Abstract

BackgroundIdentification of high-risk individuals is crucial for effective implementation of type 2 diabetes mellitus prevention programs. Several studies have shown that multivariable predictive functions perform as well as the 2-hour post-challenge glucose in identifying these high-risk individuals. The performance of these functions in Asian populations, where the rise in prevalence of type 2 diabetes mellitus is expected to be the greatest in the next several decades, is relatively unknown.MethodsUsing data from three Asian populations in Singapore, we compared the performance of three multivariate predictive models in terms of their discriminatory power and calibration quality: the San Antonio Health Study model, Atherosclerosis Risk in Communities model and the Framingham model.ResultsThe San Antonio Health Study and Atherosclerosis Risk in Communities models had better discriminative powers than using only fasting plasma glucose or the 2-hour post-challenge glucose. However, the Framingham model did not perform significantly better than fasting glucose or the 2-hour post-challenge glucose. All published models suffered from poor calibration. After recalibration, the Atherosclerosis Risk in Communities model achieved good calibration, the San Antonio Health Study model showed a significant lack of fit in females and the Framingham model showed a significant lack of fit in both females and males.ConclusionsWe conclude that adoption of the ARIC model for Asian populations is feasible and highly recommended when local prospective data is unavailable.

Highlights

  • Identification of high-risk individuals is crucial for effective implementation of type 2 diabetes mellitus prevention programs

  • In order to determine the viability of adopting an externally-developed predictive function for Type 2 diabetes mellitus (T2DM) to the Asian populations, we evaluated the performance of three multivariate predictive functions for T2DM risk: the San Antonio Health Study (SAHS) model [8], the Atherosclerosis Risk in Communities Study (ARIC) model [13] and the Framingham Offspring Study (FRAM) model [14]

  • Using Net Reclassification Index (NRI) statistic, we found that the published ARIC model was significantly better than the SAHS model in classifying subjects with low risk of developing T2DM

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Summary

Introduction

Identification of high-risk individuals is crucial for effective implementation of type 2 diabetes mellitus prevention programs. Several studies have shown that multivariable predictive functions perform as well as the 2-hour post-challenge glucose in identifying these high-risk individuals The performance of these functions in Asian populations, where the rise in prevalence of type 2 diabetes mellitus is expected to be the greatest in the several decades, is relatively unknown. Intensive lifestyle modification has been shown to effectively prevent or delay the development of T2DM [1,2,3] Effective, these interventional programs do incur some health care costs. In the Diabetes Prevention Program in the United States, the societal cost of lifestyle intervention was $3,540 more per individual than the placebo group over 3 years [4]. The number of persons that needs to be treated to prevent one case of T2DM–and the cost-effectiveness of the program–is highly dependent

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