Smart Newborn: A Tool for Early Prediction of a Severe Preterm Newborn Illness
Işıl Güzey
Özlem Uçar
10.6084/m9.figshare.7581968.v1
https://imisc.figshare.com/articles/journal_contribution/Smart_Newborn_A_Tool_for_Early_Prediction_of_a_Severe_Preterm_Newborn_Illness/7581968
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<p><b>Abstract
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<p>Sepsis is a major cause of morbidity, mortality and increased healthcare costs among preterm babies. Infants are often
diagnosed when seriously ill, which decreases the probability for prompt and complete recovery. To study on sepsis
prediction, we developed a medical informatics system prototype, “Smart Newborn” that retains and analyses patient
based data. As initial study, we illustrate the evolution of 30 minutes pulse rate (PR) histogram samples of a representative
patient within 48 hours before sepsis suspicion, which point out that PR based analysis outcomes are in parallel with previous
studies based on heart rate (HR) data obtained from ECG leads. Monitoring based on ECG leads for long time is not the
preferred method in many Neonatal Intensive Care Units (NICUs) due to probable skin sensitivity reactions at contact points.
Therefore, capturing and visualizing the same disease signs using PR data makes our process more practical and accessible.
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<p><b>Editor: </b>H. Kemal İlter, Ankara Yıldırım Beyazıt University, Turkey<br><b>
Received: </b>August 19, 2018, <b>Accepted: </b>October 18, 2018, <b>Published: </b>November 10, 2018
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<p><b>Copyright:</b> © 2018 IMISC Güzey, Uçar. This is an open-access article distributed under the terms of the Creative Commons
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author
and source are credited. </p>
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2019-01-13 17:23:17
Medical decision support system
imisc
Big data processing
Data visualisation
Business Information Systems