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In-hospital Death Prediction by Multilevel Logistic Regressin in Patients with Acute Coronary Syndromes

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    0420946 - ÚI 2014 RIV CZ eng J - Journal Article
    Reissigová, Jindra - Monhart, Z. - Zvárová, Jana - Hanzlíček, Petr - Grünfeldová, H. - Janský, P. - Vojáček, J. - Widimský, P.
    In-hospital Death Prediction by Multilevel Logistic Regressin in Patients with Acute Coronary Syndromes.
    European Journal for Biomedical Informatics. Roč. 9, č. 1 (2013), s. 11-17. ISSN 1801-5603
    Institutional support: RVO:67985807
    Keywords : multilevel logistic regression * acute coronary syndromes * risk factors * in-hospital death
    Subject RIV: IN - Informatics, Computer Science

    Background: The odds of death of patients with acute coronary syndromes (ACS) in non-PCI (percutaneous coronary intervention) hospitals in the Czech Republic change depending on a number of factors (age, heart rate, systolic blood pressure, creatinine, Killip class, the diagnosis, and the number of recommended medications and treatment of ACE-inhibitor or sartan). Objectives: We present a detailed description of multilevel logistic regression applied in the derivation of the conclusion described in the Background, namely we compare multilevel logistic regression with logistic regression. Methods: The above mentioned clinical findings have been derived on the basis of data from the three-year (7/2008-6/2011) registry of acute coronary syndromes ALERT-CZ (Acute coronary syndromes – Longitudinal Evaluation of Real-life Treatment in non-PCI hospitals in the Czech Republic). A total of 32 hospitals contributed into the registry. The number of patients with ACS (n=6013) in the hospitals varied from 15 to 827. Results: The likelihood ratio test showed that the independence of medical outcomes across hospitals cannot be assumed (p<0.001, the variance partition coefficient VPC=8.9%). For this reason, we chose multilevel logistic regression to analyse data, specifically logistic mixed regression (the hospital identity was a random effect). The calibration properties of this model were very good (Hosmer-Lemeshow test, p=0.989). The total discriminant ability of the model was 91.8%. Conclusions: Considering some differences among hospitals, it was appropriate to take into account patient affiliation to various hospitals and to use multilevel logistic regression instead of logistic regression.
    Permanent Link: http://hdl.handle.net/11104/0227412

     
     
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