4.4 Article

Adaptive bulk motion exclusion for improved robustness of abdominal magnetic resonance imaging

期刊

NMR IN BIOMEDICINE
卷 30, 期 11, 页码 -

出版社

WILEY
DOI: 10.1002/nbm.3830

关键词

abdominal imaging; bulk motion; motion correction; prospective motion detection; real-time motion detection

资金

  1. US National Institute of Health [NIH P41 EB017183, NIH R01 EB018308]
  2. Royal Netherlands Academy of Arts and Sciences (KNAW) Ter Meulen grant

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Non-Cartesian magnetic resonance imaging (MRI) sequences have shown great promise for abdominal examination during free breathing, but break down in the presence of bulk patient motion (i.e. voluntary or involuntary patient movement resulting in translation, rotation or elastic deformations of the body). This work describes a data-consistency-driven image stabilization technique that detects and excludes bulk movements during data acquisition. Bulk motion is identified from changes in the signal intensity distribution across different elements of a multi-channel receive coil array. A short free induction decay signal is acquired after excitation and used as a measure to determine alterations in the load distribution. The technique has been implemented on a clinical MR scanner and evaluated in the abdomen. Six volunteers were scanned and two radiologists scored the reconstructions. To show the applicability to other body areas, additional neck and knee images were acquired. Data corrupted by bulk motion were successfully detected and excluded from image reconstruction. An overall increase in image sharpness and reduction of streaking and shine-through artifacts were seen in the volunteer study, as well as in the neck and knee scans. The proposed technique enables automatic real-time detection and exclusion of bulk motion during MR examinations without user interaction. It may help to improve the reliability of pediatric MRI examinations without the use of sedation.

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