心源性休克
医学
心力衰竭
内科学
表型
休克(循环)
心脏病学
重症监护医学
心肌梗塞
遗传学
生物
基因
作者
Elric Zweck,Manreet Kanwar,Song Li,Shashank S. Sinha,A.R. Garan,Jaime Hernández-Montfort,Yijing Zhang,Borui Li,Paulina Baca,Fatou Dieng,Neil Harwani,Jacob Abraham,Gavin Hickey,Sandeep Nathan,Detlef Wencker,Shelley Hall,Andrew Schwartzman,Wissam Khalife,Claudius Mahr,Ju H. Kim
标识
DOI:10.1016/j.jchf.2023.05.007
摘要
Cardiogenic shock (CS) patients remain at 30% to 60% in-hospital mortality despite therapeutic innovations. Heterogeneity of CS has complicated clinical trial design. Recently, 3 distinct CS phenotypes were identified in the CSWG (Cardiogenic Shock Working Group) registry version 1 (V1) and external cohorts: I, “noncongested;” II, “cardiorenal;” and III, “cardiometabolic” shock. The aim was to confirm the external reproducibility of machine learning–based CS phenotypes and to define their clinical course. The authors included 1,890 all-cause CS patients from the CSWG registry version 2. CS phenotypes were identified using the nearest centroids of the initially reported clusters. Phenotypes were retrospectively identified in 796 patients in version 2. In-hospital mortality rates in phenotypes I, II, III were 23%, 41%, 52%, respectively, comparable to the initially reported 21%, 45%, and 55% in V1. Phenotype-related demographic, hemodynamic, and metabolic features resembled those in V1. In addition, 58.8%, 45.7%, and 51.9% of patients in phenotypes I, II, and III received mechanical circulatory support, respectively (P = 0.013). Receiving mechanical circulatory support was associated with increased mortality in cardiorenal (OR: 1.82 [95% CI: 1.16-2.84]; P = 0.008) but not in noncongested or cardiometabolic CS (OR: 1.26 [95% CI: 0.64-2.47]; P = 0.51 and OR: 1.39 [95% CI: 0.86-2.25]; P = 0.18, respectively). Admission phenotypes II and III and admission Society for Cardiovascular Angiography and Interventions stage E were independently associated with increased mortality in multivariable logistic regression compared to noncongested “stage C” CS (P < 0.001). The findings support the universal applicability of these phenotypes using supervised machine learning. CS phenotypes may inform the design of future clinical trials and enable management algorithms tailored to a specific CS phenotype.