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Clinical Decision Support for Improved Neonatal Care: The Development of a Machine Learning Model for the Prediction of Late-onset Sepsis and Necrotizing Enterocolitis.
Meeus, Marisse; Beirnaert, Charlie; Mahieu, Ludo; Laukens, Kris; Meysman, Pieter; Mulder, Antonius; Van Laere, David.
Afiliación
  • Meeus M; Department of Neonatal Intensive Care, Antwerp University Hospital, Edegem, Belgium; Laboratory of Experimental Medicine and Pediatrics, Faculty of Medicine and Health Sciences, University of Antwerp, Antwerpen, Belgium. Electronic address: marisse.meeus@uza.be.
  • Beirnaert C; Department of Neonatal Intensive Care, Antwerp University Hospital, Edegem, Belgium; Innocens BV, Antwerpen, Belgium; Department of Computer Science, University of Antwerp, Antwerpen, Belgium.
  • Mahieu L; Department of Neonatal Intensive Care, Antwerp University Hospital, Edegem, Belgium; Laboratory of Experimental Medicine and Pediatrics, Faculty of Medicine and Health Sciences, University of Antwerp, Antwerpen, Belgium.
  • Laukens K; Department of Computer Science, University of Antwerp, Antwerpen, Belgium.
  • Meysman P; Department of Computer Science, University of Antwerp, Antwerpen, Belgium.
  • Mulder A; Department of Neonatal Intensive Care, Antwerp University Hospital, Edegem, Belgium; Laboratory of Experimental Medicine and Pediatrics, Faculty of Medicine and Health Sciences, University of Antwerp, Antwerpen, Belgium.
  • Van Laere D; Department of Neonatal Intensive Care, Antwerp University Hospital, Edegem, Belgium; Laboratory of Experimental Medicine and Pediatrics, Faculty of Medicine and Health Sciences, University of Antwerp, Antwerpen, Belgium; Innocens BV, Antwerpen, Belgium.
J Pediatr ; 266: 113869, 2024 Mar.
Article en En | MEDLINE | ID: mdl-38065281
ABSTRACT

OBJECTIVE:

To develop an artificial intelligence-based software system for predicting late-onset sepsis (LOS) and necrotizing enterocolitis (NEC) in infants admitted to the neonatal intensive care unit (NICU). STUDY

DESIGN:

Single-center, retrospective cohort study, conducted in the NICU of the Antwerp University Hospital. Continuous monitoring data of 865 preterm infants born at <32 weeks gestational age, admitted to the NICU in the first week of life, were used to train an XGBoost machine learning (ML) algorithm for LOS and NEC prediction in a cross-validated setup. Afterward, the model's performance was assessed on an independent test set of 148 patients (internal validation).

RESULTS:

The ML model delivered hourly risk predictions with an overall sensitivity of 69% (142/206) for all LOS/NEC episodes and 81% (67/83) for severe LOS/NEC episodes. The model showed a median time gain of ≤10 hours (IQR, 3.1-21.0 hours), compared with historical clinical diagnosis. On the complete retrospective dataset, the ML model made 721 069 predictions, of which 9805 (1.3%) depicted a LOS/NEC probability of ≥0.15, resulting in a total alarm rate of <1 patient alarm-day per week. The model reached a similar performance on the internal validation set.

CONCLUSIONS:

Artificial intelligence technology can assist clinicians in the early detection of LOS and NEC in the NICU, which potentially can result in clinical and socioeconomic benefits. Additional studies are required to quantify further the effect of combining artificial and human intelligence on patient outcomes in the NICU.
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Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Sepsis / Sistemas de Apoyo a Decisiones Clínicas / Enterocolitis Necrotizante / Enfermedades Fetales / Enfermedades del Recién Nacido Límite: Female / Humans / Infant / Newborn Idioma: En Año: 2024 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Sepsis / Sistemas de Apoyo a Decisiones Clínicas / Enterocolitis Necrotizante / Enfermedades Fetales / Enfermedades del Recién Nacido Límite: Female / Humans / Infant / Newborn Idioma: En Año: 2024 Tipo del documento: Article