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Early prediction and longitudinal modeling of preeclampsia from multiomics

Authors :
Ivana Marić
Kévin Contrepois
Mira N. Moufarrej
Ina A. Stelzer
Dorien Feyaerts
Xiaoyuan Han
Andy Tang
Natalie Stanley
Ronald J. Wong
Gavin M. Traber
Mathew Ellenberger
Alan L. Chang
Ramin Fallahzadeh
Huda Nassar
Martin Becker
Maria Xenochristou
Camilo Espinosa
Davide De Francesco
Mohammad S. Ghaemi
Elizabeth K. Costello
Anthony Culos
Xuefeng B. Ling
Karl G. Sylvester
Gary L. Darmstadt
Virginia D. Winn
Gary M. Shaw
David A. Relman
Stephen R. Quake
Martin S. Angst
Michael P. Snyder
David K. Stevenson
Brice Gaudilliere
Nima Aghaeepour
Source :
Patterns. 3:100655
Publication Year :
2022
Publisher :
Elsevier BV, 2022.

Abstract

Preeclampsia is a complex disease of pregnancy whose physiopathology remains unclear. We developed machine-learning models for early prediction of preeclampsia (first 16 weeks of pregnancy) and over gestation by analyzing six omics datasets from a longitudinal cohort of pregnant women. For early pregnancy, a prediction model using nine urine metabolites had the highest accuracy and was validated on an independent cohort (area under the receiver-operating characteristic curve [AUC] = 0.88, 95% confidence interval [CI] [0.76, 0.99] cross-validated; AUC = 0.83, 95% CI [0.62,1] validated). Univariate analysis demonstrated statistical significance of identified metabolites. An integrated multiomics model further improved accuracy (AUC = 0.94). Several biological pathways were identified including tryptophan, caffeine, and arachidonic acid metabolisms. Integration with immune cytometry data suggested novel associations between immune and proteomic dynamics. While further validation in a larger population is necessary, these encouraging results can serve as a basis for a simple, early diagnostic test for preeclampsia.

Details

ISSN :
26663899
Volume :
3
Database :
OpenAIRE
Journal :
Patterns
Accession number :
edsair.doi.dedup.....453ac514dbcfc1ef6f0116c2e14d5ff5
Full Text :
https://doi.org/10.1016/j.patter.2022.100655