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Artificial Neural Networks Based Controller for Glucose Monitoring during Clamp Test

机译:基于神经网络的控制器钳夹试验期间血糖监测

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摘要

Insulin resistance (IR) is one of the most widespread health problems in modern times. The gold standard for quantification of IR is the hyperinsulinemic-euglycemic glucose clamp technique. During the test, a regulated glucose infusion is delivered intravenously to maintain a constant blood glucose concentration. Current control algorithms for regulating this glucose infusion are based on feedback control. These models require frequent sampling of blood, and can only partly capture the complexity associated with regulation of glucose. Here we present an improved clamp control algorithm which is motivated by the stochastic nature of glucose kinetics, while using the minimal need in blood samples required for evaluation of IR. A glucose pump control algorithm, based on artificial neural networks model was developed. The system was trained with a data base collected from 62 rat model experiments, using a back-propagation Levenberg-Marquardt optimization. Genetic algorithm was used to optimize network topology and learning features. The predictive value of the proposed algorithm during the temporal period of interest was significantly improved relative to a feedback control applied at an equivalent low sampling interval. Robustness to noise analysis demonstrates the applicability of the algorithm in realistic situations.
机译:胰岛素抵抗(IR)是现代最广泛的健康问题之一。定量IR的金标准是高胰岛素-正常血糖钳夹技术。在测试过程中,应通过静脉内输注调节的葡萄糖以维持恒定的血糖浓度。用于调节这种葡萄糖输注的当前控制算法是基于反馈控制的。这些模型需要频繁采样血液,并且只能部分捕获与葡萄糖调节相关的复杂性。在这里,我们提出了一种改进的钳位控制算法,该算法受葡萄糖动力学的随机性影响,同时使用了评估IR所需的血液样本中的最低需求。提出了一种基于人工神经网络模型的葡萄糖泵控制算法。使用反向传播Levenberg-Marquardt优化,使用从62个大鼠模型实验收集的数据库对系统进行了训练。遗传算法用于优化网络拓扑和学习功能。相对于在等效的低采样间隔处应用的反馈控制,该算法在感兴趣的时间段内的预测值得到了显着提高。噪声分析的鲁棒性证明了该算法在现实情况下的适用性。

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