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Non-lab and semi-lab algorithms for screening undiagnosed diabetes: A cross-sectional study

BACKGROUND: The terrifying undiagnosed rate and high prevalence of diabetes have become a public emergency. A high efficiency and cost-effective early recognition method is urgently needed. We aimed to generate innovative, user-friendly nomograms that can be applied for diabetes screening in differe...

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Autores principales: Li, Wei, Xie, Bo, Qiu, Shanhu, Huang, Xin, Chen, Juan, Wang, Xinling, Li, Hong, Chen, Qingyun, Wang, Qing, Tu, Ping, Zhang, Lihui, Yan, Sunjie, Li, Kaili, Maimaitiming, Jimilanmu, Nian, Xin, Liang, Min, Wen, Yan, Liu, Jiang, Wang, Mian, Zhang, Yongze, Ma, Li, Wu, Hang, Wang, Xuyi, Wang, Xiaohang, Liu, Jingbao, Cai, Min, wang, Zhiyao, Guo, Lin, Chen, Fangqun, Wang, Bei, Monica, Sandberg, Carlsson, Per-Ola, Sun, Zilin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6154869/
https://www.ncbi.nlm.nih.gov/pubmed/30115607
http://dx.doi.org/10.1016/j.ebiom.2018.08.009
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author Li, Wei
Xie, Bo
Qiu, Shanhu
Huang, Xin
Chen, Juan
Wang, Xinling
Li, Hong
Chen, Qingyun
Wang, Qing
Tu, Ping
Zhang, Lihui
Yan, Sunjie
Li, Kaili
Maimaitiming, Jimilanmu
Nian, Xin
Liang, Min
Wen, Yan
Liu, Jiang
Wang, Mian
Zhang, Yongze
Ma, Li
Wu, Hang
Wang, Xuyi
Wang, Xiaohang
Liu, Jingbao
Cai, Min
wang, Zhiyao
Guo, Lin
Chen, Fangqun
Wang, Bei
Monica, Sandberg
Carlsson, Per-Ola
Sun, Zilin
author_facet Li, Wei
Xie, Bo
Qiu, Shanhu
Huang, Xin
Chen, Juan
Wang, Xinling
Li, Hong
Chen, Qingyun
Wang, Qing
Tu, Ping
Zhang, Lihui
Yan, Sunjie
Li, Kaili
Maimaitiming, Jimilanmu
Nian, Xin
Liang, Min
Wen, Yan
Liu, Jiang
Wang, Mian
Zhang, Yongze
Ma, Li
Wu, Hang
Wang, Xuyi
Wang, Xiaohang
Liu, Jingbao
Cai, Min
wang, Zhiyao
Guo, Lin
Chen, Fangqun
Wang, Bei
Monica, Sandberg
Carlsson, Per-Ola
Sun, Zilin
author_sort Li, Wei
collection PubMed
description BACKGROUND: The terrifying undiagnosed rate and high prevalence of diabetes have become a public emergency. A high efficiency and cost-effective early recognition method is urgently needed. We aimed to generate innovative, user-friendly nomograms that can be applied for diabetes screening in different ethnic groups in China using the non-lab or noninvasive semi-lab data. METHODS: This multicenter, multi-ethnic, population-based, cross-sectional study was conducted in eight sites in China by enrolling subjects aged 20–70. Sociodemographic and anthropometric characteristics were collected. Blood and urine samples were obtained 2 h following a standard 75 g glucose solution. In the final analysis, 10,794 participants were included and randomized into model development (n = 8096) and model validation (n = 2698) group with a ratio of 3:1. Nomograms were developed by the stepwise binary logistic regression. The nomograms were validated internally by a bootstrap sampling method in the model development set and externally in the model validation set. The area under the receiver operating characteristic curve (AUC) was used to assess the screening performance of the nomograms. Decision curve analysis was applied to calculate the net benefit of the screening model. RESULTS: The overall prevalence of undiagnosed diabetes was 9.8% (1059/10794) according to ADA criteria. The non-lab model revealed that gender, age, body mass index, waist circumference, hypertension, ethnicities, vegetable daily consumption and family history of diabetes were independent risk factors for diabetes. By adding 2 h post meal glycosuria qualitative to the non-lab model, the semi-lab model showed an improved Akaike information criterion (AIC: 4506 to 3580). The AUC of the semi-lab model was statistically larger than the non-lab model (0.868 vs 0.763, P < 0.001). The optimal cutoff probability in semi-lab and non-lab nomograms were 0.088 and 0.098, respectively. The sensitivity and specificity were 76.3% and 81.6%, respectively in semi-lab nomogram, and 72.1% and 67.3% in non-lab nomogram at the optimal cut off point. The decision curve analysis also revealed a bigger decrease of avoidable OGTT test (52 per 100 subjects) in the semi-lab model compared to the non-lab model (36 per 100 subjects) and the existed New Chinese Diabetes Risk Score (NCDRS, 35 per 100 subjects). CONCLUSION: The non-lab and semi-lab nomograms appear to be reliable tools for diabetes screening, especially in developing countries. However, the semi-lab model outperformed the non-lab model and NCDRS prediction systems and might be worth being adopted as decision support in diabetes screening in China.
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spelling pubmed-61548692018-09-26 Non-lab and semi-lab algorithms for screening undiagnosed diabetes: A cross-sectional study Li, Wei Xie, Bo Qiu, Shanhu Huang, Xin Chen, Juan Wang, Xinling Li, Hong Chen, Qingyun Wang, Qing Tu, Ping Zhang, Lihui Yan, Sunjie Li, Kaili Maimaitiming, Jimilanmu Nian, Xin Liang, Min Wen, Yan Liu, Jiang Wang, Mian Zhang, Yongze Ma, Li Wu, Hang Wang, Xuyi Wang, Xiaohang Liu, Jingbao Cai, Min wang, Zhiyao Guo, Lin Chen, Fangqun Wang, Bei Monica, Sandberg Carlsson, Per-Ola Sun, Zilin EBioMedicine Research paper BACKGROUND: The terrifying undiagnosed rate and high prevalence of diabetes have become a public emergency. A high efficiency and cost-effective early recognition method is urgently needed. We aimed to generate innovative, user-friendly nomograms that can be applied for diabetes screening in different ethnic groups in China using the non-lab or noninvasive semi-lab data. METHODS: This multicenter, multi-ethnic, population-based, cross-sectional study was conducted in eight sites in China by enrolling subjects aged 20–70. Sociodemographic and anthropometric characteristics were collected. Blood and urine samples were obtained 2 h following a standard 75 g glucose solution. In the final analysis, 10,794 participants were included and randomized into model development (n = 8096) and model validation (n = 2698) group with a ratio of 3:1. Nomograms were developed by the stepwise binary logistic regression. The nomograms were validated internally by a bootstrap sampling method in the model development set and externally in the model validation set. The area under the receiver operating characteristic curve (AUC) was used to assess the screening performance of the nomograms. Decision curve analysis was applied to calculate the net benefit of the screening model. RESULTS: The overall prevalence of undiagnosed diabetes was 9.8% (1059/10794) according to ADA criteria. The non-lab model revealed that gender, age, body mass index, waist circumference, hypertension, ethnicities, vegetable daily consumption and family history of diabetes were independent risk factors for diabetes. By adding 2 h post meal glycosuria qualitative to the non-lab model, the semi-lab model showed an improved Akaike information criterion (AIC: 4506 to 3580). The AUC of the semi-lab model was statistically larger than the non-lab model (0.868 vs 0.763, P < 0.001). The optimal cutoff probability in semi-lab and non-lab nomograms were 0.088 and 0.098, respectively. The sensitivity and specificity were 76.3% and 81.6%, respectively in semi-lab nomogram, and 72.1% and 67.3% in non-lab nomogram at the optimal cut off point. The decision curve analysis also revealed a bigger decrease of avoidable OGTT test (52 per 100 subjects) in the semi-lab model compared to the non-lab model (36 per 100 subjects) and the existed New Chinese Diabetes Risk Score (NCDRS, 35 per 100 subjects). CONCLUSION: The non-lab and semi-lab nomograms appear to be reliable tools for diabetes screening, especially in developing countries. However, the semi-lab model outperformed the non-lab model and NCDRS prediction systems and might be worth being adopted as decision support in diabetes screening in China. Elsevier 2018-08-13 /pmc/articles/PMC6154869/ /pubmed/30115607 http://dx.doi.org/10.1016/j.ebiom.2018.08.009 Text en © 2018 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research paper
Li, Wei
Xie, Bo
Qiu, Shanhu
Huang, Xin
Chen, Juan
Wang, Xinling
Li, Hong
Chen, Qingyun
Wang, Qing
Tu, Ping
Zhang, Lihui
Yan, Sunjie
Li, Kaili
Maimaitiming, Jimilanmu
Nian, Xin
Liang, Min
Wen, Yan
Liu, Jiang
Wang, Mian
Zhang, Yongze
Ma, Li
Wu, Hang
Wang, Xuyi
Wang, Xiaohang
Liu, Jingbao
Cai, Min
wang, Zhiyao
Guo, Lin
Chen, Fangqun
Wang, Bei
Monica, Sandberg
Carlsson, Per-Ola
Sun, Zilin
Non-lab and semi-lab algorithms for screening undiagnosed diabetes: A cross-sectional study
title Non-lab and semi-lab algorithms for screening undiagnosed diabetes: A cross-sectional study
title_full Non-lab and semi-lab algorithms for screening undiagnosed diabetes: A cross-sectional study
title_fullStr Non-lab and semi-lab algorithms for screening undiagnosed diabetes: A cross-sectional study
title_full_unstemmed Non-lab and semi-lab algorithms for screening undiagnosed diabetes: A cross-sectional study
title_short Non-lab and semi-lab algorithms for screening undiagnosed diabetes: A cross-sectional study
title_sort non-lab and semi-lab algorithms for screening undiagnosed diabetes: a cross-sectional study
topic Research paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6154869/
https://www.ncbi.nlm.nih.gov/pubmed/30115607
http://dx.doi.org/10.1016/j.ebiom.2018.08.009
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