IEEE J Biomed Health Inform. 2021 Aug;25(8):2857-2865. doi: 10.1109/JBHI.2021.3054876. Epub 2021 Aug 5.
The potential of using an electroencephalogram (EEG) to detect hypoglycemia in patients with type 1 diabetes (T1D) has been investigated in both time and frequency domains. Under hyperinsulinemic hypoglycemic clamp conditions, we have shown that the brain's response to hypoglycemic episodes could be described by the centroid frequency and spectral gyration radius evaluated from spectral moments of EEG signals. The aim of this paper is to investigate the effect of hypoglycemia on spectral moments in EEG epochs of different durations and to propose the optimal time window for hypoglycemia detection without using clamp protocols. The incidence of hypoglycemic episodes at night time in five T1D adolescents was analyzed from selected data of ten days of observations in this study. We found that hypoglycemia is associated with significant changes (P < 0.05) in spectral moments of EEG segments in different lengths. Specifically, the changes were more pronounced on the occipital lobe. We used effect size as a measure to determine the best EEG epoch duration for the detection of hypoglycemic episodes. Using Bayesian neural networks, this study showed that 30 second segments provide the best detection rate of hypoglycemia. In addition, Clarke's error grid analysis confirms the correlation between hypoglycemia and EEG spectral moments of this optimal time window, with 86% of clinically acceptable estimated blood glucose values. These results confirm the potential of using EEG spectral moments to detect the occurrence of hypoglycemia.
已经在时域和频域中研究了使用脑电图 (EEG) 来检测 1 型糖尿病 (T1D) 患者低血糖的潜力。在高胰岛素低血糖钳夹条件下,我们已经表明,大脑对低血糖发作的反应可以通过从 EEG 信号的谱矩评估的质心频率和谱旋半径来描述。本文的目的是研究低血糖对不同持续时间的 EEG 段谱矩的影响,并提出在不使用钳夹方案的情况下检测低血糖的最佳时间窗口。通过分析这项研究中十天观察所选数据,我们发现夜间 T1D 青少年低血糖发作的发生率与 EEG 段不同长度的谱矩的显著变化(P<0.05)有关。具体来说,枕叶的变化更为明显。我们使用效应大小作为衡量标准,确定用于检测低血糖发作的最佳 EEG 段持续时间。本研究使用贝叶斯神经网络表明,30 秒段可提供最佳的低血糖检测率。此外,克拉克误差网格分析证实了该最佳时间窗口内低血糖与 EEG 谱矩之间的相关性,具有 86%的临床可接受的估计血糖值。这些结果证实了使用 EEG 谱矩来检测低血糖发生的潜力。