Department of Functional Sciences, "Victor Babes" University of Medicine and Pharmacy, Timisoara, Romania.
"Pius Brinzeu" Emergency Hospital, Timisoara, Romania.
Sci Rep. 2017 Jul 24;7(1):6232. doi: 10.1038/s41598-017-06478-4.
In patients with type 1 diabetes mellitus (T1DM), glucose dynamics are influenced by insulin reactions, diet, lifestyle, etc., and characterized by instability and nonlinearity. With the objective of a dependable decision support system for T1DM self-management, we aim to model glucose dynamics using their nonlinear chaotic properties. A group of patients was monitored via continuous glucose monitoring (CGM) sensors for several days under free-living conditions. We assessed the glycemic variability (GV) and chaotic properties of each time series. Time series were subsequently transformed into the phase-space and individual autoregressive (AR) models were applied to predict glucose values over 30-minute and 60-minute prediction horizons (PH). The logistic smooth transition AR (LSTAR) model provided the best prediction accuracy for patients with high GV. For a PH of 30 minutes, the average values of root mean squared error (RMSE) and mean absolute error (MAE) for the LSTAR model in the case of patients in the hypoglycemia range were 5.83 ( ± 1.95) mg/dL and 5.18 ( ± 1.64) mg/dL, respectively. For a PH of 60 minutes, the average values of RMSE and MAE were 7.43 ( ± 1.87) mg/dL and 6.54 ( ± 1.6) mg/dL, respectively. Without the burden of measuring exogenous information, nonlinear regime-switching AR models provided fast and accurate results for glucose prediction.
在 1 型糖尿病(T1DM)患者中,葡萄糖动力学受胰岛素反应、饮食、生活方式等因素的影响,其特点是不稳定和非线性。为了实现 T1DM 自我管理的可靠决策支持系统,我们旨在利用其非线性混沌特性来模拟葡萄糖动力学。一组患者通过连续血糖监测(CGM)传感器在自由生活条件下监测了几天。我们评估了每个时间序列的血糖变异性(GV)和混沌特性。随后,时间序列被转换到相空间,并应用个体自回归(AR)模型来预测 30 分钟和 60 分钟预测期(PH)的血糖值。逻辑平滑过渡自回归(LSTAR)模型为高 GV 患者提供了最佳的预测精度。对于 30 分钟的 PH,低血糖范围患者的 LSTAR 模型的平均均方根误差(RMSE)和平均绝对误差(MAE)值分别为 5.83( ± 1.95)mg/dL 和 5.18( ± 1.64)mg/dL。对于 60 分钟的 PH,RMSE 和 MAE 的平均值分别为 7.43( ± 1.87)mg/dL 和 6.54( ± 1.6)mg/dL。非线性 regime-switching AR 模型无需测量外源信息,即可快速准确地预测血糖。