Title
Automatic motion correction of clinical shoulder MR images
Abstract
A technique for the automatic correction of motion artifacts in MR images was developed. The algorithm uses only the raw (complex) data from the MR scanner, and requires no knowledge of the patient motion during the acquisition. It operates by searching over the space of possible patient motions and determining the motion which, when used to correct the image, optimizes the image quality. The performance of this algorithm was tested in coronal images of the rotator cuff in a series of 144 patients. A four observer comparison of the autocorrected images with the uncorrected images demonstrated that motion artifacts were significantly reduced in 48% of the cases. The improvements in image quality were similar to those achieved with a previously reported navigator echo-based adaptive motion correction. The results demonstrate that autocorrection is a practical technique for retrospectively reducing motion artifacts in a demanding clinical MRI application. It achieves performance comparable to a navigator based correction technique, which is significant because autocorrection does not require an imaging sequence that has been modified to explicitly track motion during acquisition. The approach is flexible and should be readily extensible to other types of MR acquisitions that are corrupted by global motion.
Year
DOI
Venue
1999
10.1117/12.348591
PROCEEDINGS OF THE SOCIETY OF PHOTO-OPTICAL INSTRUMENTATION ENGINEERS (SPIE)
Keywords
Field
DocType
MRI,motion correction,motion artifacts,image processing,image reconstruction,shoulder imaging,navigator echoes
Autocorrection,Computer vision,Optical engineering,Computer science,Image quality,Error detection and correction,Artificial intelligence,Scanner,Observer (quantum physics),Autocorrelation,Magnetic resonance imaging
Conference
Volume
ISSN
Citations 
3661
0277-786X
0
PageRank 
References 
Authors
0.34
0
5
Name
Order
Citations
PageRank
Armando Manduca130360.99
Kiaran P. McGee201.35
E. Brian Welch34516.66
Joel P Felmlee4416.89
Richard L. Ehman55716.47