A non-invasive risk score for predicting incident diabetes among rural Chinese people: A village-based cohort study

To develop a new non-invasive risk score for predicting incident diabetes in a rural Chinese population. Data from the Handan Eye Study conducted from 2006-2013 were utilized as part of this analysis. The present study utilized data generated from 4132 participants who were ≥30 years of age. A non-i...

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Veröffentlicht in:PloS one 2017-11, Vol.12 (11), p.e0186172-e0186172
Hauptverfasser: Wen, Jiangping, Hao, Jie, Liang, Yuanbo, Li, Sizhen, Cao, Kai, Lu, Xilin, Lu, Xinxin, Wang, Ningli
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container_title PloS one
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Hao, Jie
Liang, Yuanbo
Li, Sizhen
Cao, Kai
Lu, Xilin
Lu, Xinxin
Wang, Ningli
description To develop a new non-invasive risk score for predicting incident diabetes in a rural Chinese population. Data from the Handan Eye Study conducted from 2006-2013 were utilized as part of this analysis. The present study utilized data generated from 4132 participants who were ≥30 years of age. A non-invasive risk model was derived using two-thirds of the sample cohort (selected randomly) using stepwise logistic regression. The model was subsequently validated using data from individuals from the final third of the sample cohort. In addition, a simple point system for incident diabetes was generated according to the procedures described in the Framingham Study. Incident diabetes was defined as follows: (1) fasting plasma glucose (FPG) ≥ 7.0 mmol/L; or (2) hemoglobin A1c (HbA1c) ≥ 6.5%; or (3) self-reported diagnosis of diabetes or use of anti-diabetic medications during the follow-up period. The simple non-invasive risk score included age (8 points), Body mass index (BMI) (3 points), waist circumference (WC) (7 points), and family history of diabetes (9 points). The score ranged from 0 to 27 and the area under the receiver operating curve (AUC) of the score was 0.686 in the validation sample. At the optimal cutoff value (which was 9), the sensitivity and specificity were 74.32% and 58.82%, respectively. Using information based upon age, BMI, WC, and family history of diabetes, we developed a simple new non-invasive risk score for predicting diabetes onset in a rural Chinese population, using information from individuals aged 30 years of age and older. The new risk score proved to be more optimal in the prediction of incident diabetes than most of the existing risk scores developed in Western and Asian countries. This score system will aid in the identification of individuals who are at risk of developing incident diabetes in rural China.
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Data from the Handan Eye Study conducted from 2006-2013 were utilized as part of this analysis. The present study utilized data generated from 4132 participants who were ≥30 years of age. A non-invasive risk model was derived using two-thirds of the sample cohort (selected randomly) using stepwise logistic regression. The model was subsequently validated using data from individuals from the final third of the sample cohort. In addition, a simple point system for incident diabetes was generated according to the procedures described in the Framingham Study. Incident diabetes was defined as follows: (1) fasting plasma glucose (FPG) ≥ 7.0 mmol/L; or (2) hemoglobin A1c (HbA1c) ≥ 6.5%; or (3) self-reported diagnosis of diabetes or use of anti-diabetic medications during the follow-up period. The simple non-invasive risk score included age (8 points), Body mass index (BMI) (3 points), waist circumference (WC) (7 points), and family history of diabetes (9 points). The score ranged from 0 to 27 and the area under the receiver operating curve (AUC) of the score was 0.686 in the validation sample. At the optimal cutoff value (which was 9), the sensitivity and specificity were 74.32% and 58.82%, respectively. Using information based upon age, BMI, WC, and family history of diabetes, we developed a simple new non-invasive risk score for predicting diabetes onset in a rural Chinese population, using information from individuals aged 30 years of age and older. The new risk score proved to be more optimal in the prediction of incident diabetes than most of the existing risk scores developed in Western and Asian countries. 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Data from the Handan Eye Study conducted from 2006-2013 were utilized as part of this analysis. The present study utilized data generated from 4132 participants who were ≥30 years of age. A non-invasive risk model was derived using two-thirds of the sample cohort (selected randomly) using stepwise logistic regression. The model was subsequently validated using data from individuals from the final third of the sample cohort. In addition, a simple point system for incident diabetes was generated according to the procedures described in the Framingham Study. Incident diabetes was defined as follows: (1) fasting plasma glucose (FPG) ≥ 7.0 mmol/L; or (2) hemoglobin A1c (HbA1c) ≥ 6.5%; or (3) self-reported diagnosis of diabetes or use of anti-diabetic medications during the follow-up period. The simple non-invasive risk score included age (8 points), Body mass index (BMI) (3 points), waist circumference (WC) (7 points), and family history of diabetes (9 points). The score ranged from 0 to 27 and the area under the receiver operating curve (AUC) of the score was 0.686 in the validation sample. At the optimal cutoff value (which was 9), the sensitivity and specificity were 74.32% and 58.82%, respectively. Using information based upon age, BMI, WC, and family history of diabetes, we developed a simple new non-invasive risk score for predicting diabetes onset in a rural Chinese population, using information from individuals aged 30 years of age and older. The new risk score proved to be more optimal in the prediction of incident diabetes than most of the existing risk scores developed in Western and Asian countries. This score system will aid in the identification of individuals who are at risk of developing incident diabetes in rural China.</abstract><cop>United States</cop><pub>Public Library of Science</pub><pmid>29095851</pmid><doi>10.1371/journal.pone.0186172</doi><tpages>e0186172</tpages><orcidid>https://orcid.org/0000-0003-4463-1448</orcidid><oa>free_for_read</oa></addata></record>
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source MEDLINE; DOAJ Directory of Open Access Journals; Public Library of Science (PLoS); EZB-FREE-00999 freely available EZB journals; PubMed Central; Free Full-Text Journals in Chemistry
subjects Adult
Age
Analysis
Biology and life sciences
Body mass
Body mass index
Body size
Care and treatment
China - epidemiology
Cohort analysis
Cohort Studies
Diabetes
Diabetes mellitus
Diabetes Mellitus - epidemiology
Diagnosis
Dosage and administration
Education
Epidemiology
Ethnicity
Exercise
Eye
Female
Genetics
Glucose
Health risks
Hemoglobin
Hospitals
Humans
Hypoglycemic agents
Laboratories
Male
Medicine
Medicine and Health Sciences
Middle Aged
People and Places
Population
Predictions
Regression analysis
Regression models
Research and Analysis Methods
Risk assessment
Rural areas
Rural Population
Studies
Towns
Type 2 diabetes
title A non-invasive risk score for predicting incident diabetes among rural Chinese people: A village-based cohort study
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