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Information Journal Paper

Title

Non-invasive Risk Prediction Models in Identifying Undiagnosed Type 2 Diabetes or Predicting Future Incident Cases in the Iranian Population

Pages

  116-124

Abstract

 Background: Iran needs pragmatic Screening methods for identifying those with undiagnosed Type 2 diabetes or at high risk of developing it. The aim of this study was to assess performance of three Non-invasive risk prediction models, i. e. the Finnish Diabetes Risk Score (FINDRISC), the Australian Type 2 diabetes Risk Assessment Tool (AUSDRISK), and the American Diabetes Association Risk Score (ADA), for identifying those with undiagnosed Type 2 diabetes (prevalent Type 2 diabetes at baseline without any treatment) or those who would develop Type 2 diabetes within 5 years of follow-up Methods: 3467 participants aged ≥ 30 years without treated Type 2 diabetes in the Tehran Lipid and Glucose Study (TLGS) were included in this study. The discrimination power of models was assessed by area under the curve (AUC), their calibrations were assessed by calibration plots and Hosmer– Lemeshow test, and their net benefits were assessed by decision curves. Results: 430 participants had undiagnosed Type 2 diabetes at baseline and 203 developed Type 2 diabetes during 5 years of follow-up. AUSDRISK had the highest AUC (0. 77) as compared to FINDRISC (0. 75; P value: 0. 014), and the ADA model (0. 73; P value: <0. 001). The original model for AUSDRISK and calibrated versions of FINDRISC and ADA models had acceptable calibration (Hosmer– Lemeshow chi-square <20) and these models were clinically useful in a wide range of risk thresholds as their net benefit was higher than no-screening scenarios. Conclusion: The original AUSDRISK model and recalibrated models for FINDRISC and ADA are valid and effective tools for identifying those with undiagnosed or 5-year incident Type 2 diabetes in Iran.

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    Cite

    APA: Copy

    Lotfaliany, Mojtaba, HADAEGH, FARZAD, ASGARI, SAMANEH, MANSOURNIA, MOHAMMAD ALI, AZIZI, FEREIDOUN, Oldenburg, Brian, & KHALILI, DAVOOD. (2019). Non-invasive Risk Prediction Models in Identifying Undiagnosed Type 2 Diabetes or Predicting Future Incident Cases in the Iranian Population. ARCHIVES OF IRANIAN MEDICINE, 22(3), 116-124. SID. https://sid.ir/paper/281825/en

    Vancouver: Copy

    Lotfaliany Mojtaba, HADAEGH FARZAD, ASGARI SAMANEH, MANSOURNIA MOHAMMAD ALI, AZIZI FEREIDOUN, Oldenburg Brian, KHALILI DAVOOD. Non-invasive Risk Prediction Models in Identifying Undiagnosed Type 2 Diabetes or Predicting Future Incident Cases in the Iranian Population. ARCHIVES OF IRANIAN MEDICINE[Internet]. 2019;22(3):116-124. Available from: https://sid.ir/paper/281825/en

    IEEE: Copy

    Mojtaba Lotfaliany, FARZAD HADAEGH, SAMANEH ASGARI, MOHAMMAD ALI MANSOURNIA, FEREIDOUN AZIZI, Brian Oldenburg, and DAVOOD KHALILI, “Non-invasive Risk Prediction Models in Identifying Undiagnosed Type 2 Diabetes or Predicting Future Incident Cases in the Iranian Population,” ARCHIVES OF IRANIAN MEDICINE, vol. 22, no. 3, pp. 116–124, 2019, [Online]. Available: https://sid.ir/paper/281825/en

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