Zhao Chunhui, Dassau Eyal, Jovanovič Lois, Zisser Howard C, Doyle Francis J, Seborg Dale E
Department of Chemical Engineering, University of California, Santa Barbara, Santa Barbara, California 93106-5080, USA.
J Diabetes Sci Technol. 2012 May 1;6(3):617-33. doi: 10.1177/193229681200600317.
Accurate prediction of future glucose concentration for type 1 diabetes mellitus (T1DM) is needed to improve glycemic control and to facilitate proactive management before glucose concentrations reach undesirable concentrations. The availability of frequent glucose measurements, insulin infusion rates, and meal carbohydrate estimates can be used to good advantage to capture important information concerning glucose dynamics.
This article evaluates the feasibility of using a latent variable (LV)-based statistical method to model glucose dynamics and to forecast future glucose concentrations for T1DM applications. The prediction models are developed using a proposed LV-based approach and are evaluated for retrospective clinical data from seven individuals with T1DM and for In silico simulations using the Food and Drug Administration-accepted University of Virginia/University of Padova metabolic simulator. This article provides comparisons of the prediction accuracy of the LV-based method with that of a standard modeling alternative. The influence of key design parameters on the performance of the LV-based method is also illustrated.
In general, the LV-based method provided improved prediction accuracy in comparison with conventional autoregressive (AR) models and autoregressive with exogenous input (ARX) models. For larger prediction horizons (≥30 min), the LV-based model with exogenous inputs achieved the best prediction performance based on a paired t-test (α = 0.05).
The LV-based method resulted in models whose glucose prediction accuracy was as least as good as the accuracies of standard AR/ARX models and a simple model-free approach. Furthermore, the new approach is less sensitive to changing conditions and the effect of key design parameters.
为了改善血糖控制,并在血糖浓度达到不理想水平之前促进积极管理,需要准确预测1型糖尿病(T1DM)患者未来的血糖浓度。频繁的血糖测量值、胰岛素输注速率和膳食碳水化合物估计值可被充分利用,以获取有关血糖动态的重要信息。
本文评估了使用基于潜在变量(LV)的统计方法对血糖动态进行建模并预测T1DM患者未来血糖浓度的可行性。预测模型采用所提出的基于LV的方法开发,并针对7名T1DM患者的回顾性临床数据以及使用美国食品药品监督管理局认可的弗吉尼亚大学/帕多瓦大学代谢模拟器进行的计算机模拟进行评估。本文将基于LV的方法的预测准确性与标准建模方法的预测准确性进行了比较。还阐述了关键设计参数对基于LV的方法性能的影响。
总体而言,与传统自回归(AR)模型和带外生输入的自回归(ARX)模型相比,基于LV的方法提供了更高的预测准确性。对于较大的预测期(≥30分钟),基于配对t检验(α = 0.05),带外生输入的基于LV的模型实现了最佳预测性能。
基于LV的方法所得到的模型,其血糖预测准确性至少与标准AR/ARX模型以及一种简单的无模型方法的准确性相当。此外,新方法对变化的条件和关键设计参数的影响不太敏感。