Downie Carolina G, Shearer Joseph J, Kuku Kayode O, Bielinski Suzette J, Kizer Jorge R, Psaty Bruce M, Joo Jungnam, Roger Véronique L
Heart Disease Phenomics Laboratory, Epidemiology and Community Health Branch, National Institutes of Health, Bethesda, MD. (C.G.D., J.J.S., K.O.K., V.L.R.).
Division of Epidemiology, Department of Quantitative Health Sciences, Mayo Clinic College of Medicine and Science, Rochester, MN (S.J.B.).
Circ Genom Precis Med. 2025 Jul 16:e004953. doi: 10.1161/CIRCGEN.124.004953.
Heart failure (HF) is a heterogeneous syndrome with high mortality. The need for a new taxonomy of HF is recognized; up to now, such phenomapping efforts have primarily used clinical data. Proteomics offers potential for more precise phenotypic identification and mechanistic insights. However, few phenomapping studies have used this approach, and all have focused on targeted cardiovascular proteomics panels and a restricted HF ejection fraction group.
We measured over 7000 plasma proteins in a population-based cohort of 1351 patients with HF, used k-means clustering to identify distinct phenogroups, and compared their clinical characteristics and all-cause mortality.
Three proteomics-defined phenogroups were identified, with substantial differences in survival (phenogroup 1 5-year survival probability, 65% [95% CI, 61%-68%]; phenogroup 2, 45% [40%-51%]; phenogroup 3, 26% [22%-30%]), independent of clinical characteristics. Phenogroups also exhibited differences in several measures suggesting poorer health, including NT-proBNP (N-terminal pro-B-type natriuretic peptide), kidney function, and Meta-Analysis Global Group in Chronic Heart Failure scores, but did not differ by ejection fraction or New York Heart Association class.
Our study demonstrates that molecular phenomapping can stratify patients with HF into distinct subgroups that go beyond predefined clinical classifications.
心力衰竭(HF)是一种具有高死亡率的异质性综合征。人们认识到需要一种新的HF分类法;到目前为止,这种表型映射研究主要使用临床数据。蛋白质组学为更精确的表型鉴定和机制洞察提供了潜力。然而,很少有表型映射研究使用这种方法,并且所有研究都集中在靶向心血管蛋白质组学面板和受限的HF射血分数组上。
我们在一个基于人群的队列中测量了1351例HF患者的7000多种血浆蛋白,使用k均值聚类来识别不同的表型组,并比较它们的临床特征和全因死亡率。
识别出三个蛋白质组学定义的表型组,其生存率存在显著差异(表型组1的5年生存概率为65%[95%CI,61%-68%];表型组2为45%[40%-51%];表型组3为26%[22%-30%]),且与临床特征无关。表型组在几项表明健康状况较差的指标上也存在差异,包括N末端B型利钠肽原(NT-proBNP)、肾功能和慢性心力衰竭荟萃分析全球组评分,但在射血分数或纽约心脏协会分级方面没有差异。
我们的研究表明,分子表型映射可以将HF患者分层为截然不同的亚组,这些亚组超出了预先定义的临床分类。