Institute of Heart Diseases, Wroclaw Medical University, 50-556 Wroclaw, Poland.
Department of Physiology and Patophysiology, Wroclaw Medical University, 50-368 Wroclaw, Poland.
Biomolecules. 2022 Nov 2;12(11):1616. doi: 10.3390/biom12111616.
Acute heart failure (AHF) is a common and severe condition with a poor prognosis. Its course is often complicated by worsening renal function (WRF), exacerbating the outcome. The population of AHF patients experiencing WRF is heterogenous, and some novel possibilities for its analysis have recently emerged. Clustering is a machine learning (ML) technique that divides the population into distinct subgroups based on the similarity of cases (patients). Given that, we decided to use clustering to find subgroups inside the AHF population that differ in terms of WRF occurrence. We evaluated data from the three hundred and twelve AHF patients hospitalized in our institution who had creatinine assessed four times during hospitalization. Eighty-six variables evaluated at admission were included in the analysis. The k-medoids algorithm was used for clustering, and the quality of the procedure was judged by the Davies-Bouldin index. Three clinically and prognostically different clusters were distinguished. The groups had significantly ( = 0.004) different incidences of WRF. Inside the AHF population, we successfully discovered that three groups varied in renal prognosis. Our results provide novel insight into the AHF and WRF interplay and can be valuable for future trial construction and more tailored treatment.
急性心力衰竭(AHF)是一种常见且严重的病症,预后不良。其病程常因肾功能恶化(WRF)而复杂化,从而使预后更差。出现 WRF 的 AHF 患者人群存在异质性,最近出现了一些分析其的新方法。聚类是一种机器学习(ML)技术,它根据病例(患者)的相似性将人群分为不同的亚组。基于此,我们决定使用聚类在 AHF 人群中找到在 WRF 发生方面存在差异的亚组。我们评估了在我们机构住院的 312 名 AHF 患者的数据,这些患者在住院期间进行了四次肌酐评估。在分析中纳入了入院时评估的 86 个变量。使用 k-medoids 算法进行聚类,并通过 Davies-Bouldin 指数判断该过程的质量。区分出了三个在临床和预后方面有显著差异的聚类。这些组的 WRF 发生率有显著差异(=0.004)。在 AHF 人群中,我们成功地发现三组在肾脏预后方面存在差异。我们的结果提供了对 AHF 和 WRF 相互作用的新见解,对于未来的试验构建和更有针对性的治疗可能具有重要价值。