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Phenomapping of subgroups in hypertensive patients using unsupervised data-driven cluster analysis: An exploratory study of the SPRINT trial

机译:使用无监督数据驱动聚类分析的高血压患者亚组的现象:Sprint试验的探索性研究

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Background Hypertensive patients are highly heterogeneous in cardiovascular prognosis and treatment responses. A better classification system with phenomapping of clinical features would be of greater value to identify patients at higher risk of developing cardiovascular outcomes and direct individual decision-making for antihypertensive treatment. Methods An unsupervised, data-driven cluster analysis was performed for all baseline variables related to cardiovascular outcomes and treatment responses in subjects from the Systolic Blood Pressure Intervention Trial (SPRINT), in order to identify distinct subgroups with maximal within-group similarities and between-group differences. Cox regression was used to calculate hazard ratios (HRs) with 95% confidence intervals (CIs) for cardiovascular outcomes and compare the effect of intensive antihypertensive treatment in different clusters. Results Four replicable clusters of patients were identified: cluster 1 (index hypertensives); cluster 2 (chronic kidney disease hypertensives); cluster 3 (obese hypertensives) and cluster 4 (extra risky hypertensives). In terms of prognosis, individuals in cluster 4 had the highest risk of developing primary outcomes. In terms of treatment responses, intensive antihypertensive treatment was shown to be beneficial only in cluster 4 (HR 0.73, 95% CI 0.55-0.98) and cluster 1 (HR 0.54, 95% CI 0.37-0.79) and was associated with an increased risk of severe adverse effects in cluster 2 (HR 1.18, 95% CI 1.05-1.32). Conclusion Using a data-driven approach, SPRINT subjects can be stratified into four phenotypically distinct subgroups with different profiles on cardiovascular prognoses and responses to intensive antihypertensive treatment. Of note, these results should be taken as hypothesis generating that warrant further validation in future prospective studies.
机译:背景技术高血压患者在心血管预后和治疗反应中具有高度异质。一种更好的分类系统,具有临床特征的现象是更大的价值,以识别患者在发育心血管结果的较高风险和直接个体决策中进行抗高血压治疗。方法对无规化数据驱动的聚类分析进行了与来自收缩压干预试验(Sprint)的心血管结果和治疗反应相关的所有基线变量进行,以确定具有最大内相似性的明显亚组和 - 组差异。 Cox回归用于计算危害比率(HRS)以95%的置信区间(CIS)进行心血管结果,并比较不同簇中强化抗高血压治疗的效果。结果确定了四种可复制的患者簇:簇1(指数高血压);第2族(慢性肾病高血压);群集3(肥胖的高血压)和群集4(额外的风险增长率)。在预后,集群4中的个体具有最高的发展主要结果的风险。在治疗反应方面,强烈的抗高血压治疗显示只有在簇4中有益(HR 0.73,95%CI 0.55-0.98)和簇1(HR 0.54,95%CI 0.37-0.79),并且与风险增加有关在群体2中的严重不利影响(HR 1.18,95%CI 1.05-1.32)。结论使用数据驱动方法,Sprint受试者可以分层成四个具有不同曲线上的四种表型不同的亚组,对心血管预测和对强化抗高血压治疗的反应不同的曲线。值得注意的是,这些结果应作为假设产生的假设,以便在未来的前瞻性研究中提供进一步验证。

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