Jadavji Laboratory



Biomedical Sciences

Southern Illinois University



Postnatal gestational age estimation via newborn screening analysis: application and potential


Journal article


Lindsay A Wilson, Malia S Q Murphy, R. Ducharme, K. Denize, N. Jadavji, B. Potter, J. Little, P. Chakraborty, S. Hawken, K. Wilson
Espert Review of Proteomics, 2019

Semantic Scholar DOI PubMedCentral PubMed
Cite

Cite

APA   Click to copy
Wilson, L. A., Murphy, M. S. Q., Ducharme, R., Denize, K., Jadavji, N., Potter, B., … Wilson, K. (2019). Postnatal gestational age estimation via newborn screening analysis: application and potential. Espert Review of Proteomics.


Chicago/Turabian   Click to copy
Wilson, Lindsay A, Malia S Q Murphy, R. Ducharme, K. Denize, N. Jadavji, B. Potter, J. Little, P. Chakraborty, S. Hawken, and K. Wilson. “Postnatal Gestational Age Estimation via Newborn Screening Analysis: Application and Potential.” Espert Review of Proteomics (2019).


MLA   Click to copy
Wilson, Lindsay A., et al. “Postnatal Gestational Age Estimation via Newborn Screening Analysis: Application and Potential.” Espert Review of Proteomics, 2019.


BibTeX   Click to copy

@article{lindsay2019a,
  title = {Postnatal gestational age estimation via newborn screening analysis: application and potential},
  year = {2019},
  journal = {Espert Review of Proteomics},
  author = {Wilson, Lindsay A and Murphy, Malia S Q and Ducharme, R. and Denize, K. and Jadavji, N. and Potter, B. and Little, J. and Chakraborty, P. and Hawken, S. and Wilson, K.}
}

Abstract

ABSTRACT Introduction: Preterm birth is a major global health concern, contributing to 35% of all neonatal deaths in 2016. Given the importance of accurately ascertaining estimates of preterm birth and in light of current limitations in postnatal gestational age (GA) estimation, novel methods of estimating GA postnatally in the absence of prenatal ultrasound are needed. Previous work has demonstrated the potential for metabolomics to estimate GA by analyzing data captured through routine newborn screening. Areas covered: Circulating analytes found in newborn blood samples vary by GA. Leveraging newborn screening and demographic data, our group developed an algorithm capable of estimating GA postnatally to within approximately 1 week of ultrasound-validated GA. Since then, we have built on the model by including additional analytes and validating the model’s performance through internal and external validation studies, and through implementation of the model internationally. Expert opinion: Currently, using metabolomics to estimate GA postnatally holds considerable promise but is limited by issues of cost-effectiveness and resource access in low-income settings. Future work will focus on enhancing the precision of this approach while prioritizing point-of-care testing that is both accessible and acceptable to individuals in low-resource settings.