Liu Yan, Liu Yu, Zhang Min, Wang Xinchen, Zhou Xiaoying, Guo Haijian, Wang Bei, Wang Duolao, Sun Zilin, Qiu Shanhu
Department of Endocrinology, Zhongda Hospital, Institute of Diabetes, School of Medicine, Southeast University, No.87 Dingjiaqiao Street, 210009, Nanjing, China.
Jiangsu Provincial Centre for Disease Control and Prevention, Nanjing, China.
Acta Diabetol. 2024 Dec 12. doi: 10.1007/s00592-024-02433-8.
Cluster analysis provides an effective approach in stratifying prediabetes into different subgroups; however, the association of the cluster-based subgroups with prediabetes progression and regression has not been investigated. We aimed to address this issue in a Chinese population.
A total of 4,128 participants with prediabetes were included to generate cluster-based subgroups of prediabetes based on age, body mass index (BMI), triglyceride-and-glucose (TyG) index, and hemoglobin A1c (HbA1c), using a k-means clustering model. Among them, 1,554 participants were followed-up for about three years to ascertain prediabetes progression and regression. Their association with the cluster-based subgroups of prediabetes was assessed using multinomial logistic regression analyses.
Three clusters of prediabetes were identified among the 4,128 participants, with cluster 0, 1 and 2 accounting for 28.0%, 31.4% and 40.6%, respectively. Participants with prediabetes were featured by the youngest age and the lowest HbA1c in cluster 0, the highest BMI and TyG index in cluster 1, and the oldest age and the lowest BMI in cluster 2. After multivariable-adjustment, both cluster 1 [odds ratio (OR) 3.31, 95% confidence interval (CI): 2.01-5.44] and cluster 2 (OR 2.58, 95% CI: 1.60-4.18) were associated with increased odds of progression to diabetes when compared with cluster 0. They were also associated with decreased odds of regression to normoglycemia (OR 0.54, and 0.56, respectively).
Prediabetes participants featured by older age, higher degree of insulin resistance, higher BMI and worse glycemic condition had higher probability of progression to diabetes but lower chance of regression to normoglycemia.
聚类分析为将糖尿病前期患者分层为不同亚组提供了一种有效方法;然而,基于聚类的亚组与糖尿病前期进展和逆转之间的关联尚未得到研究。我们旨在在中国人群中解决这一问题。
共纳入4128例糖尿病前期患者,采用k均值聚类模型,根据年龄、体重指数(BMI)、甘油三酯与血糖(TyG)指数以及糖化血红蛋白(HbA1c)生成基于聚类的糖尿病前期亚组。其中,1554例患者随访约3年以确定糖尿病前期的进展和逆转情况。使用多项逻辑回归分析评估它们与基于聚类的糖尿病前期亚组之间的关联。
在4128例参与者中识别出三个糖尿病前期聚类,聚类0、1和2分别占28.0%、31.4%和40.6%。糖尿病前期参与者在聚类0中年龄最小且HbA1c最低,在聚类1中BMI和TyG指数最高,在聚类2中年龄最大且BMI最低。经过多变量调整后,与聚类0相比,聚类1 [比值比(OR)3.31,95%置信区间(CI):2.01 - 5.44]和聚类2(OR 2.58,95% CI:1.60 - 4.18)进展为糖尿病的几率均增加。它们还与血糖恢复正常的几率降低相关(分别为OR 0.54和0.56)。
年龄较大、胰岛素抵抗程度较高、BMI较高且血糖状况较差的糖尿病前期参与者进展为糖尿病的可能性较高,但血糖恢复正常的几率较低。