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. 2020 May:105:103410.
doi: 10.1016/j.jbi.2020.103410. Epub 2020 Apr 8.

Development and validation of early warning score system: A systematic literature review

Affiliations

Development and validation of early warning score system: A systematic literature review

Li-Heng Fu et al. J Biomed Inform. 2020 May.

Abstract

Objectives: This review aims to: 1) evaluate the quality of model reporting, 2) provide an overview of methodology for developing and validating Early Warning Score Systems (EWSs) for adult patients in acute care settings, and 3) highlight the strengths and limitations of the methodologies, as well as identify future directions for EWS derivation and validation studies.

Methodology: A systematic search was conducted in PubMed, Cochrane Library, and CINAHL. Only peer reviewed articles and clinical guidelines regarding developing and validating EWSs for adult patients in acute care settings were included. 615 articles were extracted and reviewed by five of the authors. Selected studies were evaluated based on the Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis (TRIPOD) checklist. The studies were analyzed according to their study design, predictor selection, outcome measurement, methodology of modeling, and validation strategy.

Results: A total of 29 articles were included in the final analysis. Twenty-six articles reported on the development and validation of a new EWS, while three reported on validation and model modification. Only eight studies met more than 75% of the items in the TRIPOD checklist. Three major techniques were utilized among the studies to inform their predictive algorithms: 1) clinical-consensus models (n = 6), 2) regression models (n = 15), and 3) tree models (n = 5). The number of predictors included in the EWSs varied from 3 to 72 with a median of seven. Twenty-eight models included vital signs, while 11 included lab data. Pulse oximetry, mental status, and other variables extracted from electronic health records (EHRs) were among other frequently used predictors. In-hospital mortality, unplanned transfer to the intensive care unit (ICU), and cardiac arrest were commonly used clinical outcomes. Twenty-eight studies conducted a form of model validation either within the study or against other widely-used EWSs. Only three studies validated their model using an external database separate from the derived database.

Conclusion: This literature review demonstrates that the characteristics of the cohort, predictors, and outcome selection, as well as the metrics for model validation, vary greatly across EWS studies. There is no consensus on the optimal strategy for developing such algorithms since data-driven models with acceptable predictive accuracy are often site-specific. A standardized checklist for clinical prediction model reporting exists, but few studies have included reporting aligned with it in their publications. Data-driven models are subjected to biases in the use of EHR data, thus it is particularly important to provide detailed study protocols and acknowledge, leverage, or reduce potential biases of the data used for EWS development to improve transparency and generalizability.

Keywords: Clinical predictive modeling; Decision support technique; Early warning scores; Electronic health records; Monitoring; Physiologic; Prognosis.

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Conflict of interest statement

Declaration of Competing Interest The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

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References

    1. Merchant RM, et al. Incidence of treated cardiac arrest in hospitalized patients in the United States. Crit Care Med, 2011. 39(11): p. 2401–6. - PMC - PubMed
    1. Bapoje SR, et al. Unplanned transfers to a medical intensive care unit: causes and relationship to preventable errors in care. J Hosp Med, 2011. 6(2): p. 68–72. - PubMed
    1. Hillman KM, et al. Duration of life-threatening antecedents prior to intensive care admission. Intensive Care Med, 2002. 28(11): p. 1629–34. - PubMed
    1. Kause J, et al. A comparison of antecedents to cardiac arrests, deaths and emergency intensive care admissions in Australia and New Zealand, and the United Kingdom--the ACADEMIA study. Resuscitation, 2004. 62(3): p. 275–82. - PubMed
    1. Morgan RJMWF; Wright MM , An Early Warning Scoring System for detecting developing critical illness. Clin Intens Care, 1997. 8:100.

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