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Development of a predictive model of hospitalization in primary care patients with heart failure

Author

Listed:
  • Luis García-Olmos
  • Río Aguilar
  • David Lora
  • Montse Carmona
  • Angel Alberquilla
  • Rebeca García-Caballero
  • Luis Sánchez-Gómez
  • the CHIC Group

Abstract

Background: Heart failure (HF) is the leading cause of hospitalization in people over age 65. Predictive hospital admission models have been developed to help reduce the number of these patients. Aim: To develop and internally validate a model to predict hospital admission in one-year for any non-programmed cause in heart failure patients receiving primary care treatment. Design and setting: Cohort study, prospective. Patients treated in family medicine clinics. Methods: Logistic regression analysis was used to estimate the association between the predictors and the outcome, i.e. unplanned hospitalization over a 12-month period. The predictive model was built in several steps. The initial examination included a set of 31 predictors. Bootstrapping was used for internal validation. Results: The study included 251 patients, 64 (25.5%) of whom were admitted to hospital for some unplanned cause over the 12 months following their date of inclusion in the study. Four predictive variables of hospitalization were identified: NYHA class III-IV, OR (95% CI) 2.46 (1.23–4.91); diabetes OR (95% CI) 1.94 (1.05–3.58); COPD OR (95% CI) 3.17 (1.45–6.94); MLHFQ Emotional OR (95% CI) 1.07 (1.02–1.12). AUC 0.723; R2N 0.17; Hosmer-Lemeshow 0.815. Internal validation AUC 0.706.; R2N 0.134 Conclusion: This is a simple model to predict hospitalization over a 12-month period based on four variables: NYHA functional class, diabetes, COPD and the emotional dimension of the MLHFQ scale. It has an acceptable discriminative capacity enabling the identification of patients at risk of hospitalization.

Suggested Citation

  • Luis García-Olmos & Río Aguilar & David Lora & Montse Carmona & Angel Alberquilla & Rebeca García-Caballero & Luis Sánchez-Gómez & the CHIC Group, 2019. "Development of a predictive model of hospitalization in primary care patients with heart failure," PLOS ONE, Public Library of Science, vol. 14(8), pages 1-12, August.
  • Handle: RePEc:plo:pone00:0221434
    DOI: 10.1371/journal.pone.0221434
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