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一种用于预测左心室辅助装置治疗后右心室衰竭的贝叶斯模型。

A Bayesian Model to Predict Right Ventricular Failure Following Left Ventricular Assist Device Therapy.

作者信息

Loghmanpour Natasha A, Kormos Robert L, Kanwar Manreet K, Teuteberg Jeffrey J, Murali Srinivas, Antaki James F

机构信息

Department of Biomedical Engineering, Carnegie Mellon University, Pittsburgh, Pennsylvania.

Heart and Vascular Institute, University of Pittsburgh Medical Center, Pittsburgh, Pennsylvania.

出版信息

JACC Heart Fail. 2016 Sep;4(9):711-21. doi: 10.1016/j.jchf.2016.04.004. Epub 2016 Jun 8.

Abstract

OBJECTIVES

This study investigates the use of a Bayesian statistical model to address the limited predictive capacity of existing risk scores derived from multivariate analyses. This is based on the hypothesis that it is necessary to consider the interrelationships and conditional probabilities among independent variables to achieve sufficient statistical accuracy.

BACKGROUND

Right ventricular failure (RVF) continues to be a major adverse event following left ventricular assist device (LVAD) implantation.

METHODS

Data used for this study were derived from 10,909 adult patients from the Inter-Agency Registry for Mechanically Assisted Circulatory Support (INTERMACS) who had a primary LVAD implanted between December 2006 and March 2014. An initial set of 176 pre-implantation variables were considered. RVF post-implant was categorized as acute (<48 h), early (48 h to 14 daysays), and late (>14 days) in onset. For each of these endpoints, a separate tree-augmented naïve Bayes model was constructed using the most predictive variables employing an open source Bayesian inference engine.

RESULTS

The acute RVF model consisted of 33 variables including systolic pulmonary artery pressure (PAP), white blood cell count, left ventricular ejection fraction, cardiac index, sodium levels, and lymphocyte percentage. The early RVF model consisted of 34 variables, including systolic PAP, pre-albumin, lactate dehydrogenase level, INTERMACS profile, right ventricular ejection fraction, pro-B-type natriuretic peptide, age, heart rate, tricuspid regurgitation, and body mass index. The late RVF model included 33 variables and was predicted mostly by peripheral vascular resistance, model for end-stage liver disease score, albumin level, lymphocyte percentage, and mean and diastolic PAP. The accuracy of all Bayesian models was between 91% and 97%, with an area under the receiver operator characteristics curve between 0.83 and 0.90, sensitivity of 90%, and specificity between 98% and 99%, significantly outperforming previously published risk scores.

CONCLUSIONS

A Bayesian prognostic model of RVF based on the large, multicenter INTERMACS registry provided highly accurate predictions of acute, early, and late RVF on the basis of pre-operative variables. These models may facilitate clinical decision making while screening candidates for LVAD therapy.

摘要

目的

本研究探讨使用贝叶斯统计模型来解决多变量分析得出的现有风险评分预测能力有限的问题。这基于这样一个假设,即有必要考虑自变量之间的相互关系和条件概率,以实现足够的统计准确性。

背景

右心室衰竭(RVF)仍然是左心室辅助装置(LVAD)植入后的主要不良事件。

方法

本研究使用的数据来自机构间机械辅助循环支持注册中心(INTERMACS)的10909例成年患者,这些患者在2006年12月至2014年3月期间接受了初次LVAD植入。最初考虑了176个植入前变量。植入后RVF分为急性(<48小时)、早期(48小时至14天)和晚期(>14天)发病。对于每个终点,使用开源贝叶斯推理引擎,利用最具预测性的变量构建一个单独的树增强朴素贝叶斯模型。

结果

急性RVF模型由33个变量组成,包括收缩期肺动脉压(PAP)、白细胞计数、左心室射血分数、心脏指数、钠水平和淋巴细胞百分比。早期RVF模型由34个变量组成,包括收缩期PAP、前白蛋白、乳酸脱氢酶水平、INTERMACS概况、右心室射血分数、前B型利钠肽、年龄、心率、三尖瓣反流和体重指数。晚期RVF模型包括33个变量,主要由外周血管阻力、终末期肝病评分模型、白蛋白水平、淋巴细胞百分比以及平均和舒张期PAP预测。所有贝叶斯模型的准确率在91%至97%之间,受试者操作特征曲线下面积在0.83至0.90之间,敏感性为90%,特异性在98%至99%之间,显著优于先前发表的风险评分。

结论

基于大型多中心INTERMACS注册中心的RVF贝叶斯预后模型,根据术前变量对急性、早期和晚期RVF提供了高度准确的预测。这些模型在筛选LVAD治疗候选者时可能有助于临床决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5ca9/5010475/784a0aacba60/nihms790807f1.jpg

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