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A Dynamic Model with Structured Recurrent Neural Network to Predict Glucose-Insulin Regulation of Type 1 Diabetes Mellitus

机译:具有结构性复发性神经网络的动态模型,以预测1型糖尿病型糖尿病的葡萄糖 - 胰岛素调节

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An artificial neural network (ANN) model for the prediction of glucose concentration in a glucose-insulin regulation system for type 1 diabetes mellitus is developed and validated by using the Continuous Glucose Monitoring System (CGMS) data. This network consists of structured framework according to the compartmental structure of the Hovorka-Wilinska model (HWM), and an additional update scheme is also included, which can improve the prediction accuracy whenever new measurements are available. The model is tested on a real case, as well as long term prediction has been carried over an extended time horizon from 30 minutes to 4 hours, and the quality of prediction is assessed by examining the values of the four indexes. For instant, the overall Clarke error grid (CEG) Zone A value is up to 100% for the 30-min-ahead prediction horizon with update. Therefore, for practical purpose, our results indicate that the promising prediction performance can be achieved by our proposed structured recurrent neural network model (SRNNM).
机译:通过使用连续葡萄糖监测系统(CGMS)数据,开发并验证了一种用于预测葡萄糖 - 胰岛素调节系统中葡萄糖胰岛素调节系统中葡萄糖浓度的人工神经网络(ANN)模型。该网络由根据Hovorka-Wilinska模型(HWM)的隔间结构的结构化框架组成,还包括额外的更新方案,每当新测量可用时,可以提高预测精度。该模型在实际情况下测试,并且在30分钟到4小时的延长时间范围内进行了长期预测,并且通过检查四个索引的值来评估预测质量。对于瞬间,总体克拉克错误网格(CEG)区域为30分钟预测地平线的值高达100%,更新。因此,为了实际目的,我们的结果表明,我们提出的结构经常性神经网络模型(SRNNM)可以实现有前途的预测性能。

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