Improved wrist pannus volume measurement from contrast-enhanced MRI in rheumatoid arthritis using shuffle transform

Emily Xanthopoulos, Charles E. Hutchinson, Judith E. Adams, Ian N. Bruce, Anthony F P Nash, Andrew P. Holmes, Christopher J. Taylor, John C. Waterton

    Research output: Contribution to journalArticlepeer-review

    Abstract

    Background: Contrast-enhanced MRI is of value in assessing rheumatoid pannus in the hand, but the images are not always easy to quantitate. Objective: To develop and evaluate an improved measurement of volume of enhancing pannus (VEP) in the hand in human rheumatoid arthritis (RA). Methods: MR images of the hand and wrist were obtained for 14 patients with RA at 0, 1 and 13 weeks. Volume of enhancing pannus was measured on images created by subtracting precontrast T1-weighted images from contrast-enhanced T1-weighted images using a shuffle transformation technique. Maximum intensity projection (MIP) and 3D volume rendering of the images were used as a guide to identify the pannus and any contrast-enhanced veins. Result: Visualisation of pannus was much improved following the shuffle transform. Between 0 weeks and 1 week, the mean value of the within-subject coefficient of variation (CoV) was 0.13 and the estimated total CoV was 0.15. There was no evidence of significant increased variability within the 13-week interval for the complete sample of patients. Conclusion: Volume of enhancing pannus can be measured reproducibly in the rheumatoid hand using 3D contrast-enhanced MRI and shuffle transform. © 2007 Elsevier Inc. All rights reserved.
    Original languageEnglish
    Pages (from-to)110-116
    Number of pages6
    JournalM
    Volume25
    Issue number1
    DOIs
    Publication statusPublished - Jan 2007

    Keywords

    • Gadopentetate
    • Hand
    • Magnetic resonance imaging
    • Pannus
    • Rheumatoid arthritis

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