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Noninvasive screening for congenital heart defects using a serum metabolomics approach

Authors :
Giovanni Scala
Pierpaolo Cavallo
Angelo Colucci
Sean Richards
Giuseppe Maria Maruotti
Laura Sarno
Carla Ciccone
Steven J. K. Symes
Jacopo Troisi
David Adair
Maurizio Guida
Annamaria Landolfi
Pasquale Martinelli
Troisi, J.
Cavallo, P.
Richards, S.
Symes, S.
Colucci, A.
Sarno, L.
Landolfi, A.
Scala, G.
Adair, D.
Ciccone, C.
Maruotti, G. M.
Martinelli, P.
Guida, M.
Publication Year :
2021

Abstract

Objective Heart anomalies represent nearly one-third of all congenital anomalies. They are currently diagnosed using ultrasound. However, there is a strong need for a more accurate and less operator-dependent screening method. Here we report a metabolomics characterization of maternal serum in order to describe a metabolomic fingerprint representative of heart congenital anomalies. Methods Metabolomic profiles were obtained from serum of 350 mothers (280 controls and 70 cases). Nine classification models were built and optimized. An ensemble model was built based on the results from the individual models. Results The ensemble machine learning model correctly classified all cases and controls. Malonic, 3-hydroxybutyric and methyl glutaric acid, urea, androstenedione, fructose, tocopherol, leucine and putrescine were determined as the most relevant metabolites in class separation. Conclusion The metabolomic signature of second trimester maternal serum from pregnancies affected by a fetal heart anomaly is quantifiably different from that of a normal pregnancy. Maternal serum metabolomics is a promising tool for the accurate and sensitive screening of such congenital defects. Moreover, the revelation of the associated metabolites and their respective biochemical pathways allows a better understanding of the overall pathophysiology of affected pregnancies. This article is protected by copyright. All rights reserved.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....a4cd9fdd69b594a9e682990e7f39ff28