Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518055, China.
Department of Endocrinology and Metabolism, Shanghai Clinical Center for Diabetes, Shanghai Diabetes Institute, Shanghai Jiao Tong University Affiliated Sixth People's Hospital, Shanghai 200233, China.
J Diabetes Res. 2020 Nov 2;2020:8830774. doi: 10.1155/2020/8830774. eCollection 2020.
Nocturnal hypoglycemia is a serious complication of insulin-treated diabetes, and it is often asymptomatic. A novel CGM metric-gradient was proposed in this paper, and a method of combining mean sensor glucose (MSG) and gradient was presented for the prediction of nocturnal hypoglycemia. For this purpose, the data from continuous glucose monitoring (CGM) encompassing 1,921 patients with diabetes were analyzed, and a total of 302 nocturnal hypoglycemic events were recorded. The MSG and gradient values were calculated, respectively, and then combined as a new metric (, MSG+gradient). In addition, the prediction was conducted by four algorithms, namely, logistic regression, support vector machine, random forest, and long short-term memory. The results revealed that the gradient of CGM showed a downward trend before hypoglycemic events happened. Additionally, the results indicated that the specificity and sensitivity based on the proposed method were better than the conventional metrics of low blood glucose index (LBGI), coefficient of variation (CV), mean absolute glucose (MAG), lability index (LI), , and the complex metrics of MSG+LBGI, MSG+CV, MSG+MAG, and MSG+LI, . Specifically, the specificity and sensitivity were greater than 96.07% and 96.03% at the prediction horizon of 15 minutes and greater than 87.79% and 90.07% at the prediction horizon of 30 minutes when the proposed method was adopted to predict nocturnal hypoglycemic events in the aforementioned four algorithms. Therefore, the proposed method of combining MSG and gradient may enable to improve the prediction of nocturnal hypoglycemic events. Future studies are warranted to confirm the validity of this metric.
夜间低血糖是胰岛素治疗糖尿病的严重并发症,且常无症状。本文提出了一种新的 CGM 度量梯度,并提出了一种结合平均传感器血糖(MSG)和梯度的方法来预测夜间低血糖。为此,分析了涵盖 1921 名糖尿病患者的连续血糖监测(CGM)数据,共记录了 302 例夜间低血糖事件。分别计算了 MSG 和梯度值,然后将它们组合成一个新的度量值(MSG+gradient)。此外,通过逻辑回归、支持向量机、随机森林和长短期记忆四种算法进行了预测。结果表明,CGM 的梯度在低血糖事件发生前呈下降趋势。此外,结果表明,与低血糖指数(LBGI)、变异系数(CV)、平均绝对血糖(MAG)、不稳定性指数(LI)等传统度量标准以及 MSG+LBGI、MSG+CV、MSG+MAG 和 MSG+LI 等复杂度量标准相比,基于所提出的方法的特异性和敏感性更好。具体来说,当采用上述四种算法预测 15 分钟预测窗口内的夜间低血糖事件时,特异性和敏感性大于 96.07%和 96.03%,当采用 30 分钟预测窗口时,特异性和敏感性大于 87.79%和 90.07%。因此,将 MSG 和梯度相结合的方法可能有助于提高夜间低血糖事件的预测准确性。需要进一步的研究来验证该度量标准的有效性。