Lourdes Vicent, Nicolás Rosillo, Jorge Vélez, Guillermo Moreno, Pablo Pérez, José Luis Bernal, Germán Seara, Rafael Salguero-Bodes, Fernando Arribas, Héctor Bueno
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引用次数: 0
Abstract
Background: Significant knowledge gaps remain regarding the heterogeneity of heart failure (HF) phenotypes, particularly among patients with preserved or mildly reduced left ventricular ejection fraction (HFp/mrEF). Our aim was to identify HF subtypes within the HFp/mrEF population.
Methods: K-prototypes clustering algorithm was used to identify different HF phenotypes in a cohort of 2 570 patients diagnosed with HFmrEF or HFpEF. This algorithm employs the k-means algorithm for quantitative variables and k-modes for qualitative variables.
Results: We identified three distinct phenotypic clusters: Cluster A (n = 850, 33.1%), characterized by a predominance of women with low comorbidity burden; Cluster B (n = 830, 32.3%), mainly women with diabetes mellitus and high comorbidity; and Cluster C (n = 890, 34.5%), primarily men with a history of active smoking and respiratory comorbidities. Significant differences were observed in baseline characteristics and one-year mortality rates across the clusters: 18% for Cluster A, 33% for Cluster B, and 26.4% for Cluster C (P < 0.001). Cluster B had the shortest median time to death (90 days), followed by Clusters C (99 days) and A (144 days) (P < 0.001). Stratified Cox regression analysis identified age, cancer, respiratory failure, and laboratory parameters as predictors of mortality.
Conclusion: Cluster analysis identified three distinct phenotypes within the HFp/mrEF population, highlighting significant heterogeneity in clinical profiles and prognostic implications. Women were classified into two distinct phenotypes: low-risk women and diabetic women with high mortality rates, while men had a more uniform profile with a higher prevalence of respiratory disease.
期刊介绍:
European Heart Journal - Quality of Care & Clinical Outcomes is an English language, peer-reviewed journal dedicated to publishing cardiovascular outcomes research. It serves as an official journal of the European Society of Cardiology and maintains a close alliance with the European Heart Health Institute. The journal disseminates original research and topical reviews contributed by health scientists globally, with a focus on the quality of care and its impact on cardiovascular outcomes at the hospital, national, and international levels. It provides a platform for presenting the most outstanding cardiovascular outcomes research to influence cardiovascular public health policy on a global scale. Additionally, the journal aims to motivate young investigators and foster the growth of the outcomes research community.