Mathematical Modeling of the Biomarker Milieu to Characterize Preterm Birth and Predict Adverse Neonatal Outcomes
Problem To identify preterm neonates at risk for adverse neonatal outcomes. Method of Study A nested case–control study from the prospectively followed Boston Birth Cohort of mother–neonate pairs was performed. A classification model for preterm‐born neonates was derived from 27 cord blood biomarker...
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Veröffentlicht in: | American journal of reproductive immunology (1989) 2016-05, Vol.75 (5), p.594-601 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Problem
To identify preterm neonates at risk for adverse neonatal outcomes.
Method of Study
A nested case–control study from the prospectively followed Boston Birth Cohort of mother–neonate pairs was performed. A classification model for preterm‐born neonates was derived from 27 cord blood biomarkers using orthogonal projections to latent structures discriminant analysis. Predictive relationships were made between biomarkers and adverse outcomes using logistic regression.
Results
From 926 births (53% of which were preterm), using weighted values for 27 biomarkers, a score was created that classified 73% of preterm deliveries. Soluble TNF‐R1, NT‐3, MCP‐1, BDNF, IL‐4, MMP‐9, TREM‐1, TNF‐α, IL‐5 and IL‐10 were most influential. Our model was more sensitive for birth |
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ISSN: | 1046-7408 1600-0897 |
DOI: | 10.1111/aji.12502 |