Objectives To develop and cross-validate a multivariable clinical prediction model to identify invasive bacterial infections (IBI) and to identify patient groups who might benefit from new biomarkers. Design Prospective observational study. Setting 12 emergency departments (EDs) in 8 European countries. Patients Febrile children aged 0–18 years. Main outcome measures IBI, defined as bacteraemia, meningitis and bone/joint infection. We derived and cross-validated a model for IBI using variables from the Feverkidstool (clinical symptoms, C reactive protein), neurological signs, non-blanching rash and comorbidity. We assessed discrimination (area under the receiver operating curve) and diagnostic performance at different risk thresholds for IB...
Funding Information: The study was partially derived from the PERFORM (Personalised Risk Assessment ...
OBJECTIVE To externally validate and update the Feverkids tool clinical prediction model for diff...
Objective: To externally validate and update the Feverkids tool clinical prediction model for differ...
ObjectivesTo develop and cross-validate a multivariable clinical prediction model to identify invasi...
Funding Information: Funding This project has received funding from the European Union’s Horizon 202...
Funding Information: Funding This project has received funding from the European Union’s Horizon 202...
Funding Information: Funding This project has received funding from the European Union’s Horizon 202...
Improving the diagnosis of serious bacterial infections (SBIs) in the children's emergency departmen...
BACKGROUND: Improving the diagnosis of serious bacterial infections (SBIs) in the children's emergen...
Objective: To derive, cross validate, and externally validate a clinical prediction model that asses...
Background Acute febrile illness is a common presentation to the children’s Emergency Department (E...
Objective To externally validate and update the Feverkids tool clinical prediction model for differe...
Objectives To assess the impact of a clinical decision model for febrile children at risk for seriou...
Funding Information: The study was partially derived from the PERFORM (Personalised Risk Assessment ...
\ua9 2023 Author(s). Published by BMJ.Objective: To externally validate and update the Feverkids too...
Funding Information: The study was partially derived from the PERFORM (Personalised Risk Assessment ...
OBJECTIVE To externally validate and update the Feverkids tool clinical prediction model for diff...
Objective: To externally validate and update the Feverkids tool clinical prediction model for differ...
ObjectivesTo develop and cross-validate a multivariable clinical prediction model to identify invasi...
Funding Information: Funding This project has received funding from the European Union’s Horizon 202...
Funding Information: Funding This project has received funding from the European Union’s Horizon 202...
Funding Information: Funding This project has received funding from the European Union’s Horizon 202...
Improving the diagnosis of serious bacterial infections (SBIs) in the children's emergency departmen...
BACKGROUND: Improving the diagnosis of serious bacterial infections (SBIs) in the children's emergen...
Objective: To derive, cross validate, and externally validate a clinical prediction model that asses...
Background Acute febrile illness is a common presentation to the children’s Emergency Department (E...
Objective To externally validate and update the Feverkids tool clinical prediction model for differe...
Objectives To assess the impact of a clinical decision model for febrile children at risk for seriou...
Funding Information: The study was partially derived from the PERFORM (Personalised Risk Assessment ...
\ua9 2023 Author(s). Published by BMJ.Objective: To externally validate and update the Feverkids too...
Funding Information: The study was partially derived from the PERFORM (Personalised Risk Assessment ...
OBJECTIVE To externally validate and update the Feverkids tool clinical prediction model for diff...
Objective: To externally validate and update the Feverkids tool clinical prediction model for differ...