Affiliation:
1. Department of Women's and Children's Health Karolinska Institutet Stockholm Sweden
2. Astrid Lindgren Children's Hospital Karolinska University Hospital Stockholm Sweden
3. Division of Information Science and Engineering Royal Institute of Technology – KTH Stockholm Sweden
Abstract
AbstractAimSepsis is a leading cause of morbidity and mortality in neonates. Early diagnosis is key but difficult due to non‐specific signs. We investigate the predictive value of machine learning‐assisted analysis of non‐invasive, high frequency monitoring data and demographic factors to detect neonatal sepsis.MethodsSingle centre study, including a representative cohort of 325 infants (2866 hospitalisation days). Personalised event timelines including interventions and clinical findings were generated. Time‐domain features from heart rate, respiratory rate and oxygen saturation values were calculated and demographic factors included. Sepsis prediction was performed using Naïve Bayes algorithm in a maximum a posteriori framework up to 24 h before clinical sepsis suspicion.ResultsTwenty sepsis cases were identified. Combining multiple vital signs improved algorithm performance compared to heart rate characteristics alone. This enabled a prediction of sepsis with an area under the receiver operating characteristics curve of 0.82, up to 24 h before clinical sepsis suspicion. Moreover, 10 h prior to clinical suspicion, the risk of sepsis increased 150‐fold.ConclusionThe present algorithm using non‐invasive patient data provides useful predictive value for neonatal sepsis detection. Machine learning‐assisted algorithms are promising novel methods that could help individualise patient care and reduce morbidity and mortality.
Funder
Hjärnfonden
Schweizerischer Nationalfonds zur Förderung der Wissenschaftlichen Forschung
Subject
General Medicine,Pediatrics, Perinatology and Child Health
Cited by
16 articles.
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