JAEB Center for Health Research, Tampa, Florida, USA.
Muscle Health Research Centre, York University, Toronto, Canada.
Diabetes Technol Ther. 2023 Sep;25(9):602-611. doi: 10.1089/dia.2023.0140. Epub 2023 Jun 20.
Exercise is known to increase the risk for hypoglycemia in type 1 diabetes (T1D) but predicting when it may occur remains a major challenge. The objective of this study was to develop a hypoglycemia prediction model based on a large real-world study of exercise in T1D. Structured study-specified exercise (aerobic, interval, and resistance training videos) and free-living exercise sessions from the T1D Exercise Initiative study were used to build a model for predicting hypoglycemia, a continuous glucose monitoring value <70 mg/dL, during exercise. Repeated measures random forest (RMRF) and repeated measures logistic regression (RMLR) models were constructed to predict hypoglycemia using predictors at the start of exercise and baseline characteristics. Models were evaluated with area under the receiver operating characteristic curve (AUC) and balanced accuracy. RMRF and RMLR had similar AUC (0.833 vs. 0.825, respectively) and both models had a balanced accuracy of 77%. The probability of hypoglycemia was higher for exercise sessions with lower pre-exercise glucose levels, negative pre-exercise glucose rates of change, greater percent time <70 mg/dL in the 24 h before exercise, and greater pre-exercise bolus insulin-on-board (IOB). Free-living aerobic exercises, walking/hiking, and physical labor had the highest probability of hypoglycemia, while structured exercises had the lowest probability of hypoglycemia. RMRF and RMLR accurately predict hypoglycemia during exercise and identify factors that increase the risk of hypoglycemia. Lower glucose, decreasing levels of glucose before exercise, and greater pre-exercise IOB largely predict hypoglycemia risk in adults with T1D.
运动已知会增加 1 型糖尿病(T1D)患者发生低血糖的风险,但预测低血糖何时发生仍然是一个主要挑战。本研究的目的是基于 T1D 运动的大型真实世界研究,开发一种低血糖预测模型。 使用 T1D 运动倡议研究中的结构化研究指定的运动(有氧运动、间歇运动和阻力训练视频)和自由生活运动时段来构建用于预测运动期间低血糖(连续血糖监测值<70mg/dL)的模型。 重复测量随机森林(RMRF)和重复测量逻辑回归(RMLR)模型分别使用运动开始时的预测因子和基线特征来构建预测低血糖的模型。使用接收者操作特征曲线(AUC)下的面积和平衡准确性来评估模型。 RMRF 和 RMLR 的 AUC(分别为 0.833 和 0.825)和平衡准确性(分别为 77%)相似。对于运动前血糖水平较低、负运动前血糖变化率、运动前 24 小时内<70mg/dL 的时间百分比更高以及运动前胰岛素用量更高的运动时段,低血糖的可能性更高。 自由生活有氧运动、散步/徒步旅行和体力劳动发生低血糖的可能性最高,而结构化运动发生低血糖的可能性最低。 RMRF 和 RMLR 准确预测运动期间的低血糖,并确定增加低血糖风险的因素。较低的血糖、运动前血糖水平下降以及更大的运动前胰岛素用量在很大程度上预测了 T1D 成人的低血糖风险。