Department of Materials Science and Engineering, University of Ioannina, Ioannina, Greece.
Diabetes Technol Ther. 2013 Aug;15(8):634-43. doi: 10.1089/dia.2012.0285. Epub 2013 Jul 13.
The prevention of hypoglycemic events is of paramount importance in the daily management of insulin-treated diabetes. The use of short-term prediction algorithms of the subcutaneous (s.c.) glucose concentration may contribute significantly toward this direction. The literature suggests that, although the recent glucose profile is a prominent predictor of hypoglycemia, the overall patient's context greatly impacts its accurate estimation. The objective of this study is to evaluate the performance of a support vector for regression (SVR) s.c. glucose method on hypoglycemia prediction.
We extend our SVR model to predict separately the nocturnal events during sleep and the non-nocturnal (i.e., diurnal) ones over 30-min and 60-min horizons using information on recent glucose profile, meals, insulin intake, and physical activities for a hypoglycemic threshold of 70 mg/dL. We also introduce herein additional variables accounting for recurrent nocturnal hypoglycemia due to antecedent hypoglycemia, exercise, and sleep. SVR predictions are compared with those from two other machine learning techniques.
The method is assessed on a dataset of 15 patients with type 1 diabetes under free-living conditions. Nocturnal hypoglycemic events are predicted with 94% sensitivity for both horizons and with time lags of 5.43 min and 4.57 min, respectively. As concerns the diurnal events, when physical activities are not considered, the sensitivity is 92% and 96% for a 30-min and 60-min horizon, respectively, with both time lags being less than 5 min. However, when such information is introduced, the diurnal sensitivity decreases by 8% and 3%, respectively. Both nocturnal and diurnal predictions show a high (>90%) precision.
Results suggest that hypoglycemia prediction using SVR can be accurate and performs better in most diurnal and nocturnal cases compared with other techniques. It is advised that the problem of hypoglycemia prediction should be handled differently for nocturnal and diurnal periods as regards input variables and interpretation of results.
预防低血糖事件是胰岛素治疗糖尿病日常管理的重中之重。使用皮下(s.c.)血糖浓度的短期预测算法可能对此有重要贡献。文献表明,尽管最近的血糖谱是低血糖的主要预测指标,但患者的整体情况极大地影响了其准确估计。本研究的目的是评估支持向量回归(SVR)s.c.血糖方法在低血糖预测中的性能。
我们将 SVR 模型扩展为使用最近的血糖谱、进餐、胰岛素摄入和体力活动信息,分别预测夜间睡眠期间和非夜间(即白天)的低血糖事件,预测时间分别为 30 分钟和 60 分钟的低血糖阈值为 70mg/dL。我们还引入了其他变量,用于因先前低血糖、运动和睡眠引起的夜间反复低血糖。将 SVR 预测结果与另外两种机器学习技术的预测结果进行比较。
该方法在 15 名 1 型糖尿病患者的自由生活条件下进行评估。夜间低血糖事件的预测敏感性在两个时间范围内均为 94%,分别为 5.43 分钟和 4.57 分钟。至于白天事件,当不考虑体力活动时,30 分钟和 60 分钟的预测敏感性分别为 92%和 96%,且两个时间滞后均小于 5 分钟。然而,当引入这些信息时,日间敏感性分别下降了 8%和 3%。夜间和日间预测均显示出较高的(>90%)精度。
结果表明,与其他技术相比,使用 SVR 进行低血糖预测可以更准确,在大多数夜间和日间情况下表现更好。建议应根据输入变量和结果解释,分别处理夜间和日间低血糖预测问题。