Skip to main content
Top
Published in: BMC Medicine 1/2020

01-12-2020 | Premature Birth | Research article

Do nuclear magnetic resonance (NMR)-based metabolomics improve the prediction of pregnancy-related disorders? Findings from a UK birth cohort with independent validation

Authors: Nancy McBride, Paul Yousefi, Sara L. White, Lucilla Poston, Diane Farrar, Naveed Sattar, Scott M. Nelson, John Wright, Dan Mason, Matthew Suderman, Caroline Relton, Deborah A. Lawlor

Published in: BMC Medicine | Issue 1/2020

Login to get access

Abstract

Background

Prediction of pregnancy-related disorders is usually done based on established and easily measured risk factors. Recent advances in metabolomics may provide earlier and more accurate prediction of women at risk of pregnancy-related disorders.

Methods

We used data collected from women in the Born in Bradford (BiB; n = 8212) and UK Pregnancies Better Eating and Activity Trial (UPBEAT; n = 859) studies to create and validate prediction models for pregnancy-related disorders. These were gestational diabetes mellitus (GDM), hypertensive disorders of pregnancy (HDP), small for gestational age (SGA), large for gestational age (LGA) and preterm birth (PTB). We used ten-fold cross-validation and penalised regression to create prediction models. We compared the predictive performance of (1) risk factors (maternal age, pregnancy smoking, body mass index (BMI), ethnicity and parity) to (2) nuclear magnetic resonance-derived metabolites (N = 156 quantified metabolites, collected at 24–28 weeks gestation) and (3) combined risk factors and metabolites. The multi-ethnic BiB cohort was used for training and testing the models, with independent validation conducted in UPBEAT, a multi-ethnic study of obese pregnant women.

Results

Maternal age, pregnancy smoking, BMI, ethnicity and parity were retained in the combined risk factor and metabolite models for all outcomes apart from PTB, which did not include maternal age. In addition, 147, 33, 96, 51 and 14 of the 156 metabolite traits were retained in the combined risk factor and metabolite model for GDM, HDP, SGA, LGA and PTB, respectively. These include cholesterol and triglycerides in very low-density lipoproteins (VLDL) in the models predicting GDM, HDP, SGA and LGA, and monounsaturated fatty acids (MUFA), ratios of MUFA to omega 3 fatty acids and total fatty acids, and a ratio of apolipoprotein B to apolipoprotein A-1 (APOA:APOB1) were retained predictors for GDM and LGA. In BiB, discrimination for GDM, HDP, LGA and SGA was improved in the combined risk factors and metabolites models. Risk factor area under the curve (AUC 95% confidence interval (CI)): GDM (0.69 (0.64, 0.73)), HDP (0.74 (0.70, 0.78)) and LGA (0.71 (0.66, 0.75)), and SGA (0.59 (0.56, 0.63)). Combined risk factor and metabolite models AUC 95% (CI): GDM (0.78 (0.74, 0.81)), HDP (0.76 (0.73, 0.79)) and LGA (0.75 (0.70, 0.79)), and SGA (0.66 (0.63, 0.70)). For GDM, HDP and LGA, but not SGA, calibration was good for a combined risk factor and metabolite model. Prediction of PTB was poor for all models. Independent validation in UPBEAT at 24–28 weeks and 15–18 weeks gestation confirmed similar patterns of results, but AUCs were attenuated.

Conclusions

Our results suggest a combined risk factor and metabolite model improves prediction of GDM, HDP and LGA, and SGA, when compared to risk factors alone. They also highlight the difficulty of predicting PTB, with all models performing poorly.
Appendix
Available only for authorised users
Literature
3.
go back to reference Farrar D, Simmonds M, Bryant M, Lawlor DA, Dunne F, Tuffnell D, Sheldon TA. Risk factor screening to identify women requiring oral glucose tolerancetesting to diagnose gestational diabetes: A systematic review and meta-analysis and analysis of two pregnancy cohorts. PLoS One. 2017;12(4):e0175288. https://doi.org/10.1371/journal.pone.0175288. PMID: 28384264; PMCID: PMC5383279. Farrar D, Simmonds M, Bryant M, Lawlor DA, Dunne F, Tuffnell D, Sheldon TA. Risk factor screening to identify women requiring oral glucose tolerancetesting to diagnose gestational diabetes: A systematic review and meta-analysis and analysis of two pregnancy cohorts. PLoS One. 2017;12(4):e0175288. https://​doi.​org/​10.​1371/​journal.​pone.​0175288. PMID: 28384264; PMCID: PMC5383279.
4.
go back to reference Geelhoed JJM, Fraser A, Tilling K, et al. Preeclampsia and gestational hypertension are associated with childhood blood pressure, independently of family adiposity measures: the Avon Longitudinal Study of Parents and Children. Circulation. 2010;122:1192–9.PubMedPubMedCentral Geelhoed JJM, Fraser A, Tilling K, et al. Preeclampsia and gestational hypertension are associated with childhood blood pressure, independently of family adiposity measures: the Avon Longitudinal Study of Parents and Children. Circulation. 2010;122:1192–9.PubMedPubMedCentral
5.
go back to reference Macdonald-Wallis C, Lawlor DA, Fraser A, May M, Nelson SM, Tilling K. Blood pressure change in normotensive, gestational hypertensive, preeclamptic, and essential hypertensive pregnancies. Hypertension (Dallas, Tex : 1979). 2012;59:1241–8. Macdonald-Wallis C, Lawlor DA, Fraser A, May M, Nelson SM, Tilling K. Blood pressure change in normotensive, gestational hypertensive, preeclamptic, and essential hypertensive pregnancies. Hypertension (Dallas, Tex : 1979). 2012;59:1241–8.
6.
go back to reference Macdonald-Wallis C, Silverwood RJ, de Stavola BL, et al. Antenatal blood pressure for prediction of pre-eclampsia, preterm birth, and small for gestational age babies: development and validation in two general population cohorts. BMJ. 2015;351:h5948.PubMedPubMedCentral Macdonald-Wallis C, Silverwood RJ, de Stavola BL, et al. Antenatal blood pressure for prediction of pre-eclampsia, preterm birth, and small for gestational age babies: development and validation in two general population cohorts. BMJ. 2015;351:h5948.PubMedPubMedCentral
7.
go back to reference Nelson SM, Lawlor DA. Predicting live birth, preterm delivery, and low birth weight in infants born from in vitro fertilisation: a prospective study of 144,018 treatment cycles. PLoS Med. 2011;8:e1000386.PubMedPubMedCentral Nelson SM, Lawlor DA. Predicting live birth, preterm delivery, and low birth weight in infants born from in vitro fertilisation: a prospective study of 144,018 treatment cycles. PLoS Med. 2011;8:e1000386.PubMedPubMedCentral
8.
go back to reference Mund M, Louwen F, Klingelhoefer D, Gerber A. Smoking and pregnancy--a review on the first major environmental risk factor of the unborn. Int J Environ Res Public Health. 2013;10:6485–99.PubMedPubMedCentral Mund M, Louwen F, Klingelhoefer D, Gerber A. Smoking and pregnancy--a review on the first major environmental risk factor of the unborn. Int J Environ Res Public Health. 2013;10:6485–99.PubMedPubMedCentral
10.
go back to reference Miranda ML, Edwards SE, Myers ER. Adverse birth outcomes among nulliparous vs. multiparous women. Public health reports (Washington, DC: 1974). 2011;126:797–805. Miranda ML, Edwards SE, Myers ER. Adverse birth outcomes among nulliparous vs. multiparous women. Public health reports (Washington, DC: 1974). 2011;126:797–805.
11.
go back to reference Bartsch E, Medcalf KE, Park AL, Ray JG. Clinical risk factors for pre-eclampsia determined in early pregnancy: systematic review and meta-analysis oflarge cohort studies. BMJ. 2016;353:i1753. Bartsch E, Medcalf KE, Park AL, Ray JG. Clinical risk factors for pre-eclampsia determined in early pregnancy: systematic review and meta-analysis oflarge cohort studies. BMJ. 2016;353:i1753.
12.
go back to reference Torloni MR, Betrán AP, Horta BL, et al. Prepregnancy BMI and the risk of gestational diabetes: a systematic review of the literature with meta-analysis. Obes Rev. 2009;10:194–203.PubMed Torloni MR, Betrán AP, Horta BL, et al. Prepregnancy BMI and the risk of gestational diabetes: a systematic review of the literature with meta-analysis. Obes Rev. 2009;10:194–203.PubMed
13.
go back to reference Farrar D, Simmonds M, Griffin S, Duarte A, Lawlor DA, Sculpher M, Fairley L, Golder S, Tuffnell D, Bland M, Dunne F, Whitelaw D, Wright J, SheldonTA. The identification and treatment of women with hyperglycaemia in pregnancy: an analysis of individual participant data, systematic reviews, metaanalyses and an economic evaluation. Health Technol Assess. 2016;20(86):1-348. https://doi.org/10.3310/hta20860. PMID: 27917777; PMCID: PMC5165282. Farrar D, Simmonds M, Griffin S, Duarte A, Lawlor DA, Sculpher M, Fairley L, Golder S, Tuffnell D, Bland M, Dunne F, Whitelaw D, Wright J, SheldonTA. The identification and treatment of women with hyperglycaemia in pregnancy: an analysis of individual participant data, systematic reviews, metaanalyses and an economic evaluation. Health Technol Assess. 2016;20(86):1-348. https://​doi.​org/​10.​3310/​hta20860. PMID: 27917777; PMCID: PMC5165282.
14.
go back to reference Salomon LJ, Alfirevic Z, Da Silva CF, et al. ISUOG Practice Guidelines: ultrasound assessment of fetal biometry and growth. Ultrasound Obstet Gynecol. 2019;53:715–23.PubMed Salomon LJ, Alfirevic Z, Da Silva CF, et al. ISUOG Practice Guidelines: ultrasound assessment of fetal biometry and growth. Ultrasound Obstet Gynecol. 2019;53:715–23.PubMed
16.
go back to reference Bartoli E, Fra GP, Schianca GPC. The oral glucose tolerance test (OGTT) revisited. Eur J Internal Med. 2011;22:8–12. Bartoli E, Fra GP, Schianca GPC. The oral glucose tolerance test (OGTT) revisited. Eur J Internal Med. 2011;22:8–12.
18.
go back to reference Würtz P, Havulinna AS, Soininen P, Tynkkynen T, Prieto-Merino D, Tillin T, Ghorbani A, Artati A, Wang Q, Tiainen M, Kangas AJ, Kettunen J,Kaikkonen J, Mikkilä V, Jula A, Kähönen M, Lehtimäki T, Lawlor DA, Gaunt TR, Hughes AD, Sattar N, Illig T, Adamski J, Wang TJ, Perola M, Ripatti S, Vasan RS, Raitakari OT, Gerszten RE, Casas JP, Chaturvedi N, Ala-Korpela M, Salomaa V. Metabolite profiling and cardiovascular event risk: a prospective study of 3 population-based cohorts. Circulation. 2015;131(9):774-85. https://doi.org/10.1161/CIRCULATIONAHA.114.013116. Epub 2015 Jan 8. PMID: 25573147; PMCID: PMC4351161. Würtz P, Havulinna AS, Soininen P, Tynkkynen T, Prieto-Merino D, Tillin T, Ghorbani A, Artati A, Wang Q, Tiainen M, Kangas AJ, Kettunen J,Kaikkonen J, Mikkilä V, Jula A, Kähönen M, Lehtimäki T, Lawlor DA, Gaunt TR, Hughes AD, Sattar N, Illig T, Adamski J, Wang TJ, Perola M, Ripatti S, Vasan RS, Raitakari OT, Gerszten RE, Casas JP, Chaturvedi N, Ala-Korpela M, Salomaa V. Metabolite profiling and cardiovascular event risk: a prospective study of 3 population-based cohorts. Circulation. 2015;131(9):774-85. https://​doi.​org/​10.​1161/​CIRCULATIONAHA.​114.​013116. Epub 2015 Jan 8. PMID: 25573147; PMCID: PMC4351161.
19.
go back to reference Vieira MC, White SL, Patel N, et al. Prediction of uncomplicated pregnancies in obese women: a prospective multicentre study. BMC Medicine. 2017;15:194.PubMedPubMedCentral Vieira MC, White SL, Patel N, et al. Prediction of uncomplicated pregnancies in obese women: a prospective multicentre study. BMC Medicine. 2017;15:194.PubMedPubMedCentral
20.
go back to reference Chappell LC, Seed PT, Myers J, et al. Exploration and confirmation of factors associated with uncomplicated pregnancy in nulliparous women: prospective cohort study. BMJ (Clinical research ed). 2013;347:f6398-f. Chappell LC, Seed PT, Myers J, et al. Exploration and confirmation of factors associated with uncomplicated pregnancy in nulliparous women: prospective cohort study. BMJ (Clinical research ed). 2013;347:f6398-f.
22.
go back to reference Wang Q, Würtz P, Auro K, Mäkinen VP, Kangas AJ, Soininen P, Tiainen M, Tynkkynen T, Jokelainen J, Santalahti K, Salmi M, Blankenberg S, Zeller T,Viikari J, Kähönen M, Lehtimäki T, Salomaa V, Perola M, Jalkanen S, Järvelin MR, Raitakari OT, Kettunen J, Lawlor DA, Ala-Korpela M. Metabolic profiling of pregnancy: cross-sectional and longitudinal evidence. BMC Med. 2016;14(1):205. https://doi.org/10.1186/s12916-016-0733-0. PMID: 27955712; PMCID: PMC5153817. Wang Q, Würtz P, Auro K, Mäkinen VP, Kangas AJ, Soininen P, Tiainen M, Tynkkynen T, Jokelainen J, Santalahti K, Salmi M, Blankenberg S, Zeller T,Viikari J, Kähönen M, Lehtimäki T, Salomaa V, Perola M, Jalkanen S, Järvelin MR, Raitakari OT, Kettunen J, Lawlor DA, Ala-Korpela M. Metabolic profiling of pregnancy: cross-sectional and longitudinal evidence. BMC Med. 2016;14(1):205. https://​doi.​org/​10.​1186/​s12916-016-0733-0. PMID: 27955712; PMCID: PMC5153817.
24.
go back to reference Agrawal S, Cerdeira AS, Redman C, Vatish M. Meta-Analysis and Systematic Review to Assess the Role of Soluble FMS-Like Tyrosine Kinase-1 andPlacenta Growth Factor Ratio in Prediction of Preeclampsia: The SaPPPhirE Study. Hypertension. 2018;71(2):306-16. https://doi.org/10.1161/HYPERTENSIONAHA.117.10182. Epub 2017 Dec 11. PMID: 29229743. Agrawal S, Cerdeira AS, Redman C, Vatish M. Meta-Analysis and Systematic Review to Assess the Role of Soluble FMS-Like Tyrosine Kinase-1 andPlacenta Growth Factor Ratio in Prediction of Preeclampsia: The SaPPPhirE Study. Hypertension. 2018;71(2):306-16. https://​doi.​org/​10.​1161/​HYPERTENSIONAHA.​117.​10182. Epub 2017 Dec 11. PMID: 29229743.
25.
go back to reference Sulek K, Han T-L, Villas-Boas SG, et al. Hair metabolomics: identification of fetal compromise provides proof of concept for biomarker discovery. Theranostics. 2014;4:953–9.PubMedPubMedCentral Sulek K, Han T-L, Villas-Boas SG, et al. Hair metabolomics: identification of fetal compromise provides proof of concept for biomarker discovery. Theranostics. 2014;4:953–9.PubMedPubMedCentral
26.
go back to reference Horgan RP, Broadhurst DI, Walsh SK, Dunn WB, Brown M, Roberts CT, North RA, McCowan LM, Kell DB, Baker PN, Kenny LC. Metabolic profilinguncovers a phenotypic signature of small for gestational age in early pregnancy. J Proteome Res. 2011;10(8):3660-73. https://doi.org/10.1021/pr2002897. Epub 2011 Jun 29. PMID: 21671558. Horgan RP, Broadhurst DI, Walsh SK, Dunn WB, Brown M, Roberts CT, North RA, McCowan LM, Kell DB, Baker PN, Kenny LC. Metabolic profilinguncovers a phenotypic signature of small for gestational age in early pregnancy. J Proteome Res. 2011;10(8):3660-73. https://​doi.​org/​10.​1021/​pr2002897. Epub 2011 Jun 29. PMID: 21671558.
27.
go back to reference Considine EC, Khashan AS, Kenny LC. Screening for preterm birth: potential for a metabolomics biomarker panel. Metabolites. 2019;9:90.PubMedCentral Considine EC, Khashan AS, Kenny LC. Screening for preterm birth: potential for a metabolomics biomarker panel. Metabolites. 2019;9:90.PubMedCentral
28.
go back to reference Leite DFB, Morillon A-C, Melo Júnior EF, et al. Examining the predictive accuracy of metabolomics for small-for-gestational-age babies: a systematic review. BMJ Open. 2019;9:e031238-e. Leite DFB, Morillon A-C, Melo Júnior EF, et al. Examining the predictive accuracy of metabolomics for small-for-gestational-age babies: a systematic review. BMJ Open. 2019;9:e031238-e.
29.
go back to reference White SL, Lawlor DA, Briley AL, et al. Early antenatal prediction of gestational diabetes in obese women: development of prediction tools for targeted intervention. PloS one. 2016;11:e0167846-e. White SL, Lawlor DA, Briley AL, et al. Early antenatal prediction of gestational diabetes in obese women: development of prediction tools for targeted intervention. PloS one. 2016;11:e0167846-e.
30.
go back to reference Sovio U, McBride N, Wood AM, Masconi KL, Cook E, Gaccioli F, Charnock-Jones DS, Lawlor DA, Smith GCS. 4-Hydroxyglutamate is a novel predictor of pre-eclampsia. Int J Epidemiol. 2020;49(1):301-11. https://doi.org/10.1093/ije/dyz098. PMID: 31098639; PMCID: PMC7124498. Sovio U, McBride N, Wood AM, Masconi KL, Cook E, Gaccioli F, Charnock-Jones DS, Lawlor DA, Smith GCS. 4-Hydroxyglutamate is a novel predictor of pre-eclampsia. Int J Epidemiol. 2020;49(1):301-11. https://​doi.​org/​10.​1093/​ije/​dyz098. PMID: 31098639; PMCID: PMC7124498.
31.
go back to reference Sovio U, Goulding N, McBride N, et al. A maternal serum metabolite ratio predicts fetal growth restriction at term. Nat Med. 2020;26:348–53.PubMed Sovio U, Goulding N, McBride N, et al. A maternal serum metabolite ratio predicts fetal growth restriction at term. Nat Med. 2020;26:348–53.PubMed
32.
go back to reference Wright J, on behalf of the Born in Bradford Scientific Collaborators G, Small N, et al. Cohort profile: the Born in Bradford multi-ethnic family cohort study. Int J Epidemiol. 2013;42:978–91.PubMed Wright J, on behalf of the Born in Bradford Scientific Collaborators G, Small N, et al. Cohort profile: the Born in Bradford multi-ethnic family cohort study. Int J Epidemiol. 2013;42:978–91.PubMed
33.
go back to reference Mills HL, Patel N, White SL, et al. The effect of a lifestyle intervention in obese pregnant women on gestational metabolic profiles: findings from theUK Pregnancies Better Eating and Activity Trial (UPBEAT) randomised controlled trial. BMC Med. 2019;17:15. https://doi.org/10.1186/s12916-018-1248-7. Mills HL, Patel N, White SL, et al. The effect of a lifestyle intervention in obese pregnant women on gestational metabolic profiles: findings from theUK Pregnancies Better Eating and Activity Trial (UPBEAT) randomised controlled trial. BMC Med. 2019;17:15. https://​doi.​org/​10.​1186/​s12916-018-1248-7.
34.
go back to reference Poston L, Bell R, Croker H, et al. Effect of a behavioural intervention in obese pregnant women (the UPBEAT study): a multicentre, randomised controlled trial. Lancet Diabetes Endocrinol. 2015;3:767–77.PubMed Poston L, Bell R, Croker H, et al. Effect of a behavioural intervention in obese pregnant women (the UPBEAT study): a multicentre, randomised controlled trial. Lancet Diabetes Endocrinol. 2015;3:767–77.PubMed
35.
go back to reference Kettunen J, Tukiainen T, Sarin AP, Ortega-Alonso A, Tikkanen E, Lyytikäinen LP, Kangas AJ, Soininen P, Würtz P, Silander K, Dick DM, Rose RJ,Savolainen MJ, Viikari J, Kähönen M, Lehtimäki T, Pietiläinen KH, Inouye M, McCarthy MI, Jula A, Eriksson J, Raitakari OT, Salomaa V, Kaprio J, Järvelin MR, Peltonen L, Perola M, Freimer NB, Ala-Korpela M, Palotie A, Ripatti S. Genome-wide association study identifies multiple loci influencing human serum metabolite levels. Nat Genet. 2012;44(3):269-76. https://doi.org/10.1038/ng.1073. PMID: 22286219; PMCID: PMC3605033. Kettunen J, Tukiainen T, Sarin AP, Ortega-Alonso A, Tikkanen E, Lyytikäinen LP, Kangas AJ, Soininen P, Würtz P, Silander K, Dick DM, Rose RJ,Savolainen MJ, Viikari J, Kähönen M, Lehtimäki T, Pietiläinen KH, Inouye M, McCarthy MI, Jula A, Eriksson J, Raitakari OT, Salomaa V, Kaprio J, Järvelin MR, Peltonen L, Perola M, Freimer NB, Ala-Korpela M, Palotie A, Ripatti S. Genome-wide association study identifies multiple loci influencing human serum metabolite levels. Nat Genet. 2012;44(3):269-76. https://​doi.​org/​10.​1038/​ng.​1073. PMID: 22286219; PMCID: PMC3605033.
36.
go back to reference Würtz P, Kangas AJ, Soininen P, Lawlor DA, Davey Smith G, Ala-Korpela M. Quantitative serum NMR metabolomics in large-scale epidemiology: a primer on -omic technology. Am J Epidemiol. 2017;186. Würtz P, Kangas AJ, Soininen P, Lawlor DA, Davey Smith G, Ala-Korpela M. Quantitative serum NMR metabolomics in large-scale epidemiology: a primer on -omic technology. Am J Epidemiol. 2017;186.
37.
go back to reference International Association of Diabetes and Pregnancy Study Groups Recommendations on the Diagnosis and Classification of Hyperglycemia in Pregnancy. Diabetes Care. 2010;33:676–82. International Association of Diabetes and Pregnancy Study Groups Recommendations on the Diagnosis and Classification of Hyperglycemia in Pregnancy. Diabetes Care. 2010;33:676–82.
38.
go back to reference Kuhn M. Building predictive models in R using the caret package. 2008 2008; 28: 26. Kuhn M. Building predictive models in R using the caret package. 2008 2008; 28: 26.
39.
go back to reference Kohavi R. A study of cross-validation and bootstrap for accuracy estimation and model selection. Ijcai; 1995: Montreal, Canada; 1995. p. 1137–45. Kohavi R. A study of cross-validation and bootstrap for accuracy estimation and model selection. Ijcai; 1995: Montreal, Canada; 1995. p. 1137–45.
40.
go back to reference Musoro JZ, Zwinderman AH, Puhan MA, ter Riet G, Geskus RB. Validation of prediction models based on lasso regression with multiply imputed data. BMC Med Res Methodol. 2014;14:116.PubMedPubMedCentral Musoro JZ, Zwinderman AH, Puhan MA, ter Riet G, Geskus RB. Validation of prediction models based on lasso regression with multiply imputed data. BMC Med Res Methodol. 2014;14:116.PubMedPubMedCentral
41.
go back to reference Friedman JH, Hastie T, Tibshirani R. Regularization paths for generalized linear models via coordinate descent. 2010 2010; 33: 22. Friedman JH, Hastie T, Tibshirani R. Regularization paths for generalized linear models via coordinate descent. 2010 2010; 33: 22.
42.
go back to reference Palmer PB, O’Connell DG. Regression analysis for prediction: understanding the process. Cardiopulmonary Physical Therapy J. 2009;20:23–6. Palmer PB, O’Connell DG. Regression analysis for prediction: understanding the process. Cardiopulmonary Physical Therapy J. 2009;20:23–6.
43.
go back to reference van Leeuwen M, Opmeer BC, Zweers EJK, et al. Estimating the risk of gestational diabetes mellitus: a clinical prediction model based on patient characteristics and medical history. BJOG Int J Obstet Gynaecol. 2010;117:69–75. van Leeuwen M, Opmeer BC, Zweers EJK, et al. Estimating the risk of gestational diabetes mellitus: a clinical prediction model based on patient characteristics and medical history. BJOG Int J Obstet Gynaecol. 2010;117:69–75.
44.
go back to reference Iliodromiti S, Mackay DF, Smith GCS, et al. Customised and noncustomised birth weight centiles and prediction of stillbirth and infant mortality and morbidity: a cohort study of 979,912 term singleton pregnancies in Scotland. PLoS Med. 2017;14:e1002228.PubMedPubMedCentral Iliodromiti S, Mackay DF, Smith GCS, et al. Customised and noncustomised birth weight centiles and prediction of stillbirth and infant mortality and morbidity: a cohort study of 979,912 term singleton pregnancies in Scotland. PLoS Med. 2017;14:e1002228.PubMedPubMedCentral
45.
go back to reference Moons KGM, Kengne AP, Grobbee DE, et al. Risk prediction models: II. External validation, model updating, and impact assessment. Heart. 2012;98:691–8.PubMed Moons KGM, Kengne AP, Grobbee DE, et al. Risk prediction models: II. External validation, model updating, and impact assessment. Heart. 2012;98:691–8.PubMed
46.
go back to reference Souza RT, Cecatti JG, Costa ML, et al. Planning, implementing, and running a multicentre preterm birth study with biobank resources in Brazil: the Preterm SAMBA Study. Biomed Research International. 2019;2019:5476350.PubMedPubMedCentral Souza RT, Cecatti JG, Costa ML, et al. Planning, implementing, and running a multicentre preterm birth study with biobank resources in Brazil: the Preterm SAMBA Study. Biomed Research International. 2019;2019:5476350.PubMedPubMedCentral
48.
go back to reference Kleinrouweler CE, Wiegerinck MM, Ris-Stalpers C, Bossuyt PM, van der Post JA, von Dadelszen P, Mol BW, Pajkrt E; EBM CONNECT Collaboration.Accuracy of circulating placental growth factor, vascular endothelial growth factor, soluble fms-like tyrosine kinase 1 and soluble endoglin in the prediction of pre-eclampsia: a systematic review and meta-analysis. BJOG. 2012;119(7):778-87. https://doi.org/10.1111/j.1471-0528.2012.03311.x. Epub 2012 Mar 20. PMID: 22433027. Kleinrouweler CE, Wiegerinck MM, Ris-Stalpers C, Bossuyt PM, van der Post JA, von Dadelszen P, Mol BW, Pajkrt E; EBM CONNECT Collaboration.Accuracy of circulating placental growth factor, vascular endothelial growth factor, soluble fms-like tyrosine kinase 1 and soluble endoglin in the prediction of pre-eclampsia: a systematic review and meta-analysis. BJOG. 2012;119(7):778-87. https://​doi.​org/​10.​1111/​j.​1471-0528.​2012.​03311.​x. Epub 2012 Mar 20. PMID: 22433027.
49.
go back to reference Sotiriadis A, Papatheodorou S, Kavvadias A, Makrydimas G. Transvaginal cervical length measurement for prediction of preterm birth in women withthreatened preterm labor: a meta-analysis. Ultrasound Obstet Gynecol. 2010;35(1):54-64. https://doi.org/10.1002/uog.7457. PMID: 20014326. Sotiriadis A, Papatheodorou S, Kavvadias A, Makrydimas G. Transvaginal cervical length measurement for prediction of preterm birth in women withthreatened preterm labor: a meta-analysis. Ultrasound Obstet Gynecol. 2010;35(1):54-64. https://​doi.​org/​10.​1002/​uog.​7457. PMID: 20014326.
50.
go back to reference Cooray SD, Boyle JA, Soldatos G, Wijeyaratne LA, Teede HJ. Prognostic prediction models for pregnancy complications in women with gestational diabetes: a protocol for systematic review, critical appraisal and meta-analysis. Systematic Reviews. 2019;8:270.PubMedPubMedCentral Cooray SD, Boyle JA, Soldatos G, Wijeyaratne LA, Teede HJ. Prognostic prediction models for pregnancy complications in women with gestational diabetes: a protocol for systematic review, critical appraisal and meta-analysis. Systematic Reviews. 2019;8:270.PubMedPubMedCentral
Metadata
Title
Do nuclear magnetic resonance (NMR)-based metabolomics improve the prediction of pregnancy-related disorders? Findings from a UK birth cohort with independent validation
Authors
Nancy McBride
Paul Yousefi
Sara L. White
Lucilla Poston
Diane Farrar
Naveed Sattar
Scott M. Nelson
John Wright
Dan Mason
Matthew Suderman
Caroline Relton
Deborah A. Lawlor
Publication date
01-12-2020
Publisher
BioMed Central
Keyword
Premature Birth
Published in
BMC Medicine / Issue 1/2020
Electronic ISSN: 1741-7015
DOI
https://doi.org/10.1186/s12916-020-01819-z

Other articles of this Issue 1/2020

BMC Medicine 1/2020 Go to the issue