Literature DB >> 29094513

Accuracy of 3 Tesla magnetic resonance imaging using detection of fiber loss and a visual analog scale for diagnosing partial and complete cranial cruciate ligament ruptures in dogs.

Constance G Fazio1, Peter Muir1, Susan L Schaefer1, Kenneth R Waller1.   

Abstract

Canine cranial cruciate ligament rupture is often bilateral and asymmetrical, ranging from partial to complete rupture. The purpose of our diagnostic accuracy study was to assess the accuracy of 3 Tesla magnetic resonance imaging (MRI) detection of fiber loss and use of a visual analog scale in the diagnosis of complete versus partial cranial cruciate ligament rupture in 28 clinical dogs with unilateral complete rupture and contralateral partial rupture. Three Tesla MRI was performed on 56 stifles using sagittal sequences (T2-weighted fast spin echo with fat saturation, proton density fast spin echo, and T2-weighted 3D fast spin echo CUBE). Two MRI observers assessed the cranial cruciate ligament for fiber loss and completed a visual analog scale. The MRI data were compared to arthroscopy and clinical status. Accuracy classifying partial or complete rupture was assessed using receiver operating characteristic analysis. Compared to arthroscopy, for complete cranial cruciate ligament rupture, sensitivity, specificity, and accuracy of MRI detection of fiber loss were 0.78, 0.50-0.60, and 0.68-0.71, respectively, and, for partial tears, specificity was 1.00. An MRI visual analog scale score ≥79 was indicative of complete cranial cruciate ligament rupture (sensitivity 0.72-0.94 and specificity 0.71-0.84). Using a visual analog scale cut-point ≥79, observers achieved good accuracy discriminating clinical status of partial or complete cranial cruciate ligament rupture (area under the curve 0.87-0.93). MRI evaluation for fiber loss and use of a visual analog scale are specific in stifles with clinically stable partial cranial cruciate ligament rupture. In stifles with clinically unstable complete cranial cruciate ligament rupture, both MRI tests are sensitive though not specific compared to arthroscopy. As a diagnostic imaging method, MRI may help guide treatment in patients with cranial cruciate ligament damage, particularly for stable partial rupture. Published 2017. This article is a U.S. Government work and is in the public domain in the USA.

Entities:  

Keywords:  MRI; canine; cranial cruciate ligament; rupture; stifle

Mesh:

Year:  2017        PMID: 29094513     DOI: 10.1111/vru.12567

Source DB:  PubMed          Journal:  Vet Radiol Ultrasound        ISSN: 1058-8183            Impact factor:   1.363


  4 in total

1.  Use of a platelet-rich plasma-collagen scaffold as a bioenhanced repair treatment for management of partial cruciate ligament rupture in dogs.

Authors:  Susannah J Sample; Molly A Racette; Eric C Hans; Nicola J Volstad; Susan L Schaefer; Jason A Bleedorn; Jeffrey P Little; Kenneth R Waller; Zhengling Hao; Walter F Block; Peter Muir
Journal:  PLoS One       Date:  2018-06-19       Impact factor: 3.240

Review 2.  Canine ACL rupture: a spontaneous large animal model of human ACL rupture.

Authors:  Emily E Binversie; Brian E Walczak; Stephanie G Cone; Lauren A Baker; Tamara A Scerpella; Peter Muir
Journal:  BMC Musculoskelet Disord       Date:  2022-02-05       Impact factor: 2.362

3.  Ex vivo comparison of 3 Tesla magnetic resonance imaging and multidetector computed tomography arthrography to identify artificial soft tissue lesions in equine stifles.

Authors:  Anton D Aßmann; Stefanie Ohlerth; José Suárez Sánchez-Andráde; Paul R Torgerson; Andrea S Bischofberger
Journal:  Vet Surg       Date:  2022-03-15       Impact factor: 1.618

4.  Assessment of the Usefulness of Image Reconstruction in the Oblique and Double-oblique Sagittal Planes for Magnetic Resonance Imaging of the Canine Cranial Cruciate Ligament.

Authors:  Adam Przeworski; Zbigniew Adamiak; Michał Nowicki; Marta Mieszkowska; Angelika Tobolska; Joanna Głodek
Journal:  J Vet Res       Date:  2021-05-16       Impact factor: 1.744

  4 in total

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