Machine learning-enabled maternal risk assessment for women with pre-eclampsia (the PIERS-ML model)

dc.contributor.authorMontgomery-Csobán, Tündeen
dc.contributor.authorKavanagh, Kimberleyen
dc.contributor.authorMurray, Paulen
dc.contributor.authorRobertson, Chrisen
dc.contributor.authorBarry, Sarah J.E.en
dc.contributor.authorVivian Ukah, U.en
dc.contributor.authorPayne, Beth A.en
dc.contributor.authorNicolaides, Kypros H.en
dc.contributor.authorSyngelaki, Argyroen
dc.contributor.authorIonescu, Oliviaen
dc.contributor.authorAkolekar, Ranjiten
dc.contributor.authorHutcheon, Jennifer A.en
dc.contributor.authorMagee, Laura A.en
dc.contributor.authorvon Dadelszen, Peteren
dc.contributor.authorBrown, Mark A.en
dc.contributor.authorDavis, Gregory K.en
dc.contributor.authorParker, Claireen
dc.contributor.authorWalters, Barry N.en
dc.contributor.authorSass, Nelsonen
dc.contributor.authorAnsermino, J. Marken
dc.contributor.authorCao, Vivienen
dc.contributor.authorCundiff, Geoffrey W.en
dc.contributor.authorvon Dadelszen, Emma C.M.en
dc.contributor.authorDouglas, M. Joanneen
dc.contributor.authorDumont, Guy A.en
dc.contributor.authorDunsmuir, Dustin T.en
dc.contributor.authorJoseph, K. S.en
dc.contributor.authorLalji, Sayrinen
dc.contributor.authorLee, Tangen
dc.contributor.authorLi, Jingen
dc.contributor.authorLim, Kenneth I.en
dc.contributor.authorLisonkova, Sarkaen
dc.contributor.authorLott, Paulaen
dc.contributor.authorMenzies, Jennifer M.en
dc.contributor.authorMillman, Alexandra L.en
dc.contributor.authorPalmer, Lynneen
dc.contributor.authorPayne, Beth A.en
dc.contributor.authorQu, Ziguangen
dc.contributor.authorRussell, James A.en
dc.contributor.authorSawchuck, Dianeen
dc.contributor.authorShaw, Dorothyen
dc.contributor.authorStill, D. Keithen
dc.contributor.authorUkah, U. Vivianen
dc.contributor.authorWagner, Brendaen
dc.contributor.authorWalley, Keith R.en
dc.contributor.authorHugo, Danyen
dc.contributor.authorGruslin, The late Andréeen
dc.contributor.authorTawagi, Georgeen
dc.contributor.authorSmith, Graeme N.en
dc.contributor.authorRobson, Stephen C.en
dc.date.accessioned2025-05-23T09:25:33Z
dc.date.available2025-05-23T09:25:33Z
dc.date.issued2024en
dc.description.abstractBackground: Affecting 2–4% of pregnancies, pre-eclampsia is a leading cause of maternal death and morbidity worldwide. Using routinely available data, we aimed to develop and validate a novel machine learning-based and clinical setting-responsive time-of-disease model to rule out and rule in adverse maternal outcomes in women presenting with pre-eclampsia. Methods: We used health system, demographic, and clinical data from the day of first assessment with pre-eclampsia to predict a Delphi-derived composite outcome of maternal mortality or severe morbidity within 2 days. Machine learning methods, multiple imputation, and ten-fold cross-validation were used to fit models on a development dataset (75% of combined published data of 8843 patients from 11 low-income, middle-income, and high-income countries). Validation was undertaken on the unseen 25%, and an additional external validation was performed in 2901 inpatient women admitted with pre-eclampsia to two hospitals in south-east England. Predictive risk accuracy was determined by area-under-the-receiver-operator characteristic (AUROC), and risk categories were data-driven and defined by negative (–LR) and positive (+LR) likelihood ratios. Findings: Of 8843 participants, 590 (6·7%) developed the composite adverse maternal outcome within 2 days, 813 (9·2%) within 7 days, and 1083 (12·2%) at any time. An 18-variable random forest-based prediction model, PIERS-ML, was accurate (AUROC 0·80 [95% CI 0·76–0·84] vs the currently used logistic regression model, fullPIERS: AUROC 0·68 [0·63–0·74]) and categorised women into very low risk (–LR <0·1; eight [0·7%] of 1103 women), low risk (–LR 0·1 to 0·2; 321 [29·1%] women), moderate risk (–LR >0·2 and +LR <5·0; 676 [61·3%] women), high risk (+LR 5·0 to 10·0, 87 [7·9%] women), and very high risk (+LR >10·0; 11 [1·0%] women). Adverse maternal event rates were 0% for very low risk, 2% for low risk, 5% for moderate risk, 26% for high risk, and 91% for very high risk within 48 h. The 2901 women in the external validation dataset were accurately classified as being at very low risk (0% with outcomes), low risk (1%), moderate risk (4%), high risk (33%), or very high risk (67%). Interpretation: The PIERS-ML model improves identification of women with pre-eclampsia who are at lowest and greatest risk of severe adverse maternal outcomes within 2 days of assessment, and can support provision of accurate guidance to women, their families, and their maternity care providers. Funding: University of Strathclyde Diversity in Data Linkage Centre for Doctoral Training, the Fetal Medicine Foundation, The Canadian Institutes of Health Research, and the Bill & Melinda Gates Foundation.en
dc.description.sponsorshipThis study was supported by a grant from the Fetal Medicine Foundation (charity number 1037116). The PIERS datasets were primarily funded by operating grants from the Canadian Institutes of Health Research and the Bill & Melinda Gates Foundation. Funders had no role in the design, analyses, interpretation, or manuscript preparation for this study.en
dc.description.statusPeer-revieweden
dc.identifier.otherScopus:85188631736en
dc.identifier.otherPubMed:38519152en
dc.identifier.urihttp://www.scopus.com/inward/record.url?scp=85188631736&partnerID=8YFLogxKen
dc.identifier.urihttps://hdl.handle.net/1885/733751959
dc.language.isoenen
dc.rightsPublisher Copyright: © 2024 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 licenseen
dc.sourceThe Lancet Digital Healthen
dc.titleMachine learning-enabled maternal risk assessment for women with pre-eclampsia (the PIERS-ML model)en
dc.typeJournal articleen
local.bibliographicCitation.lastpagee250en
local.bibliographicCitation.startpagee238en
local.contributor.affiliationMontgomery-Csobán, Tünde; University of Strathclydeen
local.contributor.affiliationKavanagh, Kimberley; University of Strathclydeen
local.contributor.affiliationMurray, Paul; University of Strathclydeen
local.contributor.affiliationRobertson, Chris; University of Strathclydeen
local.contributor.affiliationBarry, Sarah J.E.; University of Strathclydeen
local.contributor.affiliationVivian Ukah, U.; McGill Universityen
local.contributor.affiliationPayne, Beth A.; University of British Columbiaen
local.contributor.affiliationNicolaides, Kypros H.; King's College Hospitalen
local.contributor.affiliationSyngelaki, Argyro; King's College Hospitalen
local.contributor.affiliationIonescu, Olivia; King's College Hospitalen
local.contributor.affiliationAkolekar, Ranjit; Medway NHS Foundation Trusten
local.contributor.affiliationHutcheon, Jennifer A.; University of British Columbiaen
local.contributor.affiliationMagee, Laura A.; University of British Columbiaen
local.contributor.affiliationvon Dadelszen, Peter; University of British Columbiaen
local.contributor.affiliationRobson, Stephen C.; Medical School Directorate, School of Medicine and Psychology, ANU College of Science and Medicine, The Australian National Universityen
local.identifier.citationvolume6en
local.identifier.doi10.1016/S2589-7500(23)00267-4en
local.identifier.pure79bab0f4-8cca-40c3-9fd3-36cbd43d6d70en
local.type.statusPublisheden

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