Literature DB >> 24679195

Value of knee MRI in the diagnosis and management of knee disorders.

Naveen Subhas, Sunny H Patel, Nancy A Obuchowski, Morgan H Jones.   

Abstract

The primary objectives of this study were to determine how frequently knee magnetic resonance imaging (MRI) changes (1) diagnosis, (2) diagnostic confidence, and (3) management. A secondary objective was to correlate these changes with specific patient/physician characteristics and develop a prediction model using these characteristics. Six orthopedic specialists prospectively completed surveys when ordering knee MRI (n=93). Pre-MRI surveys recorded history, symptoms, signs, diagnosis, diagnostic confidence, and planned management. Post-MRI surveys recorded diagnosis, confidence, and planned management. Changes in diagnosis, management, and diagnostic confidence were correlated with patient/physician characteristics using chi-square and logistic regression tests. A multiple variable model was created with the most significant variables from the univariate analysis, and a c-index was used for cross-validation. Magnetic resonance imaging changed diagnosis in 29.3% and management in 25.3% of cases. Confidence in diagnoses after MRI increased, on average, by 10.6%. Change in diagnosis was significantly correlated with lateral joint line pain (P=.012) and tenderness (P=.006). The 3 most significant predictors for change in management were ligament pathology (P=.017), medial-sided pain/tenderness (P=.051), and age (P=.133). A 3-variable model using these predictors was significantly better than chance alone at predicting management changes (c-index: model=0.766; cross-validation=0.661). Magnetic resonance imaging frequently changed diagnosis and management and improved diagnostic confidence in a large minority of patients with internal derangement of the knee, even after evaluation by subspecialized physicians. A statistical model using specific patient characteristics can be created to predict when MRI will change management. Copyright 2014, SLACK Incorporated.

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Year:  2014        PMID: 24679195     DOI: 10.3928/01477447-20140124-11

Source DB:  PubMed          Journal:  Orthopedics        ISSN: 0147-7447            Impact factor:   1.390


  1 in total

1.  Post-traumatic knee MRI findings and associations with patient, trauma, and clinical characteristics: a subgroup analysis in primary care in the Netherlands.

Authors:  Kim van Oudenaarde; Nynke M Swart; Johan L Bloem; Sita Ma Bierma-Zeinstra; Paul R Algra; Bart Koes; Jan Verhaar; Rob Ghh Nelissen; Patrick Je Bindels; Pim Aj Luijsterburg; Monique Reijnierse
Journal:  Br J Gen Pract       Date:  2017-12       Impact factor: 5.386

  1 in total

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