Qiqi Liu, Shuang Chen, Wen-Chi Shen, Xin Duan, Xingxing Ren, Zeya Sun, J. Tian, J. Xue, Guoqing Du
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引用次数: 0
Abstract
BACKGROUND
The objective was to develop and validate an individualized nomogram to predict severe functional tricuspid regurgitation (S-FTR) after mitral valve replacement (MVR) via retrospective analysis of rheumatic heart disease (RHD) patients' pre-clinical characteristics.
METHODS
Between 2001-2015, 442 MVR patients of RHD were examined. Transthoracic echocardiography detected S-FTR, and logistic regression model analyzed its independent predictors. R software established a nomogram prediction model, and Bootstrap determined its theoretical probability, which subsequently was compared with the actual patient probability to calculate the area under the curve (AUC) and calibration plots. Decision curve analysis (DCA) identified its clinical utility.
RESULTS
Ninety-six patients developed S-FTR during the follow-up period. Both uni- and multivariate analyses found significant correlations between S-FTR occurrence with gender, age, atrial fibrillation (AF), pulmonary arterial hypertension (PH), left atrial diameter (LAD), and tricuspid regurgitation area (TRA). The individualized nomogram model had the AUC of 0.99 in internal verification. Calibration test indicated high agreement of predicted and actual S-FTR onset. DCA also showed that utilization of those six aforementioned factors was clinically useful.
CONCLUSION
The nomogram for the patient characteristics of age, gender, AF, PH, LAD, and TRA found that they were highly predictive for future S-FTR onset within 5 years. This predictive ability therefore allows clinicians to optimize postoperative patient care and avoid unnecessary tricuspid valve surgeries.
目的是通过回顾性分析风湿性心脏病(RHD)患者的临床前特征,开发并验证个体化nomogram来预测二尖瓣置换术(MVR)后严重功能性三尖瓣反流(S-FTR)。方法对2001-2015年442例RHD MVR患者进行回顾性分析。经胸超声心动图检测S-FTR, logistic回归模型分析其独立预测因子。R软件建立nomogram预测模型,Bootstrap确定其理论概率,并与患者实际概率进行比较,计算出曲线下面积(area under the curve, AUC)和标定图。决策曲线分析(DCA)证实了其临床应用价值。结果随访期间有96例患者发生S-FTR。单因素和多因素分析均发现,S-FTR的发生与性别、年龄、心房颤动(AF)、肺动脉高压(PH)、左房内径(LAD)和三尖瓣反流面积(TRA)存在显著相关性。内部验证的个性化nomogram模型AUC为0.99。校正试验表明,预测和实际的S-FTR发病高度一致。DCA还显示上述六个因素的应用在临床上是有用的。结论年龄、性别、房颤、PH、LAD、TRA的特征图对未来5年内发生S-FTR具有较高的预测价值。因此,这种预测能力使临床医生能够优化术后患者护理,避免不必要的三尖瓣手术。