Machine learning algorithm to predict acidemia using electronic fetal monitoring recording parameters
Resumen: Background: Electronic fetal monitoring (EFM) is the universal method for the surveillance of fetal well-being in intrapartum. Our objective was to predict acidemia from fetal heart signal features using machine learning algorithms. Methods: A case–control 1:2 study was carried out compromising 378 infants, born in the Miguel Servet University Hospital, Spain. Neonatal acidemia was defined as pH < 7.10. Using EFM recording logistic regression, random forest and neural networks models were built to predict acidemia. Validation of models was performed by means of discrimination, calibration, and clinical utility. Results: Best performance was attained using a random forest model built with 100 trees. The discrimination ability was good, with an area under the Receiver Operating Characteristic curve (AUC) of 0.865. The calibration showed a slight overestimation of acidemia occurrence for probabilities above 0.4. The clinical utility showed that for 33% cutoff point, missing 5% of acidotic cases, 46% of unnecessary cesarean sections could be prevented. Logistic regression and neural networks showed similar discrimination ability but with worse calibration and clinical utility. Conclusions: The combination of the variables extracted from EFM recording provided a predictive model of acidemia that showed good accuracy and provides a practical tool to prevent unnecessary cesarean sections.
Idioma: Inglés
DOI: 10.3390/e24010068
Año: 2022
Publicado en: ENTROPY 24, 1 (2022), 68 [16 pp.]
ISSN: 1099-4300

Factor impacto JCR: 2.7 (2022)
Categ. JCR: PHYSICS, MULTIDISCIPLINARY rank: 40 / 85 = 0.471 (2022) - Q2 - T2
Factor impacto CITESCORE: 4.7 - Physics and Astronomy (Q2)

Factor impacto SCIMAGO: 0.541 - Electrical and Electronic Engineering (Q2) - Physics and Astronomy (miscellaneous) (Q2) - Mathematical Physics (Q2) - Information Systems (Q2)

Financiación: info:eu-repo/grantAgreement/ES/DGA/E46-20R
Financiación: info:eu-repo/grantAgreement/ES/MICINN/PID2020-116873GB-I00
Tipo y forma: Article (Published version)
Área (Departamento): Área Estadís. Investig. Opera. (Dpto. Métodos Estadísticos)
Área (Departamento): Área Obstetricia y Ginecología (Dpto. Cirugía)


Creative Commons You must give appropriate credit, provide a link to the license, and indicate if changes were made. You may do so in any reasonable manner, but not in any way that suggests the licensor endorses you or your use.


Exportado de SIDERAL (2024-03-18-12:39:11)


Visitas y descargas

Este artículo se encuentra en las siguientes colecciones:
Articles > Artículos por área > Estadística e Investigación Operativa
Articles > Artículos por área > Obstetricia y Ginecología



 Record created 2022-02-08, last modified 2024-03-19


Versión publicada:
 PDF
Rate this document:

Rate this document:
1
2
3
 
(Not yet reviewed)