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首页> 外文期刊>The Journal of heart and lung transplantation: the official publication of the International Society for Heart Transplantation >Decision tree for adjuvant right ventricular support in patients receiving a left ventricular assist device
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Decision tree for adjuvant right ventricular support in patients receiving a left ventricular assist device

机译:左心室辅助装置辅助患者右心室辅助的决策树

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Background: Right ventricular (RV) failure is a significant complication after implantation of a left ventricular assist device (LVAD). It is therefore important to identify patients at risk a priori. However, prognostic models derived from multivariate analyses have had limited predictive power. Methods: This study retrospectively analyzed the records of 183 LVAD recipients between May 1996 and October 2009; of these, 27 later required a RVAD (RVAD +) and 156 remained on LVAD only (RVAD -) until transplant or death. A decision tree model was constructed to represent combinatorial non-linear relationships of the pre-operative data that are predictive of the need for RVAD support. Results: An optimal set of 8 pre-operative variables were identified: transpulmonary gradient, age, right atrial pressure, international normalized ratio, heart rate, white blood cell count, alanine aminotransferase, and the number of inotropic agents. The resultant decision tree, which consisted of 28 branches and 15 leaves, identified RVAD + patients with 85% sensitivity, RVAD - patients with 83% specificity, and exhibited an area under the receiver operating characteristic curve of 0.87. Conclusions: The decision tree model developed in this study exhibited several advantages compared with existing risk scores. Quantitatively, it provided improved prognosis of RV support by encoding the non-linear, synergic interactions among pre-operative variables. Because of its intuitive structure, it more closely mimics clinical reasoning and therefore can be more readily interpreted. Further development with additional multicenter, longitudinal data may provide a valuable prognostic tool for triage of LVAD therapy and, potentially, improve outcomes.
机译:背景:右心室(RV)衰竭是植入左心室辅助装置(LVAD)后的严重并发症。因此,重要的是要事先确定有风险的患者。但是,从多元分析得出的预后模型的预测能力有限。方法:本研究回顾性分析了1996年5月至2009年10月间183例LVAD接受者的记录。其中27例以后需要RVAD(RVAD +),而156例仅保留LVAD(RVAD-),直到移植或死亡。构建了决策树模型,以表示术前数据的组合非线性关系,这些关系预测了对RVAD支持的需求。结果:确定了一组最佳的8个术前变量:经肺梯度,年龄,右心房压力,国际标准化比率,心率,白细胞计数,丙氨酸转氨酶和正性肌力药的数量。最终的决策树由28个分支和15个叶子组成,确定了RVAD +敏感性为85%的患者,RVAD-特异性为83%的患者,并且在接收器工作特征曲线下的面积为0.87。结论:与现有风险评分相比,本研究开发的决策树模型具有多个优势。从数量上讲,它通过对术前变量之间的非线性协同相互作用进行编码,可以改善RV支持的预后。由于其直观的结构,它更紧密地模仿了临床​​推理,因此更易于解释。利用更多的多中心纵向数据进行的进一步开发可能为LVAD治疗的分类提供有价值的预后工具,并有可能改善结局。

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