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Title: | Risk assessment models for the development of complications in Maltese type 2 diabetic patients |
Authors: | Baldacchino, Sarah Camilleri, Liberato Fava, Stephen Serracino-Inglott, Anthony Azzopardi, Lilian M. |
Keywords: | Non-insulin-dependent diabetes -- Malta Diabetes -- Complications Risk assessment Medicine -- Computer simulation |
Issue Date: | 2013-01 |
Publisher: | Elsevier |
Citation: | Baldacchino, S., Camilleri, L., Fava, S., Serracino-Inglott, A., & Azzopardi, L. M. (2013). Risk assessment models for the development of complications in Maltese type 2 diabetic patients. Diabetes & Metabolism, 4(2), 1-6. |
Abstract: | Introduction: With the IDF Diabetes Atlas 2006 predicting a Type 2 diabetes incidence rate of 11.6% among the Maltese population by 2025, treatment differentiation between high risk and low risk patients is necessary to ensure the sustainability of such a diabetes management program. Objectives: To identify significant predictors and develop local diabetic neuropathy (DNeurM), retinopathy (DRM), nephropathy (DNephrM) and macrovascular (MVM) models which determine complication risk in Maltese diabetic patients. Methods: A cross-sectional retrospective study involving 120 randomly selected patients aged 25-70 years, diagnosed with type 2 diabetes ≤ 1 year and taking metformin 500 mg, perindopril 5 mg and simvastatin 40 mg was carried out at the Endocrine and Diabetes Centre at Mater Dei General Hospital in Malta to collect data for 20 predictors. Complication risk scores were assigned to participants using a developed risk scale. SPSS® 17.0 ANCOVA regression model analyses and backward elimination variable selection method (p<0.05) were used to derive parsimonious models. Results: 12 significant predictors were retained in the models; DNeurM includes body mass index (BMI; p=1×10-4), glycated haemoglobin (HbA1c) level (p=0.00019), serum fasting triglycerides (p=0.002), alcohol abuse (No; p=0.022), systolic blood pressure (BP; p=0.041) and age (p=0.070); DRM includes systolic BP (p=4×10-4), serum fasting triglycerides (p=0.001), HbA1c level (p=0.010), albumin-creatinine ratio (ACR; p=0.040) and waist circumference (p=0.095); DNephrM includes systolic BP (p=3×10-7), urinary glucose (p=3.86×10-4), ACR (p=0.0009), waist circumference (p=0.0012), age (p=0.006), genetic predisposition (No; p=0.026), serum urea (p=0.050) and serum fasting triglycerides (p=0.062); MVM includes waist circumference (p=1×10-6), systolic BP (p=0.0003), total serum cholesterol (p=0.011) and HbA1c level (p=0.060). Conclusion: Twelve significant predictors featured in the parsimonious models: age, genetic predisposition, alcohol abuse, BMI, waist circumference, systolic BP, HbA1c level, serum total cholesterol level, serum fasting triglyceride level, serum urea level, urinary glucose level and ACR. |
URI: | https://www.um.edu.mt/library/oar//handle/123456789/18969 |
Appears in Collections: | Scholarly Works - FacM&SMed Scholarly Works - FacM&SPha Scholarly Works - FacSciSOR |
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Assessment models for the development of complications in Maltese type 2 diabetic patients.pdf Restricted Access | Risk assessment models for the development of complications in Maltese type 2 diabetic patients | 1.8 MB | Adobe PDF | View/Open Request a copy |
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