCP subjects
Validated against RETROICOR method
Enables retrospective cardiac correction without external data
Abstract
Cardiac pulsation is a physiological confound of functional magnetic resonance imaging (fMRI) time-series that introduces spurious signal fluctuations in proximity to blood vessels. fMRI alone is not sufficiently fast to resolve cardiac pulsation. Depending on the ratio between the instantaneous heart-rate and the acquisition sampling frequency (1/TR, with TR being the repetition time), the cardiac signal may alias into the frequency band of neural activation. The introduction of simultaneous multi-slice (SMS) imaging has significantly reduced the chances of cardiac aliasing. However, the necessity of covering the entire brain at high spatial resolution restrain the shortest TR to just over 0.5 seconds, which is in turn not sufficiently short to resolve cardiac pulsation beyond 60 beats per minute. Recently, hyper-sampling of the fMRI time-series has been introduced to overcome this…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Functional Brain Connectivity Studies · Cardiac Imaging and Diagnostics
