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Real-time Detection of Nocturnal Hypoglycemic Episodes using a Novel Non-invasive Hypoglycemia Monitor

机译:使用新型非侵入性低血糖监测瘤的夜间降血糖发作的实时检测

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Hypoglycemia or low blood glucose is a common and serious side effect of insulin therapy in patients with diabetes. Hypoglycemia is unpleasant and can result in unconsciousness, seizures and even death. HypoMon is a real-time non-invasive monitor that measures relevant physiological parameters continuously to provide detection of hypoglycemic episodes in Type 1 diabetes mellitus patients (T1DM). Based on heart rate and corrected QT interval of the ECG signal, we have continued to develop effective algorithms for early detection of nocturnal hypoglycemia. From a clinical study of 24 children with T1DM, associated with natural occurrence of hypoglycemic episodes at night, their heart rates increased (1.021±0.264 vs. 1.068±0.314, P<0.053) and their corrected QT intervals increased significantly (1.030±0.079 vs. 1.052±0.078, P<0.002). It is interesting to note that QT interval and heart rate are less correlated when the patients experienced hypoglycemic episodes through natural occurrence compared to when clamp studies were performed. The overall data were organized into a training set (12 patients) and a test set (another 12 patients) randomly selected. Using the optimal Bayesian neural network which was derived from the training set with the highest log evidence, the estimated blood glucose profiles produced a significant correlation (P<0.02) against measured values in the test set.
机译:低血糖或低血糖是糖尿病患者胰岛素治疗的常见和严重副作用。低血糖是不愉快的,可以导致无意识,癫痫发作甚至死亡。 Hypomon是一种实时非侵入性监测,可持续地测量相关的生理参数,以提供1型糖尿病患者(T1DM)中的低血糖发作的检测。基于心率和ECG信号的QT间隔,我们继续开发有效的夜间低血糖早期检测的有效算法。从24例患有T1DM的24名儿童的临床研究,与晚上有次血糖发作的自然发生相关,它们的心率升高(1.021±0.264 vs.1.068±0.314,P <0.053)和其校正的QT间隔显着增加(1.030±0.079 VS 。1.052±0.078,p <0.002)。值得注意的是,当患者通过与钳位研究相比,患者通过自然发生时,QT间隔和心率不太相关。整体数据被组织成培训集(12名患者)和试验组(另外12名患者)随机选择。利用从具有最高日志证据的训练集的最佳贝叶斯神经网络,估计的血糖简档产生了显着的相关性(P <0.02)对测试集中的测量值。

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