Title of article :
High -density lipoprotein cholesterol as a predictor for diabetes mellitus
Author/Authors :
Wu, Hong School of Medicine and Health Management -Tongji Medical College - Huazhong University of Science and Technology, Wuhan, China , Ouyang, Peng School of Management - Harbin Institute of Technology, Harbin, China , Sun, Wenjun School of Management - Harbin Institute of Technology, Harbin, China
Abstract :
Background: Diabetes is a prevalent chronic disease around the world. To evaluate the
risk of diabetes comprehensively, we developed a score model for risk prediction with
HDL-C as a protective factor.
Methods: We extracted physical examination data of 2728 individuals. The data contain
18 demographic and clinical variables. To identify the statistical significant feature
variables, the backward stepwise logistic regression was used based on the data of the
“exploratory population”. To ascertain the cutoff value of the selected variables, we used
the Youden index. Then we assigned each variable level a score according to the estimated
regression model coefficients and then calculated the individual’s total score. We gained
the cutoff value for the total score through the Youden Index and stratified the total score
into four levels. We employed the data of “validation population” to test the performance
of the score model based on the area under the ROC curve.
Results: Age, LDL-C, HDL-C, BMI, family history of diabetes, diastolic blood pressure
and TCHO were selected as statistically significant variables. The diabetes risk score range
varied from 0 to 17. The risk level categorized by the total score was low, middle, high and
extremely high, with a score range of 0-2, 3-7, 8-12 and 13-17, respectively.
Conclusions: The score model based on physical examination data is an efficient and
valuable tool to evaluate and monitor the potential diabetes risk for both healthy and
unhealthy people at an individual level.
Keywords :
Diabetes , Risk score , Score model
Journal title :
Astroparticle Physics