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Using causality modeling and Fuzzy Lattice Reasoning algorithm for predicting blood glucose

机译:使用因果关系模型和模糊格推理算法预测血糖

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摘要

Blood glucose measurement is an important feedback in the course of diabetes treatment and prognosis. However, predicting the blood glucose level is not an easy task in the course of insulin treatment. There are many factors influencing the results (internal, environmental and behavioral factors). Previous attempts for predicting high levels of blood glucose utilize data related to insulin production, insulin action, or both by using time series forecasting and using of non-linear classification model. In this paper, we propose a more generic approach for predicting blood glucose levels using Fuzzy Lattice Reasoning (FLR). FLR allows us to deal with reasoning using specialist's knowledge acquisition and generation of rules base to increase the accuracy of predicting blood glucose level. In addition to the improved accuracy by FLR, the resultant rules contain some min-max ranges of variables making them flexible for diagnosis at the precise timing of the intervention and alarm. The new model is tested in comparison to other classical machine learning methods by using real-life diabetes dataset from AAAI Spring Symposium on Interpreting Clinical Data; superior accuracy is found and the efficacy of the model is verified through computer experiments. As far as we know, this is the pioneer work modeling temporal diabetes datasets into descriptive rules using FLR.
机译:血糖测量是糖尿病治疗和预后过程中的重要反馈。然而,在胰岛素治疗过程中,预测血糖水平并非易事。影响结果的因素很多(内部,环境和行为因素)。通过使用时间序列预测和使用非线性分类模型,先前的预测高血糖水平的尝试利用了与胰岛素产生,胰岛素作用或两者相关的数据。在本文中,我们提出了一种使用模糊格推理(FLR)预测血糖水平的通用方法。 FLR允许我们使用专家的知识获取和规则库的生成来处理推理,以提高预测血糖水平的准确性。除了通过FLR提高准确性外,所得规则还包含一些最小-最大范围的变量,从而使其可以灵活地在干预和警报的准确时间进行诊断。通过使用来自AAAI Spring Symposium临床数据解释研讨会上的现实生活中的糖尿病数据集,将该新模型与其他经典机器学习方法进行了比较;发现了更高的精度,并且通过计算机实验验证了模型的有效性。据我们所知,这是使用FLR将时态糖尿病数据集建模为描述性规则的开创性工作。

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