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Cervicovaginal microbiota and metabolome predict preterm birth risk in an ethnically diverse cohort.

Authors :
Flaviani F
Hezelgrave NL
Kanno T
Prosdocimi EM
Chin-Smith E
Ridout AE
von Maydell DK
Mistry V
Wade WG
Shennan AH
Dimitrakopoulou K
Seed PT
Mason AJ
Tribe RM
Source :
JCI insight [JCI Insight] 2021 Aug 23; Vol. 6 (16). Date of Electronic Publication: 2021 Aug 23.
Publication Year :
2021

Abstract

The syndrome of spontaneous preterm birth (sPTB) presents a challenge to mechanistic understanding, effective risk stratification, and clinical management. Individual associations between sPTB, self-reported ethnic ancestry, vaginal microbiota, metabolome, and innate immune response are known but not fully understood, and knowledge has yet to impact clinical practice. Here, we used multi-data type integration and composite statistical models to gain insight into sPTB risk by exploring the cervicovaginal environment of an ethnically heterogenous pregnant population (n = 346 women; n = 60 sPTB < 37 weeks' gestation, including n = 27 sPTB < 34 weeks). Analysis of cervicovaginal samples (10-15+6 weeks) identified potentially novel interactions between risk of sPTB and microbiota, metabolite, and maternal host defense molecules. Statistical modeling identified a composite of metabolites (leucine, tyrosine, aspartate, lactate, betaine, acetate, and Ca2+) associated with risk of sPTB < 37 weeks (AUC 0.752). A combination of glucose, aspartate, Ca2+, Lactobacillus crispatus, and L. acidophilus relative abundance identified risk of early sPTB < 34 weeks (AUC 0.758), improved by stratification by ethnicity (AUC 0.835). Increased relative abundance of L. acidophilus appeared protective against sPTB < 34 weeks. By using cervicovaginal fluid samples, we demonstrate the potential of multi-data type integration for developing composite models toward understanding the contribution of the vaginal environment to risk of sPTB.

Details

Language :
English
ISSN :
2379-3708
Volume :
6
Issue :
16
Database :
MEDLINE
Journal :
JCI insight
Publication Type :
Academic Journal
Accession number :
34255744
Full Text :
https://doi.org/10.1172/jci.insight.149257