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Autoregressive Hidden Markov Models for the Early Detection of Neonatal Sepsis

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http://ieeexplore.ieee.org/xpl/articleDetails.jsp?arnumber=6680664
Original languageEnglish
Pages (from-to)1560-1570
Number of pages11
JournalIEEE Journal of Biomedical and Health Informatics
Volume18
Issue number5
DOIs
Publication statusPublished - 1 Sep 2014

Abstract

Late onset neonatal sepsis is one of the major clinical concerns when premature babies receive intensive care. Current practice relies on slow laboratory testing of blood cultures for diagnosis. A valuable research question is whether sepsis can be reliably detected before the blood sample is taken. This paper investigates the extent to which physiological events observed in the patient's monitoring traces could be used for the early detection of neonatal sepsis. We model the distribution of these events with an autoregressive hidden Markov model (AR-HMM). Both learning and inference carefully use domain knowledge to extract the baby's true physiology from the monitoring data. Our model can produce real-time predictions about the onset of the infection and also handles missing data. We evaluate the effectiveness of the AR-HMM for sepsis detection on a dataset collected from the Neonatal Intensive Care Unit at the Royal Infirmary of Edinburgh.

    Research areas

  • autoregressive processes, blood, diseases, hidden Markov models, neurophysiology, paediatrics, patient diagnosis, patient monitoring, AR-HMM, autoregressive hidden Markov models, blood sample, data monitoring, domain knowledge, early detection, infection, intensive care, learning, neonatal sepsis, physiological events, premature babies, slow laboratory testing, Biomedical monitoring, Blood, Data models, Heart rate, Hidden Markov models, Monitoring, Pediatrics, Autoregressive hidden Markov model (AR-HMM), real-time inference

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