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Predicting the development of T1D and identifying its Key Performance Indicators in children; a case-control study in Saudi Arabia

The increasing incidence of type 1 diabetes (T1D) in children is a growing global concern. It is known that genetic and environmental factors contribute to childhood T1D. An optimal model to predict the development of T1D in children using Key Performance Indicators (KPIs) would aid medical practiti...

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Autores principales: Alazwari, Ahood, Johnstone, Alice, Tafakori, Laleh, Abdollahian, Mali, AlEidan, Ahmed M., Alfuhigi, Khalid, Alghofialy, Mazen M., Albunyan, Abdulhameed A., Al Abbad, Hawra, AlEssa, Maryam H., Alareefy, Abdulaziz K. H., Alshamrani, Mohammad A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9977054/
https://www.ncbi.nlm.nih.gov/pubmed/36857368
http://dx.doi.org/10.1371/journal.pone.0282426
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author Alazwari, Ahood
Johnstone, Alice
Tafakori, Laleh
Abdollahian, Mali
AlEidan, Ahmed M.
Alfuhigi, Khalid
Alghofialy, Mazen M.
Albunyan, Abdulhameed A.
Al Abbad, Hawra
AlEssa, Maryam H.
Alareefy, Abdulaziz K. H.
Alshamrani, Mohammad A.
author_facet Alazwari, Ahood
Johnstone, Alice
Tafakori, Laleh
Abdollahian, Mali
AlEidan, Ahmed M.
Alfuhigi, Khalid
Alghofialy, Mazen M.
Albunyan, Abdulhameed A.
Al Abbad, Hawra
AlEssa, Maryam H.
Alareefy, Abdulaziz K. H.
Alshamrani, Mohammad A.
author_sort Alazwari, Ahood
collection PubMed
description The increasing incidence of type 1 diabetes (T1D) in children is a growing global concern. It is known that genetic and environmental factors contribute to childhood T1D. An optimal model to predict the development of T1D in children using Key Performance Indicators (KPIs) would aid medical practitioners in developing intervention plans. This paper for the first time has built a model to predict the risk of developing T1D and identify its significant KPIs in children aged (0-14) in Saudi Arabia. Machine learning methods, namely Logistic Regression, Random Forest, Support Vector Machine, Naive Bayes, and Artificial Neural Network have been utilised and compared for their relative performance. Analyses were performed in a population-based case-control study from three Saudi Arabian regions. The dataset (n = 1,142) contained demographic and socioeconomic status, genetic and disease history, nutrition history, obstetric history, and maternal characteristics. The comparison between case and control groups showed that most children (cases = 68% and controls = 88%) are from urban areas, 69% (cases) and 66% (control) were delivered after a full-term pregnancy and 31% of cases group were delivered by caesarean, which was higher than the controls (χ(2) = 4.12, P-value = 0.042). Models were built using all available environmental and family history factors. The efficacy of models was evaluated using Area Under the Curve, Sensitivity, F Score and Precision. Full logistic regression outperformed other models with Accuracy = 0.77, Sensitivity, F Score and Precision of 0.70, and AUC = 0.83. The most significant KPIs were early exposure to cow’s milk (OR = 2.92, P = 0.000), birth weight >4 Kg (OR = 3.11, P = 0.007), residency(rural) (OR = 3.74, P = 0.000), family history (first and second degree), and maternal age >25 years. The results presented here can assist healthcare providers in collecting and monitoring influential KPIs and developing intervention strategies to reduce the childhood T1D incidence rate in Saudi Arabia.
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spelling pubmed-99770542023-03-02 Predicting the development of T1D and identifying its Key Performance Indicators in children; a case-control study in Saudi Arabia Alazwari, Ahood Johnstone, Alice Tafakori, Laleh Abdollahian, Mali AlEidan, Ahmed M. Alfuhigi, Khalid Alghofialy, Mazen M. Albunyan, Abdulhameed A. Al Abbad, Hawra AlEssa, Maryam H. Alareefy, Abdulaziz K. H. Alshamrani, Mohammad A. PLoS One Research Article The increasing incidence of type 1 diabetes (T1D) in children is a growing global concern. It is known that genetic and environmental factors contribute to childhood T1D. An optimal model to predict the development of T1D in children using Key Performance Indicators (KPIs) would aid medical practitioners in developing intervention plans. This paper for the first time has built a model to predict the risk of developing T1D and identify its significant KPIs in children aged (0-14) in Saudi Arabia. Machine learning methods, namely Logistic Regression, Random Forest, Support Vector Machine, Naive Bayes, and Artificial Neural Network have been utilised and compared for their relative performance. Analyses were performed in a population-based case-control study from three Saudi Arabian regions. The dataset (n = 1,142) contained demographic and socioeconomic status, genetic and disease history, nutrition history, obstetric history, and maternal characteristics. The comparison between case and control groups showed that most children (cases = 68% and controls = 88%) are from urban areas, 69% (cases) and 66% (control) were delivered after a full-term pregnancy and 31% of cases group were delivered by caesarean, which was higher than the controls (χ(2) = 4.12, P-value = 0.042). Models were built using all available environmental and family history factors. The efficacy of models was evaluated using Area Under the Curve, Sensitivity, F Score and Precision. Full logistic regression outperformed other models with Accuracy = 0.77, Sensitivity, F Score and Precision of 0.70, and AUC = 0.83. The most significant KPIs were early exposure to cow’s milk (OR = 2.92, P = 0.000), birth weight >4 Kg (OR = 3.11, P = 0.007), residency(rural) (OR = 3.74, P = 0.000), family history (first and second degree), and maternal age >25 years. The results presented here can assist healthcare providers in collecting and monitoring influential KPIs and developing intervention strategies to reduce the childhood T1D incidence rate in Saudi Arabia. Public Library of Science 2023-03-01 /pmc/articles/PMC9977054/ /pubmed/36857368 http://dx.doi.org/10.1371/journal.pone.0282426 Text en © 2023 Alazwari et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Alazwari, Ahood
Johnstone, Alice
Tafakori, Laleh
Abdollahian, Mali
AlEidan, Ahmed M.
Alfuhigi, Khalid
Alghofialy, Mazen M.
Albunyan, Abdulhameed A.
Al Abbad, Hawra
AlEssa, Maryam H.
Alareefy, Abdulaziz K. H.
Alshamrani, Mohammad A.
Predicting the development of T1D and identifying its Key Performance Indicators in children; a case-control study in Saudi Arabia
title Predicting the development of T1D and identifying its Key Performance Indicators in children; a case-control study in Saudi Arabia
title_full Predicting the development of T1D and identifying its Key Performance Indicators in children; a case-control study in Saudi Arabia
title_fullStr Predicting the development of T1D and identifying its Key Performance Indicators in children; a case-control study in Saudi Arabia
title_full_unstemmed Predicting the development of T1D and identifying its Key Performance Indicators in children; a case-control study in Saudi Arabia
title_short Predicting the development of T1D and identifying its Key Performance Indicators in children; a case-control study in Saudi Arabia
title_sort predicting the development of t1d and identifying its key performance indicators in children; a case-control study in saudi arabia
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9977054/
https://www.ncbi.nlm.nih.gov/pubmed/36857368
http://dx.doi.org/10.1371/journal.pone.0282426
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