In a K-space SENSitivity Encoding (KSENSE) magnetic resonance parallel
imaging method the sensitivity distribution of MR reception coils; is
calculated and based on the sensitivity of the coils, signals from the
respective coil merging channels are merged. The merged data are used to
perform k-space data fitting and optimal fitting parameters are found.
The fitting parameters are used to remove artifacts in the reconstructed
image. The KSENSE method, compared to SENSE, mSENSE and GRAPPA, has the
advantages of the image reconstructed by KSENSE having an optimized
signal-to-noise ratio (SNR) that is superior to that of an image
reconstructed by GRAPPA under the same conditions and approximates that
when mSENSE is used, and an image reconstructed by KSENSE has relatively
low residual artifacts and an artifact intensity, as a whole, that is
superior to that of an image reconstructed by SENSE or the like under the
same conditions and equivalent to that when GRAPPA is used, and, compared
to GRAPPA that also performs operations in k-space, KSENSE has a higher
reconstruction speed.