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Metabolic syndrome in Xinjiang Kazakhs and construction of a risk prediction model for cardiovascular disease risk

BACKGROUND: The high prevalence of metabolic syndrome (MetS) and cardiovascular diseases (CVD) is observed among Kazakhs in Xinjiang. Because MetS may significantly predict the occurrence of CVD, the inclusion of CVD-related indicators in metabolic network may improve the predictive ability for a CV...

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Autores principales: Mao, Lei, He, Jia, Gao, Xiang, Guo, Heng, Wang, Kui, Zhang, Xianghui, Yang, Wenwen, Zhang, Jingyu, Li, Shugang, Hu, Yunhua, Mu, Lati, Yan, Yizhong, Ma, Jiaolong, Ding, Yusong, Zhang, Mei, Liu, Jiaming, Ma, Rulin, Guo, Shuxia
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6126809/
https://www.ncbi.nlm.nih.gov/pubmed/30188929
http://dx.doi.org/10.1371/journal.pone.0202665
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author Mao, Lei
He, Jia
Gao, Xiang
Guo, Heng
Wang, Kui
Zhang, Xianghui
Yang, Wenwen
Zhang, Jingyu
Li, Shugang
Hu, Yunhua
Mu, Lati
Yan, Yizhong
Ma, Jiaolong
Ding, Yusong
Zhang, Mei
Liu, Jiaming
Ma, Rulin
Guo, Shuxia
author_facet Mao, Lei
He, Jia
Gao, Xiang
Guo, Heng
Wang, Kui
Zhang, Xianghui
Yang, Wenwen
Zhang, Jingyu
Li, Shugang
Hu, Yunhua
Mu, Lati
Yan, Yizhong
Ma, Jiaolong
Ding, Yusong
Zhang, Mei
Liu, Jiaming
Ma, Rulin
Guo, Shuxia
author_sort Mao, Lei
collection PubMed
description BACKGROUND: The high prevalence of metabolic syndrome (MetS) and cardiovascular diseases (CVD) is observed among Kazakhs in Xinjiang. Because MetS may significantly predict the occurrence of CVD, the inclusion of CVD-related indicators in metabolic network may improve the predictive ability for a CVD-risk model for Kazakhs in Xinjiang. METHODS: The study included 2,644 subjects who were followed for 5 years or longer. CVD cases were identified via medical records of the local hospitals from April 2016 to August 2017. Factor analysis was performed in 706 subjects (267 men and 439 women) with MetS to extract CVD-related potential factors from 18 biomarkers tested in a routine health check-up, served as a synthetic predictor (SP). We evaluated the predictive ability of the CVD-risk model using age and SP, logistic regression discrimination for internal validation (n = 384; men = 164, women = 220) and external validation (n = 219; men = 89, women = 130), calculated the probability of CVD for each participant, and receiver operating characteristic curves. RESULTS: According to the diagnostic criteria of JIS, the prevalence of MetS in Kazakh was 30.9%. Seven potential factors with a similar pattern were obtained from men and women and comprised the CVD predictors. When predicting CVD in the internal validation, the area under the curve (AUC) were 0.857 (95%CI 0.807–0.898) for men and 0.852 (95%CI 0.809–0.889) for women, respectively. In the external validation, the AUC to predict CVD were 0.914 (95%CI 0.832–0.963) for men and 0.848 (95%CI 0.774–0.905) for women. It is suggested that SP might serve as a useful tool in identifying CVD with in Kazakhs, especially for Kazakhs men. CONCLUSIONS: Among 7 potential factors were extracted from 18 biomarkrs in Kazakhs with MetS, and SP may be used for CVD risk assessment.
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spelling pubmed-61268092018-09-15 Metabolic syndrome in Xinjiang Kazakhs and construction of a risk prediction model for cardiovascular disease risk Mao, Lei He, Jia Gao, Xiang Guo, Heng Wang, Kui Zhang, Xianghui Yang, Wenwen Zhang, Jingyu Li, Shugang Hu, Yunhua Mu, Lati Yan, Yizhong Ma, Jiaolong Ding, Yusong Zhang, Mei Liu, Jiaming Ma, Rulin Guo, Shuxia PLoS One Research Article BACKGROUND: The high prevalence of metabolic syndrome (MetS) and cardiovascular diseases (CVD) is observed among Kazakhs in Xinjiang. Because MetS may significantly predict the occurrence of CVD, the inclusion of CVD-related indicators in metabolic network may improve the predictive ability for a CVD-risk model for Kazakhs in Xinjiang. METHODS: The study included 2,644 subjects who were followed for 5 years or longer. CVD cases were identified via medical records of the local hospitals from April 2016 to August 2017. Factor analysis was performed in 706 subjects (267 men and 439 women) with MetS to extract CVD-related potential factors from 18 biomarkers tested in a routine health check-up, served as a synthetic predictor (SP). We evaluated the predictive ability of the CVD-risk model using age and SP, logistic regression discrimination for internal validation (n = 384; men = 164, women = 220) and external validation (n = 219; men = 89, women = 130), calculated the probability of CVD for each participant, and receiver operating characteristic curves. RESULTS: According to the diagnostic criteria of JIS, the prevalence of MetS in Kazakh was 30.9%. Seven potential factors with a similar pattern were obtained from men and women and comprised the CVD predictors. When predicting CVD in the internal validation, the area under the curve (AUC) were 0.857 (95%CI 0.807–0.898) for men and 0.852 (95%CI 0.809–0.889) for women, respectively. In the external validation, the AUC to predict CVD were 0.914 (95%CI 0.832–0.963) for men and 0.848 (95%CI 0.774–0.905) for women. It is suggested that SP might serve as a useful tool in identifying CVD with in Kazakhs, especially for Kazakhs men. CONCLUSIONS: Among 7 potential factors were extracted from 18 biomarkrs in Kazakhs with MetS, and SP may be used for CVD risk assessment. Public Library of Science 2018-09-06 /pmc/articles/PMC6126809/ /pubmed/30188929 http://dx.doi.org/10.1371/journal.pone.0202665 Text en © 2018 Mao et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://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
Mao, Lei
He, Jia
Gao, Xiang
Guo, Heng
Wang, Kui
Zhang, Xianghui
Yang, Wenwen
Zhang, Jingyu
Li, Shugang
Hu, Yunhua
Mu, Lati
Yan, Yizhong
Ma, Jiaolong
Ding, Yusong
Zhang, Mei
Liu, Jiaming
Ma, Rulin
Guo, Shuxia
Metabolic syndrome in Xinjiang Kazakhs and construction of a risk prediction model for cardiovascular disease risk
title Metabolic syndrome in Xinjiang Kazakhs and construction of a risk prediction model for cardiovascular disease risk
title_full Metabolic syndrome in Xinjiang Kazakhs and construction of a risk prediction model for cardiovascular disease risk
title_fullStr Metabolic syndrome in Xinjiang Kazakhs and construction of a risk prediction model for cardiovascular disease risk
title_full_unstemmed Metabolic syndrome in Xinjiang Kazakhs and construction of a risk prediction model for cardiovascular disease risk
title_short Metabolic syndrome in Xinjiang Kazakhs and construction of a risk prediction model for cardiovascular disease risk
title_sort metabolic syndrome in xinjiang kazakhs and construction of a risk prediction model for cardiovascular disease risk
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6126809/
https://www.ncbi.nlm.nih.gov/pubmed/30188929
http://dx.doi.org/10.1371/journal.pone.0202665
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