Development and validation of predictive model for long-term hospitalization, readmission, and in-hospital death of patients over 60 years old

ABSTRACT Objective To develop and validate a high-risk predictive model that identifies, at least, one common adverse event in older population: early readmission (up to 30 days after discharge), long hospital stays (10 days or more) or in-hospital deaths. Methods This was a retrospective cohort study including patients aged 60 years or older (n=340) admitted at a 630-beds tertiary hospital, located in the city of São Paulo, Brazil. A predictive model of high-risk indication was developed by analyzing logistical regression models. This model prognostic capacity was assessed by measuring accuracy, sensitivity, specificity, and positive and negative predictive values. Areas under the receiver operating characteristic curve with 95% confidence intervals were also obtained to assess the discriminatory power of the model. Internal validation of the prognostic model was performed in a separate sample (n=168). Results Statistically significant predictors were identified, such as current Barthel Index, number of medications in use, presence of diabetes mellitus, difficulty chewing or swallowing, extensive surgery, and dementia. The study observed discrimination model acceptance in the construction sample 0.77 (95% confidence interval: 0.71-0.83) and good calibration. The characteristics of the validation samples were similar, and the receiver operating characteristic curve area was 0.687 (95% confidence interval: 0.598-0.776). We could assess an older patient’s adverse health events during hospitalization after admission. Conclusion A predictive model with acceptable discrimination was obtained, with satisfactory results for early readmission (30 days), long hospital stays (10 days), or in-hospital death.

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Bibliographic Details
Main Authors: Costa,Maria Luiza Monteiro, Mafra,Ana Carolina Cintra Nunes, Cendoroglo,Maysa Seabra, Rodrigues,Patrícia Silveira, Ferreira,Milene Silva, Studenski,Stephanie A., Franco,Fábio Gazelato de Mello
Format: Digital revista
Language:English
Published: Instituto Israelita de Ensino e Pesquisa Albert Einstein 2022
Online Access:http://old.scielo.br/scielo.php?script=sci_arttext&pid=S1679-45082022000100268
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