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Identification of hypoglycemic states for patients with T1DM using various parameters derived from EEG signals

机译:使用源自脑电信号的各种参数识别T1DM患者的降血糖状态

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For patients with Type 1 Diabetes Mellitus (T1DM), hypoglycemia is a very common but dangerous complication which can lead to unconsciousness, coma and even death. The variety of hypoglycemia symptoms is originated from the inadequate supply of glucose to the brain. In this study, we explore the connection between hypoglycemic episodes and the electrical activity of neurons within the brain or electroencephalogram (EEG) signals. By analyzing EEG signals from a clinical study of five children with T1DM, associated with hypoglycemia at night, we find that some EEG parameters change significantly under hypoglycemia condition. Based on these parameters, a method of detecting hypoglycemic episodes using EEG signals with a feed-forward multi-layer neural network is proposed. In our application, the classification results are 72% sensitivity and 55% specificity when the EEG signals are acquired from 2 electrodes C3 and O2. Furthermore, signals from different channels are also analyzed to observe the contributions of each channel to the performance of hypoglycemia classification.
机译:对于1型糖尿病(T1DM)患者,低血糖是一种非常常见但危险的并发症,可能导致神志不清,昏迷甚至死亡。低血糖症状的多样性是由于大脑葡萄糖供应不足而引起的。在这项研究中,我们探讨了降血糖发作与大脑或脑电图(EEG)信号内神经元的电活动之间的联系。通过对来自五名T1DM患儿夜间低血糖的临床研究的脑电信号进行分析,我们发现在低血糖情况下,某些脑电参数会发生显着变化。基于这些参数,提出了一种利用前馈多层神经网络利用脑电信号检测降血糖发作的方法。在我们的应用中,当从2个电极C3和O2采集EEG信号时,分类结果是72%的灵敏度和55%的特异性。此外,还分析了来自不同通道的信号,以观察每个通道对低血糖分类表现的贡献。

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