作者
Alexander J. Martin,Fabian van der Velden,Ulrich von Both,Μαρία Τσολιά,Werner Zenz,Manfred Sagmeister,Clementien L. Vermont,Gabriella de Vries,Laura Kolberg,Emma Lim,Marko Pokorn,Dace Zavadska,Federico Martinón‐Torres,Irene Rivero‐Calle,Nienke N. Hagedoorn,Effua Usuf,Luregn J. Schlapbach,Taco W. Kuijpers,Andrew J. Pollard,Shunmay Yeung,Colin G. Fink,Marie Voice,Enitan D. Carrol,Philipp Agyeman,Aakash Khanijau,Stéphane Paulus,Tisham De,Jethro Herberg,Michael Levin,Michiel van der Flier,Ronald de Groot,Ruud Nijman,Marieke Emonts
摘要
Objective To externally validate and update the Feverkids tool clinical prediction model for differentiating bacterial pneumonia and other serious bacterial infections (SBIs) from non-SBI causes of fever in immunocompromised children. Design International, multicentre, prospective observational study embedded in PErsonalised Risk assessment in Febrile illness to Optimise Real-life Management across the European Union (PERFORM). Setting Fifteen teaching hospitals in nine European countries. Participants Febrile immunocompromised children aged 0–18 years. Methods The Feverkids clinical prediction model predicted the probability of bacterial pneumonia, other SBI or no SBI. Model discrimination, calibration and diagnostic performance at different risk thresholds were assessed. The model was then re-fitted and updated. Results Of 558 episodes, 21 had bacterial pneumonia, 104 other SBI and 433 no SBI. Discrimination was 0.83 (95% CI 0.71 to 0.90) for bacterial pneumonia, with moderate calibration and 0.67 (0.61 to 0.72) for other SBIs, with poor calibration. After model re-fitting, discrimination improved to 0.88 (0.79 to 0.96) and 0.71 (0.65 to 0.76) and calibration improved. Predicted risk <1% ruled out bacterial pneumonia with sensitivity 0.95 (0.86 to 1.00) and negative likelihood ratio (LR) 0.09 (0.00 to 0.32). Predicted risk >10% ruled in bacterial pneumonia with specificity 0.91 (0.88 to 0.94) and positive LR 6.51 (3.71 to 10.3). Predicted risk <10% ruled out other SBIs with sensitivity 0.92 (0.87 to 0.97) and negative LR 0.32 (0.13 to 0.57). Predicted risk >30% ruled in other SBIs with specificity 0.89 (0.86 to 0.92) and positive LR 2.86 (1.91 to 4.25). Conclusion Discrimination and calibration were good for bacterial pneumonia but poorer for other SBIs. The rule-out thresholds have the potential to reduce unnecessary investigations and antibiotics in this high-risk group.