Abstract:
Neonates or infants under 28 days, are vulnerable to many diseases and complications that may
cause death. This is because their immune system is very low until they reach three months or
above. Child mortality is very high in developing countries compared to those economically
developed countries due to limitation in neonatal intensive care unit (NICU) that include lack of
continuous follow up, lack of medical expertise and lack of the implementation of advanced
technologies that have a major role in reducing child mortality. The main objective of this study is
to design an integrated internet of thing (IOT) system with machine learning approach for a
continues real-time vital sign monitoring and early prediction of neonatal disease in NICU that
include early onset sepsis, respiratory distress syndrome, jaundice and hypothermia.
To achieve the aim of the study a small portable vital sign module was designed using temperature,
heart rate, blood oxygen level and respiration sensors. Wemos D1 mini was used to acquire and
process sensor data as well as to display the results on liquid crystal display. Also, Wemos D1
mini parallelly send sensor data to a database server for storing and providing a real-time
continuous monitoring of temperature, heart rate, blood oxygen level and respiration rate. A real time vital sign data was obtained by developing an IOT network that connect the designed module
with the database system. In addition, to develop a prediction model a clinical data composed of
symptom list, vital sign, history and physical examination were collected from neonatal intensive
care unit. The raw data collected underwent a simple imputation technique to handle missing
values. To balance the total data per class, Synthetic Minority Oversampling Technique was used.
In addition, one-hot and label encoding were utilized to convert categorical data into numerical
form. The pre-processed data was used to train and test different models including sequential
model, random forest, gradient boosting, extreme gradient boosting, decision tree, support vector
machine and logistic regression. The two systems were integrated using a custom-designed
graphical user interface.
The prototype was tested using 20 healthy adults, and according to bland Altman statistical test
the mean bias and limit of agreement 95% confidence interval were: temperature: -0.025˚C
± 0.445 ˚C, heart rate: -0.3 ± 2.55 beat per minute, oxygen saturation: -0.15 ± 1.46 %, respiration
rate: 0.25± 3.04 breath per minute. For early disease prediction, best results were obtained using
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random forest model with accuracy, precision, recall and f1-score of 96%, 96%, 97% and 96%,
respectively.
Our experimental results show that the system provide accurate results in predicting NICU diseases
that include early onset sepsis, respiratory distress syndrome, jaundice and hypothermia. This
technology has the potential to reduce child mortality, particularly in developing countries with
limited access to medical expertise and advanced technologies. Further research is needed to
implement this system in real-world clinical settings.