Linking Bayesian Network and Intensive Care Units Data: A Glycemic Control Study

Health informatics in glycemic control is visibly a promising research area. However, this applied science requires more intelligent mechanisms by which user requirements for more accurate prediction can be fulfilled. Such mechanisms must provide very flexible and user friendly procedures to enable...

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Main Authors: Abu-Samah, A., Abdul Razak, N.N., Mohamad Suhaimi, F., Jamaludin, U.K., Chase, G.
Format: Conference Paper
Language:English
Published: 2020
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spelling my.uniten.dspace-131322020-07-06T06:57:03Z Linking Bayesian Network and Intensive Care Units Data: A Glycemic Control Study Abu-Samah, A. Abdul Razak, N.N. Mohamad Suhaimi, F. Jamaludin, U.K. Chase, G. Health informatics in glycemic control is visibly a promising research area. However, this applied science requires more intelligent mechanisms by which user requirements for more accurate prediction can be fulfilled. Such mechanisms must provide very flexible and user friendly procedures to enable complicated decision support functions. This article presents the linking process of per-patient demographic and admission to intensive care unit data with their glycemic control performance using probabilistic causal Bayesian Network models (BNs). Data from two glycemic control protocols are exploited to test the feasibility. The identified steps crucial in building a dependable model are variable selection, state discretization, and structure learning. Different BNs can be generated with more than 83.73% overall precision rate and 93.4% overall calibration index with the combination of these steps. A network with a 95.36% precision was obtained with an equal distance discretization algorithm dataset and Maximum Weight Tree Spanning unsupervised structure learning. The study was the first testing phase in which the results generated by selected data and process is proposed as a benchmark. The resulting network is centred on 'Hypertension' status to predict BG mean and number of measurements as a result of the prediction interest. This co-morbidity is proposed to be considered systematically in the modelling of any glycemic control to optimize its function in the intensive care units. © 2018 IEEE. 2020-02-03T03:30:36Z 2020-02-03T03:30:36Z 2019 Conference Paper 10.1109/TENCON.2018.8650206 en
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
language English
description Health informatics in glycemic control is visibly a promising research area. However, this applied science requires more intelligent mechanisms by which user requirements for more accurate prediction can be fulfilled. Such mechanisms must provide very flexible and user friendly procedures to enable complicated decision support functions. This article presents the linking process of per-patient demographic and admission to intensive care unit data with their glycemic control performance using probabilistic causal Bayesian Network models (BNs). Data from two glycemic control protocols are exploited to test the feasibility. The identified steps crucial in building a dependable model are variable selection, state discretization, and structure learning. Different BNs can be generated with more than 83.73% overall precision rate and 93.4% overall calibration index with the combination of these steps. A network with a 95.36% precision was obtained with an equal distance discretization algorithm dataset and Maximum Weight Tree Spanning unsupervised structure learning. The study was the first testing phase in which the results generated by selected data and process is proposed as a benchmark. The resulting network is centred on 'Hypertension' status to predict BG mean and number of measurements as a result of the prediction interest. This co-morbidity is proposed to be considered systematically in the modelling of any glycemic control to optimize its function in the intensive care units. © 2018 IEEE.
format Conference Paper
author Abu-Samah, A.
Abdul Razak, N.N.
Mohamad Suhaimi, F.
Jamaludin, U.K.
Chase, G.
spellingShingle Abu-Samah, A.
Abdul Razak, N.N.
Mohamad Suhaimi, F.
Jamaludin, U.K.
Chase, G.
Linking Bayesian Network and Intensive Care Units Data: A Glycemic Control Study
author_facet Abu-Samah, A.
Abdul Razak, N.N.
Mohamad Suhaimi, F.
Jamaludin, U.K.
Chase, G.
author_sort Abu-Samah, A.
title Linking Bayesian Network and Intensive Care Units Data: A Glycemic Control Study
title_short Linking Bayesian Network and Intensive Care Units Data: A Glycemic Control Study
title_full Linking Bayesian Network and Intensive Care Units Data: A Glycemic Control Study
title_fullStr Linking Bayesian Network and Intensive Care Units Data: A Glycemic Control Study
title_full_unstemmed Linking Bayesian Network and Intensive Care Units Data: A Glycemic Control Study
title_sort linking bayesian network and intensive care units data: a glycemic control study
publishDate 2020
_version_ 1672614208475234304
score 13.18916