Siriraj Diabetes Center of Excellence, Faculty of Medicine Siriraj Hospital, Mahidol University, Bangkok, Thailand.
Department of Medicine, Faculty of Medicine Siriraj Hospital, Mahidol University, Bangkok, Thailand.
BMJ Open Diabetes Res Care. 2022 Dec;10(6). doi: 10.1136/bmjdrc-2022-003145.
Type 2 diabetes mellitus (T2D) is highly heterogeneous in disease progression and risk of complications. This study aimed to categorize Thai T2D into subgroups using variables that are commonly available based on routine clinical parameters to predict disease progression and treatment outcomes.
This was a cohort study. Data-driven cluster analysis was performed using a Python program in patients with newly diagnosed T2D (n=721) of the Siriraj Diabetes Registry using five variables (age, body mass index (BMI), glycated hemoglobin (HbA), triglyceride (TG), high-density lipoprotein cholesterol (HDL-C)). Disease progression and risk of diabetic complications among clusters were compared using the Χ and Kruskal-Wallis test. Cox regression and the Kaplan-Meier curve were used to compare the time to diabetic complications and the time to insulin initiation.
The mean age was 53.4±11.3 years, 58.9% were women. The median follow-up time was 21.1 months (9.2-35.2). Four clusters were identified: cluster 1 (18.6%): high HbA, low BMI (insulin-deficiency diabetes); cluster 2 (11.8%): high TG, low HDL-C, average age and BMI (metabolic syndrome group); cluster 3 (23.3%): high BMI, low HbA, young age (obesity-related diabetes); cluster 4 (46.3%): older age and low HbA at diagnosis (age-related diabetes). Patients in cluster 1 had the highest prevalence of insulin treatment. Patients in cluster 2 had the highest risk of diabetic kidney disease and diabetic retinopathy. Patients in cluster 4 had the lowest prevalence of diabetic retinopathy, nephropathy, and insulin use.
We were able to categorize Thai patients with newly diagnosed T2D into four clusters using five routine clinical parameters. This clustering method can help predict disease progression and risk of diabetic complications similar to previous studies using parameters including insulin resistance and insulin sensitivity markers.
2 型糖尿病(T2D)在疾病进展和并发症风险方面具有高度异质性。本研究旨在使用基于常规临床参数的常用变量将泰国 T2D 患者分为亚组,以预测疾病进展和治疗结果。
这是一项队列研究。使用 Python 程序对暹罗糖尿病登记处(Siriraj Diabetes Registry)中 721 例新诊断的 T2D 患者的数据进行驱动聚类分析,使用五个变量(年龄、体重指数(BMI)、糖化血红蛋白(HbA)、三酰甘油(TG)、高密度脂蛋白胆固醇(HDL-C))。使用 Χ 和 Kruskal-Wallis 检验比较各亚组之间的疾病进展和糖尿病并发症风险。使用 Cox 回归和 Kaplan-Meier 曲线比较糖尿病并发症和胰岛素起始的时间。
平均年龄为 53.4±11.3 岁,58.9%为女性。中位随访时间为 21.1 个月(9.2-35.2)。确定了四个亚组:亚组 1(18.6%):高 HbA、低 BMI(胰岛素缺乏型糖尿病);亚组 2(11.8%):高 TG、低 HDL-C、平均年龄和 BMI(代谢综合征组);亚组 3(23.3%):高 BMI、低 HbA、年轻(肥胖相关糖尿病);亚组 4(46.3%):诊断时年龄较大和 HbA 较低(年龄相关糖尿病)。亚组 1 患者胰岛素治疗的比例最高。亚组 2 患者糖尿病肾病和糖尿病视网膜病变的风险最高。亚组 4 患者糖尿病视网膜病变、肾病和胰岛素使用的发生率最低。
我们能够使用五个常规临床参数将泰国新诊断的 T2D 患者分为四个亚组。这种聚类方法可以帮助预测疾病进展和糖尿病并发症的风险,类似于以前使用包括胰岛素抵抗和胰岛素敏感性标志物的参数的研究。