膳食摄入量对1型糖尿病经验动态模型质量的影响

Peng Li, Lei Yu, Jiping Wang, Liquan Guo, Qiang Fang
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引用次数: 2

摘要

基于模型的人工胰腺控制器需要一个能够准确预测未来血糖趋势的模型。为了量化采食量对经验动态模型(EDM)质量的影响,模拟了不同的采食量条件(如采食量和时间变化、个体差异)来生成数据。采用模型识别技术对单输入单输出(SISO)和多输入单输出(MISO)电火花加工进行了识别和评价。由于用餐量的不同,这些模型的预测精度在同一受试者内部和受试者之间存在显著差异,其中额外的下午点心和用餐时间变化对这些模型的影响最大。在变粉条件下,MISO模型的预测精度低于SISO模型。
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Effect of meal intake on the quality of empirical dynamic models for Type 1 Diabetes
A model-based controller for artificial pancreas requires a model that is able to predict future glucose trends precisely. To quantify the effect of meal intake on the quality of empirical dynamic models (EDM), changing meal conditions (e.g., the meal amounts and times variation, individual differences) were simulated to generate data. Both single-input single-output (SISO) and multi-input single-output (MISO) EDM were identified and evaluated via model identification technology. The prediction accuracy of these models varies significantly within a subject and between subjects due to the different variation of meal amounts, and the additional afternoon snack and meal times shift have the greatest influence on these models. The prediction accuracy of MISO models are worse than that of SISO models under the changing meal condition.
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