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SHR Neuro Krebs Kardio Lipid Stoffw Microb

Borensztajn, DM; Hagedoorn, NN; Carrol, ED; von, Both, U; Dewez, JE; Emonts, M; van, der, Flier, M; de, Groot, R; Herberg, J; Kohlmaier, B; Lim, E; Maconochie, IK; Martinon-Torres, F; Nieboer, D; Nijman, RG; Oostenbrink, R; Pokorn, M; Calle, IR; Strle, F; Tsolia, M; Vermont, CL; Yeung, S; Zavadska, D; Zenz, W; Levin, M; Moll, HA, , PERFORM, consortium:, Personalised, Risk, assessment, in, febrile, children, to, optimise, Real-life, Management, across, the, European, Union.
A NICE combination for predicting hospitalisation at the Emergency Department: a European multicentre observational study of febrile children.
Lancet Reg Health Eur. 2021; 8: 100173 Doi: 10.1016/j.lanepe.2021.100173 [OPEN ACCESS]
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Co-Autor*innen der Med Uni Graz
Kohlmaier Benno
Zenz Werner
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Abstract:
Background: Prolonged Emergency Department (ED) stay causes crowding and negatively impacts quality of care. We developed and validated a prediction model for early identification of febrile children with a high risk of hospitalisation in order to improve ED flow. Methods: The MOFICHE study prospectively collected data on febrile children (0-18 years) presenting to 12 European EDs. A prediction models was constructed using multivariable logistic regression and included patient characteristics available at triage. We determined the discriminative values of the model by calculating the area under the receiver operating curve (AUC). Findings: Of 38,424 paediatric encounters, 9,735 children were admitted to the ward and 157 to the PICU. The prediction model, combining patient characteristics and NICE alarming, yielded an AUC of 0.84 (95%CI 0.83-0.84).The model performed well for a rule-in threshold of 75% (specificity 99.0% (95%CI 98.9-99.1%, positive likelihood ratio 15.1 (95%CI 13.4-17.1), positive predictive value 0.84 (95%CI 0.82-0.86)) and a rule-out threshold of 7.5% (sensitivity 95.4% (95%CI 95.0-95.8), negative likelihood ratio 0.15 (95%CI 0.14-0.16), negative predictive value 0..95 (95%CI 0.95-9.96)). Validation in a separate dataset showed an excellent AUC of 0.91 (95%CI 0.90- 0.93). The model performed well for identifying children needing PICU admission (AUC 0.95, 95%CI 0.93-0.97). A digital calculator was developed to facilitate clinical use. Interpretation: Patient characteristics and NICE alarming signs available at triage can be used to identify febrile children at high risk for hospitalisation and can be used to improve ED flow. Funding: European Union, NIHR, NHS.

Find related publications in this database (Keywords)
Emgerency Department
Febrile children
Crowding
Admission prediction
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