Department of Oncology and Metabolism, University of Sheffield, Sheffield, UK.
Department of Internal Medicine and Department of Population and Data Sciences, University of Texas Southwestern Medical Center, Dallas, Texas, USA.
Diabetes Obes Metab. 2020 Dec;22(12):2248-2256. doi: 10.1111/dom.14208.
The ability to differentiate patient populations with type 2 diabetes at high risk of severe hypoglycaemia could impact clinical decision making. The aim of this study was to develop a risk score, using patient characteristics, that could differentiate between populations with higher and lower 2-year risk of severe hypoglycaemia among individuals at increased risk of cardiovascular disease.
Two models were developed for the risk score based on data from the DEVOTE cardiovascular outcomes trials. The first, a data-driven machine-learning model, used stepwise regression with bidirectional elimination to identify risk factors for severe hypoglycaemia. The second, a risk score based on known clinical risk factors accessible in clinical practice identified from the data-driven model, included: insulin treatment regimen; diabetes duration; sex; age; and glycated haemoglobin, all at baseline. Both the data-driven model and simple risk score were evaluated for discrimination, calibration and generalizability using data from DEVOTE, and were validated against the external LEADER cardiovascular outcomes trial dataset.
Both the data-driven model and the simple risk score discriminated between patients at higher and lower hypoglycaemia risk, and performed similarly well based on the time-dependent area under the curve index (0.63 and 0.66, respectively) over a 2-year time horizon.
Both the data-driven model and the simple hypoglycaemia risk score were able to discriminate between patients at higher and lower risk of severe hypoglycaemia, the latter doing so using easily accessible clinical data. The implementation of such a tool (http://www.hyporiskscore.com/) may facilitate improved recognition of, and education about, severe hypoglycaemia risk, potentially improving patient care.
能够区分 2 型糖尿病患者中低血糖风险较高的人群,可能会影响临床决策。本研究旨在开发一种风险评分,使用患者特征,区分心血管疾病风险增加的个体中低血糖风险较高和较低的 2 年风险人群。
该风险评分基于 DEVOTE 心血管结局试验的数据,建立了两种模型。第一种是基于数据的机器学习模型,使用双向消除的逐步回归来识别低血糖的危险因素。第二种是基于数据驱动模型中确定的、在临床实践中可获得的已知临床危险因素的风险评分,包括:胰岛素治疗方案;糖尿病病程;性别;年龄;和糖化血红蛋白,均在基线时。使用 DEVOTE 中的数据评估数据驱动模型和简单风险评分的区分度、校准度和可推广性,并针对外部 LEADER 心血管结局试验数据集进行验证。
数据驱动模型和简单风险评分都能区分低血糖风险较高和较低的患者,基于时间依赖性曲线下面积指数(分别为 0.63 和 0.66),在 2 年时间内表现相当。
数据驱动模型和简单的低血糖风险评分都能够区分低血糖风险较高和较低的患者,后者使用易于获得的临床数据来实现。此类工具(http://www.hyporiskscore.com/)的实施可能有助于提高对严重低血糖风险的认识和教育,从而改善患者的护理。