Title of article :
Prediction of Hemodynamic Severity of Coarctation by Magnetic Resonance Imaging
Author/Authors :
Muzzarelli، نويسنده , , Stefano and Meadows، نويسنده , , Alison Knauth and Ordovas، نويسنده , , Karen Gomes and Hope، نويسنده , , Michael Douglas and Higgins، نويسنده , , Charles Bernard and Nielsen، نويسنده , , James Cordry and Geva، نويسنده , , Tal and Meadows، نويسنده , , Jeffery Joshua، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
A published formula containing minimal aortic cross-sectional area and the flow deceleration pattern in the descending aorta obtained by cardiovascular magnetic resonance predicts significant coarctation of the aorta (CoA). However, the existing formula is complicated to use in clinical practice and has not been externally validated. Consequently, its clinical utility has been limited. The aim of this study was to derive a simple and clinically practical algorithm to predict severe CoA from data obtained by cardiovascular magnetic resonance. Seventy-nine consecutive patients who underwent cardiovascular magnetic resonance and cardiac catheterization for the evaluation of native or recurrent CoA at Childrenʹs Hospital Boston (n = 30) and the University of California, San Francisco (n = 49), were retrospectively reviewed. The published formula derived from data obtained at Childrenʹs Hospital Boston was first validated from data obtained at the University of California, San Francisco. Next, pooled data from the 2 institutions were analyzed, and a refined model was created using logistic regression methods. Finally, recursive partitioning was used to develop a clinically practical prediction tree to predict transcatheter systolic pressure gradient ≥20 mm Hg. Severe CoA was present in 48 patients (61%). Indexed minimal aortic cross-sectional area and heart rate–corrected flow deceleration time in the descending aorta were independent predictors of CoA gradient ≥20 mm Hg (p <0.01 for both). A prediction tree combining these variables reached a sensitivity and specificity of 90% and 76%, respectively. In conclusion, the presented prediction tree on the basis of cutoff values is easy to use and may help guide the management of patients investigated for CoA.
Journal title :
American Journal of Cardiology
Journal title :
American Journal of Cardiology