Author:
Martins Catarina,Neves Bernardo,Teixeira Andreia Sofia,Froes Miguel,Sarmento Pedro,Machado Jaime,Magalhães Carlos A.,Silva Nuno A.,Silva Mário J.,Leite Francisca
Abstract
AbstractThis study presents a workflow for identifying and characterizing patients with Heart Failure (HF) and multimorbidity utilizing data from Electronic Health Records. Multimorbidity, the co-occurrence of two or more chronic conditions, poses a significant challenge on healthcare systems. Nonetheless, understanding of patients with multimorbidity, including the most common disease interactions, risk factors, and treatment responses, remains limited, particularly for complex and heterogeneous conditions like HF. We conducted a clustering analysis of 3745 HF patients using demographics, comorbidities, laboratory values, and drug prescriptions. Our analysis revealed four distinct clusters with significant differences in multimorbidity profiles showing differential prognostic implications regarding unplanned hospital admissions. These findings underscore the considerable disease heterogeneity within HF patients and emphasize the potential for improved characterization of patient subgroups for clinical risk stratification through the use of EHR data.
Publisher
Springer Science and Business Media LLC
Cited by
1 articles.
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