医学
心脏病学
内科学
乳头肌
二尖瓣修补术
二尖瓣反流
二尖瓣
二尖瓣置换术
心室重构
心室
作者
Priscilla Wessly,Denisse Diaz,Rafle Fernandez,Mark J Larralde,Sofia A. Horvath,Steve Xydas,Christos G. Mihos
出处
期刊:Journal of Cardiovascular Surgery
[Edizioni Minerva Medica]
日期:2021-05-31
标识
DOI:10.23736/s0021-9509.21.11843-9
摘要
BACKGROUND Mitral valve repair with papillary muscle approximation (MVr-PMA) for severe secondary mitral regurgitation (MR) decreases MR recurrence compared with MVr alone. This study assessed the effects of MVr-PMA on left ventricular (LV) remodeling and shape, systolic function and strain mechanics. METHODS Forty-eight patients who underwent MVr-PMA for severe secondary MR and had follow-up echocardiograms available for review were identified. Student's t-test, linear regression modeling, and receiver-operating characteristic curves were used in the statistical analyses. RESULTS Median follow-up time was 14.9 months. MVr-PMA was associated with significant LV reverse remodeling with a smaller LV end-diastolic diameter, systolic sphericity index, and interpapillary muscle distance at follow-up. Nine patients (18.8%) experienced ≥ moderate recurrent MR. When compared recurrent MR patients at follow-up, those with durable MVr-PMA had a greater LV ejection fraction (32.8 vs 22.0%, p=0.03), a smaller end-diastolic diameter (59.6 vs 67.3 mm, p=0.03), systolic sphericity index (0.35 vs 0.47, p=0.03), and endsystolic interpapillary muscle distance (16.3 vs 21.1 mm, p=0.03). A durable MVr-PMA also resulted in stable global longitudinal strain when compared with pre-operative values, while the recurrent MR group experienced a further decline (no recurrent MR: -8.4 vs -7.5%; recurrent MR: -8.2 vs -5.4%; p<0.05). A pre-operative LV end-diastolic diameter ≥ 64 mm was a discriminative predictor of MR recurrence (sensitivity = 100%, specificity = 51%, AUC = 0.756, p = 0.02). CONCLUSIONS A durable MVr-PMA confers improved LV geometry and function, and stable LV mechanics. The extent of baseline LV remodeling identifies patients at risk for recurrent MR.
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