Usher Institute, College of Medicine and Veterinary Medicine, University of Edinburgh, Edinburgh, UK.
Swiss Institute of Bioinformatics, Lausanne, Switzerland.
Diabetologia. 2024 Aug;67(8):1588-1601. doi: 10.1007/s00125-024-06177-6. Epub 2024 May 25.
AIMS/HYPOTHESIS: The objective of the Hypoglycaemia REdefining SOLutions for better liVES (Hypo-RESOLVE) project is to use a dataset of pooled clinical trials across pharmaceutical and device companies in people with type 1 or type 2 diabetes to examine factors associated with incident hypoglycaemia events and to quantify the prediction of these events.
Data from 90 trials with 46,254 participants were pooled. Analyses were done for type 1 and type 2 diabetes separately. Poisson mixed models, adjusted for age, sex, diabetes duration and trial identifier were fitted to assess the association of clinical variables with hypoglycaemia event counts. Tree-based gradient-boosting algorithms (XGBoost) were fitted using training data and their predictive performance in terms of area under the receiver operating characteristic curve (AUC) evaluated on test data. Baseline models including age, sex and diabetes duration were compared with models that further included a score of hypoglycaemia in the first 6 weeks from study entry, and full models that included further clinical variables. The relative predictive importance of each covariate was assessed using XGBoost's importance procedure. Prediction across the entire trial duration for each trial (mean of 34.8 weeks for type 1 diabetes and 25.3 weeks for type 2 diabetes) was assessed.
For both type 1 and type 2 diabetes, variables associated with more frequent hypoglycaemia included female sex, white ethnicity, longer diabetes duration, treatment with human as opposed to analogue-only insulin, higher glucose variability, higher score for hypoglycaemia across the 6 week baseline period, lower BP, lower lipid levels and treatment with psychoactive drugs. Prediction of any hypoglycaemia event of any severity was greater than prediction of hypoglycaemia requiring assistance (level 3 hypoglycaemia), for which events were sparser. For prediction of level 1 or worse hypoglycaemia during the whole follow-up period, the AUC was 0.835 (95% CI 0.826, 0.844) in type 1 diabetes and 0.840 (95% CI 0.831, 0.848) in type 2 diabetes. For level 3 hypoglycaemia, the AUC was lower at 0.689 (95% CI 0.667, 0.712) for type 1 diabetes and 0.705 (95% CI 0.662, 0.748) for type 2 diabetes. Compared with the baseline models, almost all the improvement in prediction could be captured by the individual's hypoglycaemia history, glucose variability and blood glucose over a 6 week baseline period.
CONCLUSIONS/INTERPRETATION: Although hypoglycaemia rates show large variation according to sociodemographic and clinical characteristics and treatment history, looking at a 6 week period of hypoglycaemia events and glucose measurements predicts future hypoglycaemia risk.
目的/假设:Hypoglycaemia REdefining SOLutions for better liVES (Hypo-RESOLVE) 项目的目的是使用来自制药和设备公司的 1 型或 2 型糖尿病患者的临床试验数据集,研究与低血糖事件相关的因素,并量化这些事件的预测。
对 90 项试验中的 46254 名参与者的数据进行了汇总。分别对 1 型和 2 型糖尿病进行了分析。使用泊松混合模型,根据年龄、性别、糖尿病持续时间和试验标识符进行调整,以评估临床变量与低血糖事件计数的相关性。使用训练数据拟合基于树的梯度提升算法 (XGBoost),并在测试数据上评估其在接收者操作特征曲线下面积 (AUC) 方面的预测性能。与包括年龄、性别和糖尿病持续时间的基线模型相比,比较了进一步包括研究入组后 6 周内低血糖评分的模型,以及进一步包括临床变量的全模型。使用 XGBoost 的重要性程序评估每个协变量的相对预测重要性。评估了每个试验的整个试验持续时间的预测(1 型糖尿病的平均 34.8 周和 2 型糖尿病的平均 25.3 周)。
对于 1 型和 2 型糖尿病,与更频繁发生低血糖相关的变量包括女性、白种人、糖尿病持续时间较长、接受人胰岛素而非仅胰岛素治疗、血糖变异性较高、6 周基线期内低血糖评分较高、血压较低、血脂水平较低以及接受精神药物治疗。任何严重程度的低血糖事件的预测均优于低血糖需要辅助治疗(3 级低血糖)的预测,后者的事件较少。对于整个随访期间 1 级或更严重低血糖的预测,AUC 为 0.835(95%CI 0.826,0.844)在 1 型糖尿病中,0.840(95%CI 0.831,0.848)在 2 型糖尿病中。对于 3 级低血糖,AUC 较低,1 型糖尿病为 0.689(95%CI 0.667,0.712),2 型糖尿病为 0.705(95%CI 0.662,0.748)。与基线模型相比,几乎所有的预测改善都可以通过个体的低血糖史、血糖变异性和 6 周的基础期血糖来捕捉。
结论/解释:尽管低血糖发生率根据社会人口统计学和临床特征以及治疗史而有很大差异,但观察 6 周的低血糖事件和血糖测量值可以预测未来的低血糖风险。