Towards an educational tool for supporting neonatologists in the delivery room

GIORGIO LEONARDI, Maldarizzi Clara, Stefania MONTANI, Manuel STRIANI, Strozzi Mariachiara

Risultato della ricerca: Capitolo in libro/report/atti di convegnoContributo in volume (Capitolo o Saggio)peer review

Abstract

Nowadays, there is evidence that several factors may increase the risk, for an infant, to require stabilisation or resuscitation manoeuvres at birth. However, this risk factors are not completely known, and a universally applicable model for predicting high-risk situations is not available yet. Considering both these limitations and the fact that the need for resuscitation at birth is a rare event, periodic training of the healthcare personnel responsible for newborn caring in the delivery room is mandatory. In this paper, we propose a machine learning approach for identifying risk factors and their impact on the birth event from real data, which can be used by personnel to progressively increase and update their knowledge. Our final goal will be the one of designing a user-friendly mobile application, able to improve the recognition rate and the planning of the appropriate interventions on high-risk patients.
Lingua originaleInglese
Titolo della pubblicazione ospiteProceedings of the 2024 9th International Conference on Information and Education Innovations
EditoreAssociation for Computing Machinery
Pagine31-36
Numero di pagine6
ISBN (stampa)9798400716409
DOI
Stato di pubblicazionePubblicato - 2024

Keywords

  • Machine learning
  • Risk factors
  • neonatal resuscitation
  • newborn babies
  • risk prediction

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