Do Mass Spectrometry-Derived Metabolomics Improve the Prediction of Pregnancy-Related Disorders? Findings from a UK Birth Cohort with Independent Validation

Many women who experience gestational diabetes (GDM), gestational hypertension (GHT), pre-eclampsia (PE), have a spontaneous preterm birth (sPTB) or have an offspring born small/large for gestational age (SGA/LGA) do not meet the criteria for high-risk pregnancies based upon certain maternal risk fa...

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Main Authors: Nancy McBride, Paul Yousefi, Ulla Sovio, Kurt Taylor, Yassaman Vafai, Tiffany Yang, Bo Hou, Matthew Suderman, Caroline Relton, Gordon C. S. Smith, Deborah A. Lawlor
Format: Article
Language:English
Published: MDPI AG 2021-08-01
Series:Metabolites
Subjects:
Online Access:https://www.mdpi.com/2218-1989/11/8/530
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record_format Article
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language English
format Article
sources DOAJ
author Nancy McBride
Paul Yousefi
Ulla Sovio
Kurt Taylor
Yassaman Vafai
Tiffany Yang
Bo Hou
Matthew Suderman
Caroline Relton
Gordon C. S. Smith
Deborah A. Lawlor
spellingShingle Nancy McBride
Paul Yousefi
Ulla Sovio
Kurt Taylor
Yassaman Vafai
Tiffany Yang
Bo Hou
Matthew Suderman
Caroline Relton
Gordon C. S. Smith
Deborah A. Lawlor
Do Mass Spectrometry-Derived Metabolomics Improve the Prediction of Pregnancy-Related Disorders? Findings from a UK Birth Cohort with Independent Validation
Metabolites
prediction
pregnancy
metabolomics
metabolites
mass spectrometry
author_facet Nancy McBride
Paul Yousefi
Ulla Sovio
Kurt Taylor
Yassaman Vafai
Tiffany Yang
Bo Hou
Matthew Suderman
Caroline Relton
Gordon C. S. Smith
Deborah A. Lawlor
author_sort Nancy McBride
title Do Mass Spectrometry-Derived Metabolomics Improve the Prediction of Pregnancy-Related Disorders? Findings from a UK Birth Cohort with Independent Validation
title_short Do Mass Spectrometry-Derived Metabolomics Improve the Prediction of Pregnancy-Related Disorders? Findings from a UK Birth Cohort with Independent Validation
title_full Do Mass Spectrometry-Derived Metabolomics Improve the Prediction of Pregnancy-Related Disorders? Findings from a UK Birth Cohort with Independent Validation
title_fullStr Do Mass Spectrometry-Derived Metabolomics Improve the Prediction of Pregnancy-Related Disorders? Findings from a UK Birth Cohort with Independent Validation
title_full_unstemmed Do Mass Spectrometry-Derived Metabolomics Improve the Prediction of Pregnancy-Related Disorders? Findings from a UK Birth Cohort with Independent Validation
title_sort do mass spectrometry-derived metabolomics improve the prediction of pregnancy-related disorders? findings from a uk birth cohort with independent validation
publisher MDPI AG
series Metabolites
issn 2218-1989
publishDate 2021-08-01
description Many women who experience gestational diabetes (GDM), gestational hypertension (GHT), pre-eclampsia (PE), have a spontaneous preterm birth (sPTB) or have an offspring born small/large for gestational age (SGA/LGA) do not meet the criteria for high-risk pregnancies based upon certain maternal risk factors. Tools that better predict these outcomes are needed to tailor antenatal care to risk. Recent studies have suggested that metabolomics may improve the prediction of these pregnancy-related disorders. These have largely been based on targeted platforms or focused on a single pregnancy outcome. The aim of this study was to assess the predictive ability of an untargeted platform of over 700 metabolites to predict the above pregnancy-related disorders in two cohorts. We used data collected from women in the Born in Bradford study (BiB; two sub-samples, <i>n</i> = 2000 and <i>n</i> = 1000) and the Pregnancy Outcome Prediction study (POPs; <i>n</i> = 827) to train, test and validate prediction models for GDM, PE, GHT, SGA, LGA and sPTB. We compared the predictive performance of three models: (1) risk factors (maternal age, pregnancy smoking, BMI, ethnicity and parity) (2) mass spectrometry (MS)-derived metabolites (<i>n</i> = 718 quantified metabolites, collected at 26–28 weeks’ gestation) and (3) combined risk factors and metabolites. We used BiB for the training and testing of the models and POPs for independent validation. In both cohorts, discrimination for GDM, PE, LGA and SGA improved with the addition of metabolites to the risk factor model. The models’ area under the curve (AUC) were similar for both cohorts, with good discrimination for GDM (AUC (95% CI) BiB 0.76 (0.71, 0.81) and POPs 0.76 (0.72, 0.81)) and LGA (BiB 0.86 (0.80, 0.91) and POPs 0.76 (0.60, 0.92)). Discrimination was improved for the combined models (compared to the risk factors models) for PE and SGA, with modest discrimination in both studies (PE-BiB 0.68 (0.58, 0.78) and POPs 0.66 (0.60, 0.71); SGA-BiB 0.68 (0.63, 0.74) and POPs 0.64 (0.59, 0.69)). Prediction for sPTB was poor in BiB and POPs for all models. In BiB, calibration for the combined models was good for GDM, LGA and SGA. Retained predictors include 4-hydroxyglutamate for GDM, LGA and PE and glycerol for GDM and PE. MS-derived metabolomics combined with maternal risk factors improves the prediction of GDM, PE, LGA and SGA, with good discrimination for GDM and LGA. Validation across two very different cohorts supports further investigation on whether the metabolites reflect novel causal paths to GDM and LGA.
topic prediction
pregnancy
metabolomics
metabolites
mass spectrometry
url https://www.mdpi.com/2218-1989/11/8/530
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spelling doaj-981bc7c86e1940f1a9369c39aa637b8b2021-08-26T14:03:51ZengMDPI AGMetabolites2218-19892021-08-011153053010.3390/metabo11080530Do Mass Spectrometry-Derived Metabolomics Improve the Prediction of Pregnancy-Related Disorders? Findings from a UK Birth Cohort with Independent ValidationNancy McBride0Paul Yousefi1Ulla Sovio2Kurt Taylor3Yassaman Vafai4Tiffany Yang5Bo Hou6Matthew Suderman7Caroline Relton8Gordon C. S. Smith9Deborah A. Lawlor10MRC Integrative Epidemiology Unit, University of Bristol, Bristol BS8 2BN, UKMRC Integrative Epidemiology Unit, University of Bristol, Bristol BS8 2BN, UKNIHR Cambridge Biomedical Research Centre, Department of Obstetrics and Gynaecology, University of Cambridge, Cambridge CB2 0QQ, UKMRC Integrative Epidemiology Unit, University of Bristol, Bristol BS8 2BN, UKBradford Institute for Health Research, Bradford Teaching Hospitals NHS Foundation Trust, Bradford BD9 6DA, UKBradford Institute for Health Research, Bradford Teaching Hospitals NHS Foundation Trust, Bradford BD9 6DA, UKBradford Institute for Health Research, Bradford Teaching Hospitals NHS Foundation Trust, Bradford BD9 6DA, UKMRC Integrative Epidemiology Unit, University of Bristol, Bristol BS8 2BN, UKMRC Integrative Epidemiology Unit, University of Bristol, Bristol BS8 2BN, UKNIHR Cambridge Biomedical Research Centre, Department of Obstetrics and Gynaecology, University of Cambridge, Cambridge CB2 0QQ, UKMRC Integrative Epidemiology Unit, University of Bristol, Bristol BS8 2BN, UKMany women who experience gestational diabetes (GDM), gestational hypertension (GHT), pre-eclampsia (PE), have a spontaneous preterm birth (sPTB) or have an offspring born small/large for gestational age (SGA/LGA) do not meet the criteria for high-risk pregnancies based upon certain maternal risk factors. Tools that better predict these outcomes are needed to tailor antenatal care to risk. Recent studies have suggested that metabolomics may improve the prediction of these pregnancy-related disorders. These have largely been based on targeted platforms or focused on a single pregnancy outcome. The aim of this study was to assess the predictive ability of an untargeted platform of over 700 metabolites to predict the above pregnancy-related disorders in two cohorts. We used data collected from women in the Born in Bradford study (BiB; two sub-samples, <i>n</i> = 2000 and <i>n</i> = 1000) and the Pregnancy Outcome Prediction study (POPs; <i>n</i> = 827) to train, test and validate prediction models for GDM, PE, GHT, SGA, LGA and sPTB. We compared the predictive performance of three models: (1) risk factors (maternal age, pregnancy smoking, BMI, ethnicity and parity) (2) mass spectrometry (MS)-derived metabolites (<i>n</i> = 718 quantified metabolites, collected at 26–28 weeks’ gestation) and (3) combined risk factors and metabolites. We used BiB for the training and testing of the models and POPs for independent validation. In both cohorts, discrimination for GDM, PE, LGA and SGA improved with the addition of metabolites to the risk factor model. The models’ area under the curve (AUC) were similar for both cohorts, with good discrimination for GDM (AUC (95% CI) BiB 0.76 (0.71, 0.81) and POPs 0.76 (0.72, 0.81)) and LGA (BiB 0.86 (0.80, 0.91) and POPs 0.76 (0.60, 0.92)). Discrimination was improved for the combined models (compared to the risk factors models) for PE and SGA, with modest discrimination in both studies (PE-BiB 0.68 (0.58, 0.78) and POPs 0.66 (0.60, 0.71); SGA-BiB 0.68 (0.63, 0.74) and POPs 0.64 (0.59, 0.69)). Prediction for sPTB was poor in BiB and POPs for all models. In BiB, calibration for the combined models was good for GDM, LGA and SGA. Retained predictors include 4-hydroxyglutamate for GDM, LGA and PE and glycerol for GDM and PE. MS-derived metabolomics combined with maternal risk factors improves the prediction of GDM, PE, LGA and SGA, with good discrimination for GDM and LGA. Validation across two very different cohorts supports further investigation on whether the metabolites reflect novel causal paths to GDM and LGA.https://www.mdpi.com/2218-1989/11/8/530predictionpregnancymetabolomicsmetabolitesmass spectrometry