4.7 Article

Machine Learning Approach to Understand Worsening Renal Function in Acute Heart Failure

期刊

BIOMOLECULES
卷 12, 期 11, 页码 -

出版社

MDPI
DOI: 10.3390/biom12111616

关键词

acute heart failure; machine learning; clustering; artificial intelligence; cardiorenal syndrome

资金

  1. European Union's Horizon 2020 research and innovation programme [857446]

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Acute heart failure (AHF) is a common and severe condition with a poor prognosis. This study used clustering analysis to identify three distinct subgroups within the AHF population based on differences in renal prognosis. The findings provide valuable insights into the interaction between AHF and worsening renal function (WRF), and can inform future trial design and personalized treatment.
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 (p = 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.

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