Huang Liyan, Feng Jiayu, Zhai Mei, Huang Yan, Zhou Qiong, Zhang Yuhui, Zhang Jian
Heart Failure Center, State Key Laboratory of Cardiovascular Disease, Fuwai Hospital, National Center for Cardiovascular Diseases, Chinese Academy of Medical Sciences and Peking Union Medical College (CAMS and PUMC), Beijing, China.
ESC Heart Fail. 2024 Dec;11(6):4160-4171. doi: 10.1002/ehf2.15021. Epub 2024 Aug 12.
Heart failure (HF) with supranormal ejection fraction (HFsnEF) represents a distinct clinical entity characterized by limited treatment options and an unfavourable prognosis. Revealing its phenotypic diversity is crucial for understanding disease mechanism and optimizing patient management. We aim to identify phenotypic subgroups in HFsnEF using unsupervised clustering analysis.
Consecutive hospitalized patients with a diagnosis of HF and a left ventricular ejection fraction ≥65% at baseline echocardiographic evaluations were included for analysis. We conducted unsupervised hierarchical clustering analysis on principal components (HCPC) to identify HFsnEF phenogroups using mixed data variables including demographics, HF duration, vital signs, anthropometrics, smoking/drinking status, HF aetiology, comorbid diseases, laboratory tests and echocardiographic parameters. We then employed decision tree modelling to identify parameters capable of distinguishing distinct clusters. Clinical outcomes, including all-cause death, cardiovascular (CV) death and CV readmission for different clusters, were examined.
Three mutually exclusive clusters were identified from the cohort of 221 HFsnEF patients. Cluster 1 (52.5%) predominantly consisted of patients with valvular heart disease, who had larger cardiac chambers and a higher prevalence of atrial fibrillation/atrial flutter. Cluster 2 (26.2%) primarily comprised older ischaemic patients with a higher prevalence of metabolic comorbidities. Cluster 3 (21.3%) were mainly hypertrophic cardiomyopathy patients. Two clinical variables were identified that could be used to group all HFsnEF patients into one of the clusters; they were HF aetiology and comorbid diabetes. During the median follow-up of 53.4 months, 46 (20.8%) all-cause deaths occurred, among them 39 of CV causes. Seventy (31.7%) patients experienced CV readmissions. Three clusters showed distinct differences in mortality outcomes, with Cluster 1 exhibiting the highest risk of all-cause mortality [Cluster 1 vs. Cluster 2: adjusted hazard ratio (aHR) = 3.32, P = 0.022; Cluster 1 vs. Cluster 3: aHR = 3.81, P = 0.036; Cluster 2 vs. Cluster 3: aHR = 1.15, P = 0.865] and CV mortality (Cluster 1 vs. Cluster 2: aHR = 3.73, P = 0.022; Cluster 1 vs. Cluster 3: aHR = 4.27, P = 0.020; Cluster 2 vs. Cluster 3: aHR = 1.15, P = 0.870). CV readmission risk was comparable among the three clusters (Cluster 1 vs. Cluster 2: aHR = 0.82, P = 0.590; Cluster 1 vs. Cluster 3: aHR = 1.04, P = 0.900; Cluster 2 vs. Cluster 3: aHR = 1.28, P = 0.580).
In a heterogeneous HFsnEF cohort, three clusters were identified by unsupervised HCPC with distinct clinical characteristics and outcomes.
射血分数正常的心力衰竭(HFsnEF)是一种独特的临床实体,其治疗选择有限且预后不良。揭示其表型多样性对于理解疾病机制和优化患者管理至关重要。我们旨在使用无监督聚类分析识别HFsnEF中的表型亚组。
纳入在基线超声心动图评估中诊断为心力衰竭且左心室射血分数≥65%的连续住院患者进行分析。我们对主成分进行无监督层次聚类分析(HCPC),以使用包括人口统计学、HF病程、生命体征、人体测量学、吸烟/饮酒状况、HF病因、合并疾病、实验室检查和超声心动图参数等混合数据变量来识别HFsnEF表型组。然后我们采用决策树建模来识别能够区分不同聚类的参数。检查了不同聚类的临床结局,包括全因死亡、心血管(CV)死亡和CV再入院。
从221例HFsnEF患者队列中识别出三个相互排斥的聚类。聚类1(52.5%)主要由患有瓣膜性心脏病的患者组成,这些患者的心脏腔室较大且心房颤动/心房扑动的患病率较高。聚类2(26.2%)主要包括患有代谢合并症患病率较高的老年缺血性患者。聚类3(21.3%)主要是肥厚型心肌病患者。确定了两个临床变量,可用于将所有HFsnEF患者分组到其中一个聚类中;它们是HF病因和合并糖尿病。在中位随访53.4个月期间,发生了46例(20.8%)全因死亡,其中39例为CV病因。70例(31.7%)患者发生了CV再入院。三个聚类在死亡率结局方面表现出明显差异,聚类1表现出全因死亡率最高[聚类1与聚类2:调整后风险比(aHR)=3.32,P=0.022;聚类1与聚类3:aHR=3.81,P=0.036;聚类2与聚类3:aHR=1.15,P=0.865]和CV死亡率(聚类1与聚类2:aHR=3.73,P=0.022;聚类1与聚类3:aHR=4.27,P=0.020;聚类2与聚类3:aHR=1.15,P=0.870)。三个聚类之间的CV再入院风险相当(聚类1与聚类2:aHR=0.82,P=0.590;聚类1与聚类3:aHR=1.04,P=0.900;聚类2与聚类3:aHR=1.28,P=0.580)。
在异质性HFsnEF队列中,通过无监督HCPC识别出三个具有不同临床特征和结局的聚类。