Phenotyping of heart failure with preserved ejection faction using electronic health records and echocardiography

Author:

Pierre-Jean Morgane1ORCID,Marut Benjamin1,Curtis Elizabeth1,Galli Elena1ORCID,Cuggia Marc1ORCID,Bouzillé Guillaume1,Donal Erwan1ORCID

Affiliation:

1. CHU Rennes, Inserm, University of Rennes, LTSI—UMR 1099 , hopital Pontchaillou, rue Henri Le Guillou, 35000 Rennes , France

Abstract

Abstract Aims Patients presenting symptoms of heart failure with preserved ejection fraction (HFpEF) are not a homogenous population. Different phenotypes can differ in prognosis and optimal management strategies. We sought to identify phenotypes of HFpEF by using the medical information database from a large university hospital centre using machine learning. Methods and results We explored the use of clinical variables from electronic health records in addition to echocardiography to identify different phenotypes of patients with HFpEF. The proposed methodology identifies four phenotypic clusters based on both clinical and echocardiographic characteristics, which have differing prognoses (death and cardiovascular hospitalization). Conclusion This work demonstrated that artificial intelligence–derived phenotypes could be used as a tool for physicians to assess risk and to target therapies that may improve outcomes.

Publisher

Oxford University Press (OUP)

Subject

Pharmacology

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