Literature DB >> 23224919

Role of biological and non biological factors in congestive heart failure mortality: PREDICE-SCORE: a clinical prediction rule.

Agustín Gómez de la Cámara1, Juan Manuel Guerravales, Purificación Magán Tapia, Eva Andrés Esteban, Silvia Vázquez Fernández del Pozo, Enrique Calderón Sandubete, Francisco J Medrano Ortega, Asunción Navarro Puerto, Ignacio Marín-León.   

Abstract

BACKGROUND: Congestive heart failure (HF) is a chronic, frequent and disabling condition but with a modifiable course and a large potential for improving. The aim of this project was to develop a clinical prediction model of biological and non biological factors in patients with first diagnosis of HF that facilitates the risk-stratification and decision-making process at the point of care. METHODS AND
RESULTS: Historical cohort analysis of 600 patients attended at three tertiary hospitals and diagnosed of a first episode of HF according Framingham criteria. There were followed 1 year. We analyzed sociodemographic, clinical and laboratory data with potential prognostic value. The modelling process concluded into a logistic regression multivariable analysis and a predictive rule: PREDICE SCORE. Age, dependency for daily basic activities, creatinine clearance, sodium levels at admission and systolic dysfunction diagnosis (HF with left ventricular ejection fraction 〈 40%) were the selected variables. The model showed a c-statistic of 0.763. PREDICE Score, has range of 22 points to stratifications of 1-year mortality.
CONCLUSIONS: The follow-up of 600 patients hospitalized by a first episode of congestive HF, allowed us to obtain a predictive 1 year mortality model from the combination of demographic data, routine biochemistry and easy handling social and functional variables at the point of care. The variables included were non-invasive, undemanding to collect, and widely available. It allows for risk stratification and therapeutical targeting and may help in the clinical decisions process in a sustainable way.

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Year:  2012        PMID: 23224919     DOI: 10.5603/cj.2012.0108

Source DB:  PubMed          Journal:  Cardiol J        ISSN: 1898-018X            Impact factor:   2.737


  3 in total

1.  Modeling clinical context: rediscovering the social history and evaluating language from the clinic to the wards.

Authors:  Colin Walsh; Noémie Elhadad
Journal:  AMIA Jt Summits Transl Sci Proc       Date:  2014-04-07

Review 2.  Untapped potential of multicenter studies: a review of cardiovascular risk prediction models revealed inappropriate analyses and wide variation in reporting.

Authors:  L Wynants; D M Kent; D Timmerman; C M Lundquist; B Van Calster
Journal:  Diagn Progn Res       Date:  2019-02-22

3.  The prognosis of patients hospitalized with a first episode of heart failure, validation of two scores: PREDICE and AHEAD.

Authors:  Francisco Ruiz-Ruiz; Miguel Menéndez-Orenga; Francisco J Medrano; Enrique J Calderón; David Lora-Pablos; Maria Asunción Navarro-Puerto; Patricia Rodríguez-Torres; Agustín Gómez de la Cámara
Journal:  Clin Epidemiol       Date:  2019-07-22       Impact factor: 4.790

  3 in total

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