Literature DB >> 30267475

Prediction of pre-eclampsia: review of reviews.

R Townsend1,2, A Khalil1,2, Y Premakumar2, J Allotey3, K I E Snell4, C Chan5, L C Chappell6, R Hooper5, M Green7, B W Mol8, B Thilaganathan1,2, S Thangaratinam3.   

Abstract

OBJECTIVE: Primary studies and systematic reviews provide estimates of varying accuracy for different factors in the prediction of pre-eclampsia. The aim of this study was to review published systematic reviews to collate evidence on the ability of available tests to predict pre-eclampsia, to identify high-value avenues for future research and to minimize future research waste in this field.
METHODS: MEDLINE, EMBASE and The Cochrane Library including DARE (Database of Abstracts of Reviews of Effects) databases, from database inception to March 2017, and bibliographies of relevant articles were searched, without language restrictions, for systematic reviews and meta-analyses on the prediction of pre-eclampsia. The quality of the included reviews was assessed using the AMSTAR tool and a modified version of the QUIPS tool. We evaluated the comprehensiveness of search, sample size, tests and outcomes evaluated, data synthesis methods, predictive ability estimates, risk of bias related to the population studied, measurement of predictors and outcomes, study attrition and adjustment for confounding.
RESULTS: From 2444 citations identified, 126 reviews were included, reporting on over 90 predictors and 52 prediction models for pre-eclampsia. Around a third (n = 37 (29.4%)) of all reviews investigated solely biochemical markers for predicting pre-eclampsia, 31 (24.6%) investigated genetic associations with pre-eclampsia, 46 (36.5%) reported on clinical characteristics, four (3.2%) evaluated only ultrasound markers and six (4.8%) studied a combination of tests; two (1.6%) additional reviews evaluated primary studies investigating any screening test for pre-eclampsia. Reviews included between two and 265 primary studies, including up to 25 356 688 women in the largest review. Only approximately half (n = 67 (53.2%)) of the reviews assessed the quality of the included studies. There was a high risk of bias in many of the included reviews, particularly in relation to population representativeness and study attrition. Over 80% (n = 106 (84.1%)) summarized the findings using meta-analysis. Thirty-two (25.4%) studies lacked a formal statement on funding. The predictors with the best test performance were body mass index (BMI) > 35 kg/m2 , with a specificity of 92% (95% CI, 89-95%) and a sensitivity of 21% (95% CI, 12-31%); BMI > 25 kg/m2 , with a specificity of 73% (95% CI, 64-83%) and a sensitivity of 47% (95% CI, 33-61%); first-trimester uterine artery pulsatility index or resistance index > 90th centile (specificity 93% (95% CI, 90-96%) and sensitivity 26% (95% CI, 23-31%)); placental growth factor (specificity 89% (95% CI, 89-89%) and sensitivity 65% (95% CI, 63-67%)); and placental protein 13 (specificity 88% (95% CI, 87-89%) and sensitivity 37% (95% CI, 33-41%)). No single marker had a test performance suitable for routine clinical use. Models combining markers showed promise, but none had undergone external validation.
CONCLUSIONS: This review of reviews calls into question the need for further aggregate meta-analysis in this area given the large number of published reviews subject to the common limitations of primary predictive studies. Prospective, well-designed studies of predictive markers, preferably randomized intervention studies, and combined through individual-patient data meta-analysis are needed to develop and validate new prediction models to facilitate the prediction of pre-eclampsia and minimize further research waste in this field.
Copyright © 2018 ISUOG. Published by John Wiley & Sons Ltd. Copyright © 2018 ISUOG. Published by John Wiley & Sons Ltd.

Entities:  

Keywords:  hypertension in pregnancy; pre-eclampsia; prediction; screening; systematic review

Mesh:

Substances:

Year:  2019        PMID: 30267475     DOI: 10.1002/uog.20117

Source DB:  PubMed          Journal:  Ultrasound Obstet Gynecol        ISSN: 0960-7692            Impact factor:   7.299


  12 in total

1.  Validation and development of models using clinical, biochemical and ultrasound markers for predicting pre-eclampsia: an individual participant data meta-analysis.

Authors:  John Allotey; Kym Ie Snell; Melanie Smuk; Richard Hooper; Claire L Chan; Asif Ahmed; Lucy C Chappell; Peter von Dadelszen; Julie Dodds; Marcus Green; Louise Kenny; Asma Khalil; Khalid S Khan; Ben W Mol; Jenny Myers; Lucilla Poston; Basky Thilaganathan; Anne C Staff; Gordon Cs Smith; Wessel Ganzevoort; Hannele Laivuori; Anthony O Odibo; Javier A Ramírez; John Kingdom; George Daskalakis; Diane Farrar; Ahmet A Baschat; Paul T Seed; Federico Prefumo; Fabricio da Silva Costa; Henk Groen; Francois Audibert; Jacques Masse; Ragnhild B Skråstad; Kjell Å Salvesen; Camilla Haavaldsen; Chie Nagata; Alice R Rumbold; Seppo Heinonen; Lisa M Askie; Luc Jm Smits; Christina A Vinter; Per M Magnus; Kajantie Eero; Pia M Villa; Anne K Jenum; Louise B Andersen; Jane E Norman; Akihide Ohkuchi; Anne Eskild; Sohinee Bhattacharya; Fionnuala M McAuliffe; Alberto Galindo; Ignacio Herraiz; Lionel Carbillon; Kerstin Klipstein-Grobusch; SeonAe Yeo; Helena J Teede; Joyce L Browne; Karel Gm Moons; Richard D Riley; Shakila Thangaratinam
Journal:  Health Technol Assess       Date:  2020-12       Impact factor: 4.014

2.  External validation of prognostic models predicting pre-eclampsia: individual participant data meta-analysis.

Authors:  Kym I E Snell; John Allotey; Melanie Smuk; Richard Hooper; Claire Chan; Asif Ahmed; Lucy C Chappell; Peter Von Dadelszen; Marcus Green; Louise Kenny; Asma Khalil; Khalid S Khan; Ben W Mol; Jenny Myers; Lucilla Poston; Basky Thilaganathan; Anne C Staff; Gordon C S Smith; Wessel Ganzevoort; Hannele Laivuori; Anthony O Odibo; Javier Arenas Ramírez; John Kingdom; George Daskalakis; Diane Farrar; Ahmet A Baschat; Paul T Seed; Federico Prefumo; Fabricio da Silva Costa; Henk Groen; Francois Audibert; Jacques Masse; Ragnhild B Skråstad; Kjell Å Salvesen; Camilla Haavaldsen; Chie Nagata; Alice R Rumbold; Seppo Heinonen; Lisa M Askie; Luc J M Smits; Christina A Vinter; Per Magnus; Kajantie Eero; Pia M Villa; Anne K Jenum; Louise B Andersen; Jane E Norman; Akihide Ohkuchi; Anne Eskild; Sohinee Bhattacharya; Fionnuala M McAuliffe; Alberto Galindo; Ignacio Herraiz; Lionel Carbillon; Kerstin Klipstein-Grobusch; Seon Ae Yeo; Joyce L Browne; Karel G M Moons; Richard D Riley; Shakila Thangaratinam
Journal:  BMC Med       Date:  2020-11-02       Impact factor: 8.775

3.  Proteomic signatures predict preeclampsia in individual cohorts but not across cohorts - implications for clinical biomarker studies.

Authors:  Mohammad S Ghaemi; Adi L Tarca; Roberto Romero; Natalie Stanley; Ramin Fallahzadeh; Athena Tanada; Anthony Culos; Kazuo Ando; Xiaoyuan Han; Yair J Blumenfeld; Maurice L Druzin; Yasser Y El-Sayed; Ronald S Gibbs; Virginia D Winn; Kevin Contrepois; Xuefeng B Ling; Ronald J Wong; Gary M Shaw; David K Stevenson; Brice Gaudilliere; Nima Aghaeepour; Martin S Angst
Journal:  J Matern Fetal Neonatal Med       Date:  2021-03-02

Review 4.  Gestational Diabetes Mellitus and Preeclampsia: Correlation and Influencing Factors.

Authors:  Ying Yang; Na Wu
Journal:  Front Cardiovasc Med       Date:  2022-02-16

5.  Normative placental structure in pregnancy using quantitative Magnetic Resonance Imaging.

Authors:  Nickie Andescavage; Kushal Kapse; Yuan-Chiao Lu; Scott D Barnett; Marni Jacobs; Alexis C Gimovsky; Homa Ahmadzia; Jessica Quistorff; Catherine Lopez; Nicole Reinholdt Andersen; Dorothy Bulas; Catherine Limperopoulos
Journal:  Placenta       Date:  2021-07-31       Impact factor: 3.287

6.  Population screening for gestational hypertensive disorders using maternal, fetal and placental characteristics: A population-based prospective cohort study.

Authors:  Jan S Erkamp; Vincent W V Jaddoe; Liesbeth Duijts; Irwin K M Reiss; Annemarie G M G J Mulders; Eric A P Steegers; Romy Gaillard
Journal:  Prenat Diagn       Date:  2020-04-07       Impact factor: 3.050

7.  Current Resources for Evidence-Based Practice, May 2020.

Authors:  Marit L Bovbjerg
Journal:  J Obstet Gynecol Neonatal Nurs       Date:  2020-04-10

8.  Artificial intelligence-assisted prediction of preeclampsia: Development and external validation of a nationwide health insurance dataset of the BPJS Kesehatan in Indonesia.

Authors:  Herdiantri Sufriyana; Yu-Wei Wu; Emily Chia-Yu Su
Journal:  EBioMedicine       Date:  2020-04-10       Impact factor: 8.143

9.  Study protocol for a prospective cohort study to investigate Hemodynamic Adaptation to Pregnancy and Placenta-related Outcome: the HAPPO study.

Authors:  Rianne C Bijl; Jérôme M J Cornette; Annemien E van den Bosch; Johannes J Duvekot; Jeroen Molinger; Sten P Willemsen; Anton H J Koning; Jolien W Roos-Hesselink; Arie Franx; Régine P M Steegers-Theunissen; Maria P H Koster
Journal:  BMJ Open       Date:  2019-11-10       Impact factor: 2.692

10.  Trends in maternal body mass index in Northern Ireland: a cross-sectional and longitudinal study.

Authors:  Lisa Kent; Christopher Cardwell; Ian Young; Kelly-Ann Eastwood
Journal:  Fam Med Community Health       Date:  2021-12
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