Publication:
Machine Learning to Predict Pre-Eclampsia and Intrauterine Growth Restriction in Pregnant Women

dc.contributor.authorGomez-Jemes, Lola
dc.contributor.authorMadalina Oprescu, Andreea
dc.contributor.authorChimenea-Toscano, Angel
dc.contributor.authorGarcia-Diaz, Lutgardo
dc.contributor.authorRomero-Ternero, Maria del Carmen
dc.contributor.authoraffiliation[Gomez-Jemes, Lola] Univ Seville, Dept Elect Technol, Seville 41012, Spain
dc.contributor.authoraffiliation[Madalina Oprescu, Andreea] Univ Seville, Dept Elect Technol, Seville 41012, Spain
dc.contributor.authoraffiliation[Romero-Ternero, Maria del Carmen] Univ Seville, Dept Elect Technol, Seville 41012, Spain
dc.contributor.authoraffiliation[Chimenea-Toscano, Angel] Univ Seville, Hosp Univ Virgen del Rocio, Dept Cirugia, Seville 41009, Spain
dc.contributor.authoraffiliation[Garcia-Diaz, Lutgardo] Univ Seville, Hosp Univ Virgen del Rocio, Dept Cirugia, Seville 41009, Spain
dc.contributor.authoraffiliation[Gomez-Jemes, Lola] ETSI Informat, Avda Reina Mercedes S-N, Seville 41012, Spain
dc.date.accessioned2023-05-03T13:53:31Z
dc.date.available2023-05-03T13:53:31Z
dc.date.issued2022-10-01
dc.description.abstractThe use of artificial intelligence in healthcare in general and in obstetrics and gynecology in particular has great potential. Specifically, machine learning methods could help improve the health and well-being of pregnant women, closely monitoring their health parameters during pregnancy, or reducing maternal and perinatal morbidity and mortality with early detection of pathologies. In this work, we propose a machine learning model to predict risk events in pregnancy, in particular the prediction of pre-eclampsia and intrauterine growth restriction, using Doppler measures of the uterine artery, sFlt-1, and PlGF values. For this purpose, we used a public dataset from a study carried out by the University Medical Center of Ljubljana, in which data were collected from 95 pregnant women with pre-eclampsia and intrauterine growth restriction. We adopted a multi-label approach to accomplish the prediction task. Different classifiers were evaluated and compared. The performance of each model was tested in terms of accuracy, precision, recall, F1 score, Hamming loss, and AUC-ROC. On the basis of these parameters, a variation of the decision tree classifier was found to be the best performing model. Our model had a robust recall metric (0.89) and an AUC ROC metric (0.87), taking into account the size of the data and the unbalance of the class.
dc.identifier.doi10.3390/electronics11193240
dc.identifier.essn2079-9292
dc.identifier.unpaywallURLhttps://www.mdpi.com/2079-9292/11/19/3240/pdf?version=1665394571
dc.identifier.urihttp://hdl.handle.net/10668/20971
dc.identifier.wosID866901700001
dc.issue.number19
dc.journal.titleElectronics
dc.journal.titleabbreviationElectronics
dc.language.isoen
dc.organizationHospital Universitario Virgen del Rocío
dc.publisherMdpi
dc.rightsAttribution 4.0 International
dc.rights.accessRightsopen access
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/
dc.subjectmachine learning
dc.subjectmultilabel classification
dc.subjectpre-eclampsia
dc.subjectintrauterine growth restriction
dc.subjectpregnancy disorders
dc.subjectArtificial-intelligence
dc.subjectPrevention
dc.subjectAspirin
dc.titleMachine Learning to Predict Pre-Eclampsia and Intrauterine Growth Restriction in Pregnant Women
dc.typeresearch article
dc.type.hasVersionVoR
dc.volume.number11
dc.wostypeArticle
dspace.entity.typePublication

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