首页> 外文期刊>European journal of heart failure: journal of the Working Group on Heart Failure of the European Society of Cardiology >Phenomapping of patients with heart failure with preserved ejection fraction using machine learning‐based unsupervised cluster analysis
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Phenomapping of patients with heart failure with preserved ejection fraction using machine learning‐based unsupervised cluster analysis

机译:使用基于机器学习的无预发集群分析,用机器学习的射血分裂的心力衰竭患者的现象

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Abstract Aim To identify distinct phenotypic subgroups in a highly‐dimensional, mixed‐data cohort of individuals with heart failure (HF) with preserved ejection fraction (HFpEF) using unsupervised clustering analysis. Methods and results The study included all Treatment of Preserved Cardiac Function Heart Failure with an Aldosterone Antagonist (TOPCAT) participants from the Americas ( n ?=?1767). In the subset of participants with available echocardiographic data (derivation cohort, n ?=?654), we characterized three mutually exclusive phenogroups of HFpEF participants using penalized finite mixture model‐based clustering analysis on 61 mixed‐data phenotypic variables. Phenogroup 1 had higher burden of co‐morbidities, natriuretic peptides, and abnormalities in left ventricular structure and function; phenogroup 2 had lower prevalence of cardiovascular and non‐cardiac co‐morbidities but higher burden of diastolic dysfunction; and phenogroup 3 had lower natriuretic peptide levels, intermediate co‐morbidity burden, and the most favourable diastolic function profile. In adjusted Cox models, participants in phenogroup 1 (vs. phenogroup 3) had significantly higher risk for all adverse clinical events including the primary composite endpoint, all‐cause mortality, and HF hospitalization. Phenogroup 2 (vs. phenogroup 3) was significantly associated with higher risk of HF hospitalization but a lower risk of atherosclerotic event (myocardial infarction, stroke, or cardiovascular death), and comparable risk of mortality. Similar patterns of association were also observed in the non‐echocardiographic TOPCAT cohort (internal validation cohort, n ?=?1113) and an external cohort of patients with HFpEF [Phosphodiesterase‐5 Inhibition to Improve Clinical Status and Exercise Capacity in Heart Failure with Preserved Ejection Fraction (RELAX) trial cohort, n ?=?198], with the highest risk of adverse outcome noted in phenogroup 1 participants. Conclusions Machine learning‐based cluster analysis can identify phenogroups of patients with HFpEF with distinct clinical characteristics and long‐term outcomes.
机译:摘要旨在鉴定具有心力衰竭(HF)的高度尺寸,混合数据队列中的明显表型亚组,使用无监督的聚类分析具有保存的喷射分数(HFPEF)。方法和结果该研究包括所有从美洲的醛固酮拮抗剂(TOPCAT)与醛固酮拮抗剂(TOPCAT)参与者治疗保存的心功能心脏衰竭(N?= 1767)。在可用超声心动图数据的参与者的子集中(衍生队队列,N?= 654),我们在61个混合数据表型变量上表现了使用基于惩罚的有限混合物模型的聚类分析的三种相互独家苯组合的HFPEF参与者。苯甲群1具有较高的左心室结构和功能的生命性,利钠肽和异常的负担;苯甲群2具有较低的心血管和非心脏病病理患病率,但舒张功能障碍的负担较高;苯甲群3具有较低的利可钠肽水平,中间的共发病率负担以及最有利的舒张功能概况。在调整后的COX模型中,苯甲群1(Vs.Phenogroup 3)的参与者对包括主要复合终点,全因死亡率和HF住院的所有不良临床活动的风险显着更高。苯容群2(与苯群组3)显着与HF住院风险较高,但动脉粥样硬化事件(心肌梗死,中风或心血管死亡)的风险较低,以及死亡率的相当风险。在非超声心动表像队列队列(内部验证队列,N?=α1113)中也观察到类似的关联模式以及HFPEF患者的外部队列[磷酸二酯酶-5抑制,以改善临床地位,并保存在心力衰竭中的临床状态和运动能力射入分数(放松)试验队列,n?= 198],苯组合参与者中的不良结果风险最高。结论基于机器学习的聚类分析可以鉴定HFPEF患者的苯组,具有不同的临床特征和长期结果。

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