Abstract

ObjectiveTo evaluate the value of non-invasive detection of advanced glycation end products (AGEs) in the early screening of type 2 diabetes mellitus (T2DM) in the community of China.MethodsFrom January 2018 to January 2019, a total of 912 patients with community health physical examination and no history of T2DM were selected, excluding the results of missing value > 5%. Finally, 906 samples were included in the study, with a response rate of 99.3%. Non-invasive diabetic detection technology was used to detect AGEs in the upper arm skin of all participants, AGE accumulations were classified as ≤P25, P25∼P50, P50∼P75, and >P75; HbA1c, insulin, C-peptide, total cholesterol (TC), triglyceride (TG), high-density lipoprotein cholesterol (HDL-C), creatinine, urea, and other indicators were measured at the same time. Univariate analysis of variance was used to compare the differences in general data, biochemical indexes, skin AGE levels, and blood glucose among groups, and logistic regression analysis and latent category analysis were performed.ResultsIn univariate analysis, SBP, FBG, HbA1c, and age were correlated with higher AGE (p < 0.01); TG, TC, HDL, UA, and gender were not positively correlated with AGE (p < 0.01). After controlling for covariates (waist circumference, hip circumference), AGE accumulation was interacted with other variables. The results of latent category analysis (LCA) showed that the health risk factors (HRFs), including age, systolic blood pressure, HbA1c, FBG, triglyceride, total cholesterol, HDL-C, and uric acid, were divided as three groups, and AGE is divided into four categories according to the quartile method, which were low risk (≤P25), low to medium risk (P25∼P50), medium to high (P50∼P75), and high risk (>P75), respectively. The association between the quartile AGE and risk factors of the OR values was 1.09 (95% CI: 1.42, 2.86), 2.61 (95% CI: 1.11, 6.14), and 5.41 (95% CI: 2.42, 12.07), respectively. The moderation analysis using the PROCESS program was used to analyze whether BMI moderated the link between risk factors and AGE accumulation. There was also a significant three-way interaction among HRFs, BMI, and gender for AGE accumulation in the total sample (β = -0.30).ConclusionNon-invasive skin detection of AGEs has a certain application value for the assessment of T2DM risk and is related to a variety of risk factors.

Highlights

  • About one in 10 middle-aged Europeans will develop type 2 diabetes over a 10-year period [1]

  • Fasting venous blood was collected, and measured fast plasma glucose (FPG), 2h plasma glucose (2hPG), glycated hemoglobin A1c (HbA1c), insulin, and C-peptide were tested by the oral glucose tolerance test (OGTT); total cholesterol (TC), triglyceride (TG), high-density lipoprotein (HDL-C), creatinine, urea, and other indicators were tested by blood serum

  • systolic blood pressure (SBP), FBG, HbA1c, and age were positively correlated with advanced glycation end products (AGEs) (OR = 0.621, 95% CI: 0.378, 0.953), (OR = 0.239, 95% CI: 0.121, 0.47), (OR = 0.243, 95% CI: 0.116, 0.507), and (OR = 0.021, 95% CI: 0.01, 0.042), respectively; TG, TC, HDL, and UA were not positively correlated with AGE (OR = 0.239, 95% CI: 0.121, 0.47), (OR = 0.239, 95% CI: 0.121, 0.47), (OR = 0.787, 95% CI: 0.357, 1.736), (OR = 0.239, 95% CI: 0.121, 0.47), and gender (OR = 1.042, 95% CI: 0.706, 1.539)

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Summary

Introduction

About one in 10 middle-aged Europeans will develop type 2 diabetes over a 10-year period [1]. There is increasing evidence that the concept of "metabolic memory" was associated with the development of long-term metabolic-related disorders and plays a significant role in patients with diabetes [4]. Many risk factors are known, but all factors taken together do not fully explain the risk of diabetes complications. This suggests that other pathophysiological mechanisms are at work. Increased AGE levels have been associated with many microvascular diabetic complications [14], further explaining why we explore the association between metabolic index and AGE and newly diagnosed diabetic patients and prediabetes

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