Journal Article DZNE-2020-04168

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Correction of gradient nonlinearity artifacts in prospective motion correction for 7T MRI.

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2015
Wiley-Liss New York, NY [u.a.]

Magnetic resonance in medicine 73(4), 1562-1569 () [10.1002/mrm.25283]

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Abstract: To demonstrate the effect of gradient nonlinearity and develop a method for correction of gradient nonlinearity artifacts in prospective motion correction (Mo-Co).Nonlinear gradients can induce geometric distortions in magnetic resonance imaging, leading to pixel shifts with errors of up to several millimeters, thereby interfering with precise localization of anatomical structures. Prospective Mo-Co has been extended by conventional gradient warp correction applied to individual phase encoding steps/groups during the reconstruction. The gradient-related displacements are approximated using spherical harmonic functions. In addition, the combination of this method with a retrospective correction of the changes in the coil sensitivity profiles relative to the object (augmented sensitivity encoding (SENSE) reconstruction) was evaluated in simulation and experimental data.Prospective Mo-Co under gradient fields and coils sensitivity inconsistencies results in residual blurring, spatial distortion, and coil sensitivity mismatch artifacts. These errors can be considerably mitigated by the proposed method. High image quality with very little remaining artifacts was achieved after a few iterations. The relative image errors decreased from 25.7% to below 17.3% after 10 iterations.The combined correction of gradient nonlinearity and sensitivity map variation leads to a pronounced reduction of residual motion artifacts in prospectively motion-corrected data.

Keyword(s): Algorithms (MeSH) ; Artifacts (MeSH) ; Image Enhancement: methods (MeSH) ; Image Interpretation, Computer-Assisted: methods (MeSH) ; Imaging, Three-Dimensional: methods (MeSH) ; Magnetic Resonance Imaging: instrumentation (MeSH) ; Magnetic Resonance Imaging: methods (MeSH) ; Motion (MeSH) ; Nonlinear Dynamics (MeSH) ; Phantoms, Imaging (MeSH) ; Reproducibility of Results (MeSH) ; Sensitivity and Specificity (MeSH)

Classification:

Contributing Institute(s):
  1. Core MR PET (Core MR PET)
  2. Clinical Neurophysiology and Memory (AG Düzel)
Research Program(s):
  1. 344 - Clinical and Health Care Research (POF3-344) (POF3-344)

Appears in the scientific report 2015
Database coverage:
Medline ; BIOSIS Previews ; Clarivate Analytics Master Journal List ; Current Contents - Clinical Medicine ; Current Contents - Life Sciences ; IF < 5 ; JCR ; NationallizenzNationallizenz ; SCOPUS ; Science Citation Index ; Science Citation Index Expanded ; Web of Science Core Collection
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Document types > Articles > Journal Article
Institute Collections > MD DZNE > MD DZNE-Core MR PET
Institute Collections > MD DZNE > MD DZNE-AG Düzel
Public records
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 Record created 2020-02-18, last modified 2024-03-21


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