心脏病学
内科学
医学
射血分数
心房颤动
单变量分析
亚临床感染
优势比
置信区间
二尖瓣
二尖瓣反流
斑点追踪超声心动图
多元分析
心力衰竭
作者
Tomasz G. Witkowski,James D. Thomas,Philippe Debonnaire,Victoria Delgado,Ulas Höke,S. H. Ewe,M. I. M. Versteegh,Emile Holman,Martin J. Schalij,J. J. Bax,Robert J.M. Klautz,Nina Ajmone Marsan
出处
期刊:European Journal of Echocardiography
[Oxford University Press]
日期:2012-07-29
卷期号:14 (1): 69-76
被引量:198
摘要
Despite a successful surgical procedure and adherence to current recommendations, postoperative left ventricular (LV) dysfunction after mitral valve repair (MVr) for organic mitral regurgitation (MR) may still occur. New approaches are therefore needed to detect subclinical preoperative LV dysfunction. LV global longitudinal strain (GLS), assessed with speckle-tracking echocardiographic analysis, has been proposed as a novel measure to better depict latent LV dysfunction. The aim of this study was to investigate the value of GLS to predict long-term LV dysfunction after MVr. A total of 233 patients (61% men, 61 ± 12 years) with moderate–severe organic MR who underwent successful MVr between 2000 and 2009 were included. Echocardiography was performed at baseline and long-term follow-up (34 ± 20 months) after MVr. LV dysfunction at follow-up was defined as LV ejection fraction (EF) <50% and was present in 29 (12%) patients. A cut-off value of −19.9% of GLS showed a sensitivity and specificity of 90 and 79% to predict long-term LV dysfunction. By univariate logistic regression analysis, baseline LVEF ≤60%, LV end-systolic diameter (ESD) ≥40 mm, atrial fibrillation, presence of symptoms, and GLS >−19.9% were predictors of long-term LV dysfunction. By multivariate analysis, GLS remained an independent predictor of LV dysfunction (odds ratio 23.16, 95% confidence interval: 6.53–82.10, P < 0.001), together with LVESD. In a large series of patients operated within the last decade, MVr resulted in a low incidence of long-term LV dysfunction. A GLS of >−19.9% demonstrated to be a major independent predictor of long-term LV dysfunction after adjustment for parameters currently implemented into guidelines.
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