Predicting the risk of respiratory distress in newborns with congenital pulmonary malformations
- PMID: 34266941
- DOI: 10.1183/13993003.00949-2021
Predicting the risk of respiratory distress in newborns with congenital pulmonary malformations
Abstract
Objectives: Most children with prenatally diagnosed congenital pulmonary malformations (CPMs) are asymptomatic at birth. We aimed to develop a parsimonious prognostic model for predicting the risk of neonatal respiratory distress (NRD) in preterm and term infants with CPM, based on the prenatal attributes of the malformation.
Methods: MALFPULM is a prospective population-based nationally representative cohort including 436 pregnant women. The main predictive variable was the CPM volume ratio (CVR) measured at diagnosis (CVR first) and the highest CVR measured (CVR max). Separate models were estimated for preterm and term infants and were validated by bootstrapping.
Results: In total, 67 of the 383 neonates studied (17%) had NRD. For infants born at term (>37 weeks, n=351), the most parsimonious model included CVR max as the only predictive variable (receiver operating characteristic (ROC) curve area: 0.70±0.04, negative predictive value: 0.91). The probability of NRD increased linearly with increasing CVR max and remained below 10% for CVR max <0.4. In preterm infants (n=32), both CVR max and gestational age were important predictors of the risk of NRD (ROC: 0.85±0.07). Models based on CVR first had a similar predictive ability.
Conclusions: Predictive models based exclusively on CVR measurements had a high negative predictive value in infants born at term. Our study results could contribute to the individualised general risk assessment to guide decisions about the need for newborns with prenatally diagnosed CPM to be delivered at specialised centres.
Trial registration: ClinicalTrials.gov NCT02352207.
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Conflict of interest statement
Conflict of interest: C. Delacourt has nothing to disclose. Conflict of interest: N. Bertille has nothing to disclose. Conflict of interest: L.J. Salomon has nothing to disclose. Conflict of interest: M. Rahshenas has nothing to disclose. Conflict of interest: A. Benachi has nothing to disclose. Conflict of interest: A. Bonnard has nothing to disclose. Conflict of interest: L. Choupeaux has nothing to disclose. Conflict of interest: V. Fouquet has nothing to disclose. Conflict of interest: V. Goua has nothing to disclose. Conflict of interest: F. Hameury has nothing to disclose. Conflict of interest: E. Hervieux has nothing to disclose. Conflict of interest: J-M. Jouannic has nothing to disclose. Conflict of interest: N. Khen-Dunlop has nothing to disclose. Conflict of interest: G. Le Bouar has nothing to disclose. Conflict of interest: J. Massardier has nothing to disclose. Conflict of interest: L. Roditis has nothing to disclose. Conflict of interest: J. Rosenblatt has nothing to disclose. Conflict of interest: A. Sartor has nothing to disclose. Conflict of interest: C. Thong-Vanh has nothing to disclose. Conflict of interest: N. Lelong has nothing to disclose. Conflict of interest: B. Khoshnood has nothing to disclose.
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