Minimum Field Strength Requirements for Proton Density Weighted MRI
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Comparison of high-field-strength versus low-field-strength MRI of the shoulder.
OBJECTIVE Previous studies have reported similar results of shoulder MRI versus arthroscopy for high-field-strength (1.5-T) and low-field-strength (0.2-T) units. We report our experience with the accuracy of high- versus low-field-strength units versus arthroscopy for detection of supraspinatus tendon tears and labral tears in the same patients. SUBJECTS AND METHODS. Three musculoskeletal radio...
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تاریخ انتشار 2015