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Prediction of retinopathy of prematurity using the screening algorithm WINROP in a Saudi cohort of preterm infants

OBJECTIVES: To validate the web weight gain-based WINROP (weight, insulin-like growth factor I, neonatal, retinopathy of prematurity [ROP]) algorithm retrospectively to identify type 1 ROP in a Saudi cohort of premature infants. METHODS: The records of preterm infants (>23 and <32 weeks gestat...

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Autores principales: Raffa, Lina H., Alessa, Sarah K., Alamri, Aliaa S., Malaikah, Rawan H.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Saudi Medical Journal 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7502953/
https://www.ncbi.nlm.nih.gov/pubmed/32518929
http://dx.doi.org/10.15537/smj.2020.6.25127
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author Raffa, Lina H.
Alessa, Sarah K.
Alamri, Aliaa S.
Malaikah, Rawan H.
author_facet Raffa, Lina H.
Alessa, Sarah K.
Alamri, Aliaa S.
Malaikah, Rawan H.
author_sort Raffa, Lina H.
collection PubMed
description OBJECTIVES: To validate the web weight gain-based WINROP (weight, insulin-like growth factor I, neonatal, retinopathy of prematurity [ROP]) algorithm retrospectively to identify type 1 ROP in a Saudi cohort of premature infants. METHODS: The records of preterm infants (>23 and <32 weeks gestation) born between August 2013 and October 2018, were reviewed. Birth weight, gestational age, and weekly weight measurements of the premature infants were entered online. Based on weekly weight gain, the WINROP algorithm alerted clinicians whether infants were at high-risk for vision-threatening type 1 ROP. Sensitivity, specificity, positive and negative predictive values were calculated. RESULTS: The median gestational age of the infants at birth was 28 weeks, with median birth weight at 1085 g. Of the 175 infants included in the study, 13 (7.4%) developed type 1 ROP. WINROP positive alarm was triggered in 70.9% (124/175) of all infants and 100% (13/13) of those treated for type 1 ROP. The specificity of the algorithm was 31.5%. Positive predictive values was 10.5% and negative was 100%. CONCLUSION: The general WINROP sensitivity in identifying type 1 ROP was 100% similar to that reported in developed countries; however, its specificity was low at 31.5%. Tweaking of the algorithm based on the population may increase the specificity and promote the practical utility of this non-invasive screening tool for ophthalmologists and neonatologists in this population.
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spelling pubmed-75029532021-03-09 Prediction of retinopathy of prematurity using the screening algorithm WINROP in a Saudi cohort of preterm infants Raffa, Lina H. Alessa, Sarah K. Alamri, Aliaa S. Malaikah, Rawan H. Saudi Med J Original Article OBJECTIVES: To validate the web weight gain-based WINROP (weight, insulin-like growth factor I, neonatal, retinopathy of prematurity [ROP]) algorithm retrospectively to identify type 1 ROP in a Saudi cohort of premature infants. METHODS: The records of preterm infants (>23 and <32 weeks gestation) born between August 2013 and October 2018, were reviewed. Birth weight, gestational age, and weekly weight measurements of the premature infants were entered online. Based on weekly weight gain, the WINROP algorithm alerted clinicians whether infants were at high-risk for vision-threatening type 1 ROP. Sensitivity, specificity, positive and negative predictive values were calculated. RESULTS: The median gestational age of the infants at birth was 28 weeks, with median birth weight at 1085 g. Of the 175 infants included in the study, 13 (7.4%) developed type 1 ROP. WINROP positive alarm was triggered in 70.9% (124/175) of all infants and 100% (13/13) of those treated for type 1 ROP. The specificity of the algorithm was 31.5%. Positive predictive values was 10.5% and negative was 100%. CONCLUSION: The general WINROP sensitivity in identifying type 1 ROP was 100% similar to that reported in developed countries; however, its specificity was low at 31.5%. Tweaking of the algorithm based on the population may increase the specificity and promote the practical utility of this non-invasive screening tool for ophthalmologists and neonatologists in this population. Saudi Medical Journal 2020-06 /pmc/articles/PMC7502953/ /pubmed/32518929 http://dx.doi.org/10.15537/smj.2020.6.25127 Text en Copyright: © Saudi Medical Journal http://creativecommons.org/licenses/by-nc This is an open-access article distributed under the terms of the Creative Commons Attribution-Noncommercial License (CC BY-NC), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Article
Raffa, Lina H.
Alessa, Sarah K.
Alamri, Aliaa S.
Malaikah, Rawan H.
Prediction of retinopathy of prematurity using the screening algorithm WINROP in a Saudi cohort of preterm infants
title Prediction of retinopathy of prematurity using the screening algorithm WINROP in a Saudi cohort of preterm infants
title_full Prediction of retinopathy of prematurity using the screening algorithm WINROP in a Saudi cohort of preterm infants
title_fullStr Prediction of retinopathy of prematurity using the screening algorithm WINROP in a Saudi cohort of preterm infants
title_full_unstemmed Prediction of retinopathy of prematurity using the screening algorithm WINROP in a Saudi cohort of preterm infants
title_short Prediction of retinopathy of prematurity using the screening algorithm WINROP in a Saudi cohort of preterm infants
title_sort prediction of retinopathy of prematurity using the screening algorithm winrop in a saudi cohort of preterm infants
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7502953/
https://www.ncbi.nlm.nih.gov/pubmed/32518929
http://dx.doi.org/10.15537/smj.2020.6.25127
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