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Predicting hypoglycemia in diabetic patients using data mining techniques

机译:利用数据采矿技术预测糖尿病患者的低血糖

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The proper control of blood glucose levels in diabetic patients reduces serious complications. Yet tighter glycemic control increases the risk of developing hypoglycemia, a sudden drop in patients' blood glucose levels that causes coma and possibly death if proper action is not taken immediately. In this paper, we propose a hypoglycemia prediction model, using recent history of subcutaneous glucose measurements collected via Continuous Glucose Monitoring (CGM) sensors. The model is able to predict hypoglycemia events within a prediction horizon of thirty minutes accurately (sensitivity= 86.47%, specificity= 96.22, accuracy= 95.97%) using only the last two glucose measurements and the difference between them. More remarkably, this study shows the ability to develop a generalized prediction model suitable for predicting hypoglycemia events for the group of patients participating in the study.
机译:糖尿病患者血糖水平的适当控制降低了严重的并发症。 然而,血糖控制的较小血糖控制增加了患有低血糖的风险,突然下降,患者血糖水平导致昏迷,如果没有立即采取适当的行动,可能会死亡。 在本文中,我们提出了一种低血糖预测模型,使用连续葡萄糖监测(CGM)传感器收集的皮下葡萄糖测量的近期历史。 该模型能够准确地预测到30分钟内的低血糖事件(灵敏度= 86.47%,特异性= 96.22,精度= 95.97%)使用最后两个葡萄糖测量和它们之间的差异。 更值得注意的是,该研究表明,能够开发一种适合于预测参与该研究的患者组的低血糖事件的广义预测模型。

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