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Non‐laboratory‐based risk assessment model for case detection of diabetes mellitus and pre‐diabetes in primary care

INTRODUCTION: More than half of diabetes mellitus (DM) and pre‐diabetes (pre‐DM) cases remain undiagnosed, while existing risk assessment models are limited by focusing on diabetes mellitus only (omitting pre‐DM) and often lack lifestyle factors such as sleep. This study aimed to develop a non‐labor...

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Autores principales: Dong, Weinan, Tse, Tsui Yee Emily, Mak, Lynn Ivy, Wong, Carlos King Ho, Wan, Yuk Fai Eric, Tang, Ho Man Eric, Chin, Weng Yee, Bedford, Laura Elizabeth, Yu, Yee Tak Esther, Ko, Wai Kit Welchie, Chao, Vai Kiong David, Tan, Choon Beng Kathryn, Lam, Lo Kuen Cindy
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9340884/
https://www.ncbi.nlm.nih.gov/pubmed/35293149
http://dx.doi.org/10.1111/jdi.13790
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author Dong, Weinan
Tse, Tsui Yee Emily
Mak, Lynn Ivy
Wong, Carlos King Ho
Wan, Yuk Fai Eric
Tang, Ho Man Eric
Chin, Weng Yee
Bedford, Laura Elizabeth
Yu, Yee Tak Esther
Ko, Wai Kit Welchie
Chao, Vai Kiong David
Tan, Choon Beng Kathryn
Lam, Lo Kuen Cindy
author_facet Dong, Weinan
Tse, Tsui Yee Emily
Mak, Lynn Ivy
Wong, Carlos King Ho
Wan, Yuk Fai Eric
Tang, Ho Man Eric
Chin, Weng Yee
Bedford, Laura Elizabeth
Yu, Yee Tak Esther
Ko, Wai Kit Welchie
Chao, Vai Kiong David
Tan, Choon Beng Kathryn
Lam, Lo Kuen Cindy
author_sort Dong, Weinan
collection PubMed
description INTRODUCTION: More than half of diabetes mellitus (DM) and pre‐diabetes (pre‐DM) cases remain undiagnosed, while existing risk assessment models are limited by focusing on diabetes mellitus only (omitting pre‐DM) and often lack lifestyle factors such as sleep. This study aimed to develop a non‐laboratory risk assessment model to detect undiagnosed diabetes mellitus and pre‐diabetes mellitus in Chinese adults. METHODS: Based on a population‐representative dataset, 1,857 participants aged 18–84 years without self‐reported diabetes mellitus, pre‐diabetes mellitus, and other major chronic diseases were included. The outcome was defined as a newly detected diabetes mellitus or pre‐diabetes by a blood test. The risk models were developed using logistic regression (LR) and interpretable machine learning (ML) methods. Models were validated using area under the receiver‐operating characteristic curve (AUC‐ROC), precision‐recall curve (AUC‐PR), and calibration plots. Two existing diabetes mellitus risk models were included for comparison. RESULTS: The prevalence of newly diagnosed diabetes mellitus and pre‐diabetes mellitus was 15.08%. In addition to known risk factors (age, BMI, WHR, SBP, waist circumference, and smoking status), we found that sleep duration, and vigorous recreational activity time were also significant risk factors of diabetes mellitus and pre‐diabetes mellitus. Both LR (AUC‐ROC = 0.812, AUC‐PR = 0.448) and ML models (AUC‐ROC = 0.822, AUC‐PR = 0.496) performed well in the validation sample with the ML model showing better discrimination and calibration. The performance of the models was better than the two existing models. CONCLUSIONS: Sleep duration and vigorous recreational activity time are modifiable risk factors of diabetes mellitus and pre‐diabetes in Chinese adults. Non‐laboratory‐based risk assessment models that incorporate these lifestyle factors can enhance case detection of diabetes mellitus and pre‐diabetes.
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spelling pubmed-93408842022-08-02 Non‐laboratory‐based risk assessment model for case detection of diabetes mellitus and pre‐diabetes in primary care Dong, Weinan Tse, Tsui Yee Emily Mak, Lynn Ivy Wong, Carlos King Ho Wan, Yuk Fai Eric Tang, Ho Man Eric Chin, Weng Yee Bedford, Laura Elizabeth Yu, Yee Tak Esther Ko, Wai Kit Welchie Chao, Vai Kiong David Tan, Choon Beng Kathryn Lam, Lo Kuen Cindy J Diabetes Investig Articles INTRODUCTION: More than half of diabetes mellitus (DM) and pre‐diabetes (pre‐DM) cases remain undiagnosed, while existing risk assessment models are limited by focusing on diabetes mellitus only (omitting pre‐DM) and often lack lifestyle factors such as sleep. This study aimed to develop a non‐laboratory risk assessment model to detect undiagnosed diabetes mellitus and pre‐diabetes mellitus in Chinese adults. METHODS: Based on a population‐representative dataset, 1,857 participants aged 18–84 years without self‐reported diabetes mellitus, pre‐diabetes mellitus, and other major chronic diseases were included. The outcome was defined as a newly detected diabetes mellitus or pre‐diabetes by a blood test. The risk models were developed using logistic regression (LR) and interpretable machine learning (ML) methods. Models were validated using area under the receiver‐operating characteristic curve (AUC‐ROC), precision‐recall curve (AUC‐PR), and calibration plots. Two existing diabetes mellitus risk models were included for comparison. RESULTS: The prevalence of newly diagnosed diabetes mellitus and pre‐diabetes mellitus was 15.08%. In addition to known risk factors (age, BMI, WHR, SBP, waist circumference, and smoking status), we found that sleep duration, and vigorous recreational activity time were also significant risk factors of diabetes mellitus and pre‐diabetes mellitus. Both LR (AUC‐ROC = 0.812, AUC‐PR = 0.448) and ML models (AUC‐ROC = 0.822, AUC‐PR = 0.496) performed well in the validation sample with the ML model showing better discrimination and calibration. The performance of the models was better than the two existing models. CONCLUSIONS: Sleep duration and vigorous recreational activity time are modifiable risk factors of diabetes mellitus and pre‐diabetes in Chinese adults. Non‐laboratory‐based risk assessment models that incorporate these lifestyle factors can enhance case detection of diabetes mellitus and pre‐diabetes. John Wiley and Sons Inc. 2022-03-28 2022-08 /pmc/articles/PMC9340884/ /pubmed/35293149 http://dx.doi.org/10.1111/jdi.13790 Text en © 2022 The Authors. Journal of Diabetes Investigation published by Asian Association for the Study of Diabetes (AASD) and John Wiley & Sons Australia, Ltd. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/) License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Articles
Dong, Weinan
Tse, Tsui Yee Emily
Mak, Lynn Ivy
Wong, Carlos King Ho
Wan, Yuk Fai Eric
Tang, Ho Man Eric
Chin, Weng Yee
Bedford, Laura Elizabeth
Yu, Yee Tak Esther
Ko, Wai Kit Welchie
Chao, Vai Kiong David
Tan, Choon Beng Kathryn
Lam, Lo Kuen Cindy
Non‐laboratory‐based risk assessment model for case detection of diabetes mellitus and pre‐diabetes in primary care
title Non‐laboratory‐based risk assessment model for case detection of diabetes mellitus and pre‐diabetes in primary care
title_full Non‐laboratory‐based risk assessment model for case detection of diabetes mellitus and pre‐diabetes in primary care
title_fullStr Non‐laboratory‐based risk assessment model for case detection of diabetes mellitus and pre‐diabetes in primary care
title_full_unstemmed Non‐laboratory‐based risk assessment model for case detection of diabetes mellitus and pre‐diabetes in primary care
title_short Non‐laboratory‐based risk assessment model for case detection of diabetes mellitus and pre‐diabetes in primary care
title_sort non‐laboratory‐based risk assessment model for case detection of diabetes mellitus and pre‐diabetes in primary care
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9340884/
https://www.ncbi.nlm.nih.gov/pubmed/35293149
http://dx.doi.org/10.1111/jdi.13790
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