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Risk scoring tool to predict respiratory syncytial virus hospitalisation in premature infants

BACKGROUND: The objective was to develop a risk scoring tool which predicts respiratory syncytial virus hospitalisation (RSVH) in moderate‐late preterm infants (32‐35 weeks’ gestational age) in the Northern Hemisphere. METHODS: Risk factors for RSVH were pooled from six observational studies of infa...

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Autores principales: Blanken, Maarten O., Paes, Bosco, Anderson, Evan J., Lanari, Marcello, Sheridan‐Pereira, Margaret, Buchan, Scot, Fullarton, John R., Grubb, ElizaBeth, Notario, Gerard, Rodgers‐Gray, Barry S., Carbonell‐Estrany, Xavier
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6099524/
https://www.ncbi.nlm.nih.gov/pubmed/29405612
http://dx.doi.org/10.1002/ppul.23960
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author Blanken, Maarten O.
Paes, Bosco
Anderson, Evan J.
Lanari, Marcello
Sheridan‐Pereira, Margaret
Buchan, Scot
Fullarton, John R.
Grubb, ElizaBeth
Notario, Gerard
Rodgers‐Gray, Barry S.
Carbonell‐Estrany, Xavier
author_facet Blanken, Maarten O.
Paes, Bosco
Anderson, Evan J.
Lanari, Marcello
Sheridan‐Pereira, Margaret
Buchan, Scot
Fullarton, John R.
Grubb, ElizaBeth
Notario, Gerard
Rodgers‐Gray, Barry S.
Carbonell‐Estrany, Xavier
author_sort Blanken, Maarten O.
collection PubMed
description BACKGROUND: The objective was to develop a risk scoring tool which predicts respiratory syncytial virus hospitalisation (RSVH) in moderate‐late preterm infants (32‐35 weeks’ gestational age) in the Northern Hemisphere. METHODS: Risk factors for RSVH were pooled from six observational studies of infants born 32 weeks and 0 days to 35 weeks and 6 days without comorbidity from 2000 to 2014. Of 13 475 infants, 484 had RSVH in the first year of life. Logistic regression was used to identify the most predictive risk factors, based on area under the receiver operating characteristic curve (AUROC). The model was validated internally by 100‐fold bootstrapping and externally with data from a seventh observational study. The model coefficients were converted into rounded multipliers, stratified into risk groups, and number needed to treat (NNT) calculated. RESULTS: The risk factors identified in the model included (i) proximity of birth to the RSV season; (ii) second‐hand smoke exposure; and (iii) siblings and/or daycare. The AUROC was 0.773 (sensitivity: 68.9%; specificity: 73.0%). The mean AUROC from internal bootstrapping was 0.773. For external validation with data from Ireland, the AUROC was 0.707 using Irish coefficients and 0.681 using source model coefficients. Cut‐off scores for RSVH were ≤19 for low‐ (1.0%), 20‐45 for moderate‐ (3.3%), and 50‐56 (9.5%) for high‐risk infants. The high‐risk group captured 62.0% of RSVHs within 23.6% of the total population (NNT 15.3). CONCLUSIONS: This risk scoring tool has good predictive accuracy and can improve targeting for RSVH prevention in moderate‐late preterm infants.
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spelling pubmed-60995242018-08-24 Risk scoring tool to predict respiratory syncytial virus hospitalisation in premature infants Blanken, Maarten O. Paes, Bosco Anderson, Evan J. Lanari, Marcello Sheridan‐Pereira, Margaret Buchan, Scot Fullarton, John R. Grubb, ElizaBeth Notario, Gerard Rodgers‐Gray, Barry S. Carbonell‐Estrany, Xavier Pediatr Pulmonol Original Articles BACKGROUND: The objective was to develop a risk scoring tool which predicts respiratory syncytial virus hospitalisation (RSVH) in moderate‐late preterm infants (32‐35 weeks’ gestational age) in the Northern Hemisphere. METHODS: Risk factors for RSVH were pooled from six observational studies of infants born 32 weeks and 0 days to 35 weeks and 6 days without comorbidity from 2000 to 2014. Of 13 475 infants, 484 had RSVH in the first year of life. Logistic regression was used to identify the most predictive risk factors, based on area under the receiver operating characteristic curve (AUROC). The model was validated internally by 100‐fold bootstrapping and externally with data from a seventh observational study. The model coefficients were converted into rounded multipliers, stratified into risk groups, and number needed to treat (NNT) calculated. RESULTS: The risk factors identified in the model included (i) proximity of birth to the RSV season; (ii) second‐hand smoke exposure; and (iii) siblings and/or daycare. The AUROC was 0.773 (sensitivity: 68.9%; specificity: 73.0%). The mean AUROC from internal bootstrapping was 0.773. For external validation with data from Ireland, the AUROC was 0.707 using Irish coefficients and 0.681 using source model coefficients. Cut‐off scores for RSVH were ≤19 for low‐ (1.0%), 20‐45 for moderate‐ (3.3%), and 50‐56 (9.5%) for high‐risk infants. The high‐risk group captured 62.0% of RSVHs within 23.6% of the total population (NNT 15.3). CONCLUSIONS: This risk scoring tool has good predictive accuracy and can improve targeting for RSVH prevention in moderate‐late preterm infants. John Wiley and Sons Inc. 2018-02-06 2018-05 /pmc/articles/PMC6099524/ /pubmed/29405612 http://dx.doi.org/10.1002/ppul.23960 Text en © 2018 The Authors. Pediatric Pulmonology Published by Wiley Periodicals. This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited and is not used for commercial purposes.
spellingShingle Original Articles
Blanken, Maarten O.
Paes, Bosco
Anderson, Evan J.
Lanari, Marcello
Sheridan‐Pereira, Margaret
Buchan, Scot
Fullarton, John R.
Grubb, ElizaBeth
Notario, Gerard
Rodgers‐Gray, Barry S.
Carbonell‐Estrany, Xavier
Risk scoring tool to predict respiratory syncytial virus hospitalisation in premature infants
title Risk scoring tool to predict respiratory syncytial virus hospitalisation in premature infants
title_full Risk scoring tool to predict respiratory syncytial virus hospitalisation in premature infants
title_fullStr Risk scoring tool to predict respiratory syncytial virus hospitalisation in premature infants
title_full_unstemmed Risk scoring tool to predict respiratory syncytial virus hospitalisation in premature infants
title_short Risk scoring tool to predict respiratory syncytial virus hospitalisation in premature infants
title_sort risk scoring tool to predict respiratory syncytial virus hospitalisation in premature infants
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6099524/
https://www.ncbi.nlm.nih.gov/pubmed/29405612
http://dx.doi.org/10.1002/ppul.23960
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