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Multimorbidity patterns in patients with heart failure: an observational Spanish study based on electronic health records. | LitMetric

AI Article Synopsis

  • The study aimed to analyze the comorbidities associated with heart failure (HF) in both men and women, focusing on their patterns and how these affect hospitalisation and mortality risks.
  • Conducted in Aragón, Spain, the research utilized electronic health records from over 14,000 HF patients to identify prevalent chronic diseases and their clustering into six specific multimorbidity patterns.
  • Findings showed that nearly all HF patients had multiple chronic conditions, with distinct patterns linked to varying levels of hospitalisation and mortality risk, highlighting the importance of understanding these patterns for better patient management.

Article Abstract

Objectives: To characterise the comorbidities of heart failure (HF) in men and women, to explore their clustering into multimorbidity patterns, and to measure the impact of such patterns on the risk of hospitalisation and mortality.

Design: Observational retrospective population study based on electronic health records.

Setting: EpiChron Cohort (Aragón, Spain).

Participants: All the primary and hospital care patients of the EpiChron Cohort with a diagnosis of HF on 1 January 2011 (ie, 8488 women and 6182 men). We analysed all the chronic diseases registered in patients' electronic health records until 31 December 2011.

Primary Outcome: We performed an exploratory factor analysis to identify the multimorbidity patterns in men and women, and logistic and Cox proportional-hazards regressions to investigate the association between the patterns and the risk of hospitalisation in 2012, and of 3-year mortality.

Results: Almost all HF patients (98%) had multimorbidity, with an average of 7.8 chronic diseases per patient. We identified six different multimorbidity patterns, named cardiovascular, neurovascular, coronary, metabolic, degenerative and respiratory. The most prevalent were the degenerative (64.0%) and cardiovascular (29.9%) patterns in women, and the metabolic (49.3%) and cardiovascular (43.2%) patterns in men. Every pattern was associated with higher hospitalisation risks; and the cardiovascular, neurovascular and respiratory patterns significantly increased the likelihood of 3-year mortality.

Conclusions: Multimorbidity is the norm rather than the exception in patients with heart failure, whose comorbidities tend to cluster together beyond simple chance in the form of multimorbidity patterns that have different impact on health outcomes. This knowledge could be useful to better understand common pathophysiological pathways underlying this condition and its comorbidities, and the factors influencing the prognosis of men and women with HF. Further large scale longitudinal studies are encouraged to confirm the existence of these patterns as well as their differential impact on health outcomes.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7008407PMC
http://dx.doi.org/10.1136/bmjopen-2019-033174DOI Listing

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