Modelling the glucose metabolism with backpropagation through time trained Elman nets

E. Teufel, M. Kletting, W. Teich, H. Pfleiderer, C. Tarin-Sauer
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引用次数: 12

Abstract

Type-I diabetes mellitus patients can not produce the hormone insulin endogenously. As this hormone is necessary to control the blood sugar level, which is raised by eating, insulin must be delivered exogeneously. Delivering insulin exogeneously demands correct dosage to avoid an extremely high or low blood glucose level. Most patients are not able to administer the adequate insulin dose because they are not able to predict the evolution of their own glucose level after a meal. Therefore, a model of the glucose metabolism is of crucial interest to help patients to determine correct insulin doses. These models shall be capable of predicting the course of the blood glucose level for a couple of hours with reasonable precision. In this paper a computer aided assistance system for diabetes patients running on a mobile handheld device is presented. This assistance system mainly consists of a model of the glucose metabolism, implemented by a modified Elman net. The training is performed through the BPTT algorithm where the training data were generated with an analytical non-linear glucose metabolism model that is quite realistic but cannot be adapted to every single patient. The glucose metabolism process is defined by two inputs, injected insulin and ingested glucose, and one output, namely the blood glucose. Due to the fact that metabolic processes in general have large time constants this process is characterized by the fact that the current net output, that is the blood glucose level, heavily depends on data that are not present in the current input layer any more. The Elman net's context-layer is capable of storing this information. Simulation results demonstrate that the output of this type of neural network closely follows the reference.
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通过时间训练的Elman网进行反向传播的葡萄糖代谢建模
1型糖尿病患者不能内源性产生胰岛素。由于这种激素是控制血糖水平所必需的,而血糖水平是通过进食而升高的,因此胰岛素必须由外源性输送。外源性胰岛素输送需要正确的剂量,以避免血糖水平过高或过低。大多数患者无法给予足够的胰岛素剂量,因为他们无法预测餐后自身血糖水平的变化。因此,葡萄糖代谢模型对帮助患者确定正确的胰岛素剂量至关重要。这些模型应该能够以合理的精度预测几个小时内血糖水平的变化。本文介绍了一种运行在移动手持设备上的糖尿病患者计算机辅助辅助系统。该辅助系统主要由葡萄糖代谢模型组成,通过改进的Elman网络实现。训练是通过BPTT算法进行的,训练数据是由一个分析型的非线性葡萄糖代谢模型生成的,该模型非常真实,但不能适用于每一个患者。葡萄糖代谢过程由两个输入(注射胰岛素和摄入葡萄糖)和一个输出(血糖)来定义。由于代谢过程通常具有较大的时间常数,该过程的特点是当前净输出,即血糖水平,严重依赖于当前输入层中不再存在的数据。Elman网络的上下文层能够存储这些信息。仿真结果表明,该神经网络的输出与参考文献非常接近。
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