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NEOage clocks - epigenetic clocks to estimate post-menstrual and postnatal age in preterm infants

Authors :
Carmen J. Marsit
Lynne M. Smith
James F. Padbury
Jennifer Helderman
Lynne M. Dansereau
Steven L. Pastyrnak
Marie Camerota
Julie A. Hofheimer
Michael O'Shea
Stefan Graw
Charles R. Neal
Todd M. Everson
Sheri DellaGrotta
Barry M. Lester
Brian S. Carter
Elisabeth C. McGowan
Source :
Aging (Albany NY)
Publication Year :
2021
Publisher :
Impact Journals, LLC, 2021.

Abstract

Epigenetic clocks based on DNA methylation (DNAm) can accurately predict chronological age and are thought to capture biological aging. A variety of epigenetic clocks have been developed for different tissue types and age ranges, but none have focused on postnatal age prediction for preterm infants. Epigenetic estimators of biological age might be especially informative in epidemiologic studies of neonates since DNAm is highly dynamic during the neonatal period and this is a key developmental window. Additionally, markers of biological aging could be particularly important for those born preterm since they are at heightened risk of developmental impairments. We aimed to fill this gap by developing epigenetic clocks for neonatal aging in preterm infants. As part of the Neonatal Neurobehavior and Outcomes in Very Preterm Infants (NOVI) study, buccal cells were collected at NICU discharge to profile DNAm levels in 542 very preterm infants. We applied elastic net regression to identify four epigenetic clocks (NEOage Clocks) predictive of post-menstrual and postnatal age, compatible with the Illumina EPIC and 450K arrays. We observed high correlations between predicted and reported ages (0.93 – 0.94) with root mean squared errors (1.28 - 1.63 weeks). Epigenetic estimators of neonatal aging in preterm infants can be useful tools to evaluate biological maturity and associations with neonatal and long-term morbidities.

Details

ISSN :
19454589
Volume :
13
Database :
OpenAIRE
Journal :
Aging
Accession number :
edsair.doi.dedup.....b9d712dcbd4f39ffc956c4b26924dc5f
Full Text :
https://doi.org/10.18632/aging.203637