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Approaching Higher Dimension Imaging Data Using Cluster-Based Hierarchical Modeling in Patients with Heart Failure Preserved Ejection Fraction

机译:保留心力衰竭的射血分数的患者使用基于聚类的层次模型来处理高维成像数据

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摘要

Heart failure with preserved ejection fraction (HFpEF) is a major cause of morbidity and mortality, accounting for the majority of heart failure (HF) hospitalization. To identify the most complementary predictors of mortality among clinical, laboratory and echocardiographic data, we used cluster based hierarchical modeling. Using Stanford Translational Research Database, we identified patients hospitalized with HFpEF between 2005 and 2016 in whom echocardiogram and NT-proBNP were both available at the time of admission. Comprehensive echocardiographic assessment including left ventricular longitudinal strain (LVLS), right ventricular function and right ventricular systolic pressure (RVSP) was performed. The outcome was defined as all-cause mortality. Among patients identified, 186 patients with complete echocardiographic assessment were included in the analysis. The cohort included 58% female, with a mean age of 78.7 ± 13.5 years, LVLS of −13.3 ± 2.5%, an estimated RVSP of 38 ± 13 mmHg. Unsupervised cluster analyses identified six clusters including ventricular systolic-function cluster, diastolic-hemodynamic cluster, end-organ function cluster, vital-sign cluster, complete blood count and sodium clusters. Using a stepwise hierarchical selection from each cluster, we identified NT-proBNP (standard hazard ratio [95%CI] = 1.56 [1.17–2.08]) and RVSP (1.37 [1.09–1.78]) as independent correlates of outcome. When adding these parameters to the well validated Get with the Guideline Heart Failure risk score, the Chi-square was significantly improved (p = 0.01). In conclusion, NT-proBNP and RVSP were independently predictive in HFpEF among clinical, imaging, and biomarker parameters. Cluster-based hierarchical modeling may help identify the complementally predictive parameters in small cohorts with higher dimensional clinical data.
机译:保留射血分数(HFpEF)的心力衰竭是发病和死亡的主要原因,占大多数心力衰竭(HF)住院治疗的原因。为了确定临床,实验室和超声心动图数据之间死亡率的最互补预测因子,我们使用了基于聚类的层次模型。使用斯坦福大学转化研究数据库,我们确定了2005年至2016年间住院的HFpEF患者,其入院时均可以使用超声心动图和NT-proBNP。进行了全面的超声心动图评估,包括左心室纵向应变(LVLS),右心室功能和右心室收缩压(RVSP)。结果定义为全因死亡率。在确定的患者中,有186位经过完整超声心动图评估的患者包括在分析中。该队列包括58%的女性,平均年龄为78.7±13.5岁,LVLS为-13.3±2.5%,估计的RVSP为38±13mmHg。无监督聚类分析确定了六个聚类,包括心室收缩功能聚类,舒张血流动力学聚类,终末器官功能聚类,生命体征聚类,全血细胞计数和钠聚类。使用每个聚类的逐步分级选择,我们确定NT-proBNP(标准危险比[95%CI] = 1.56 [1.17-2.08])和RVSP(1.37 [1.09-1.78])是结果的独立相关因素。将这些参数添加到经过充分验证的“指南心力衰竭”风险评分中时,卡方明显改善(p = 0.01)。总之,在临床,影像学和生物标志物参数之间,NT-proBNP和RVSP可独立预测HFpEF。基于聚类的层次建模可以帮助识别具有较高维度临床数据的小型队列中的补充预测参数。

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