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Glucose forecasting combining Markov chain based enrichment of data, random grammatical evolution and Bagging

机译:基于Markov链的富集数据,随机语法演化和袋装的葡萄糖预测

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Diabetes Mellitus is a disease affecting more and more people every year. Depending on the kind of diabetes and sometimes on the stage of the illness, diabetic patients have to inject some amount of artificial insulin, namely bolus, before the meals, to make up the absence or malfunctioning of their natural insulin. This decision is a difficult task since they need to estimate the number of carbohydrates they are going to ingest, take into account the past and future circumstances, know the past values of glucose, evaluate if the effect of previously injected insulin has already finished and any other relevant information. In this paper, we present and compare a set of methodologies to automate the decision of the insulin bolus, which reduces the number of dangerous predictions. We combine two different data enrichment techniques based on Markov chains with grammatical evolution engines to generate models of blood glucose, and univariate marginal distribution algorithms and bagging techniques to select the set of models to assemble. In particular, we propose the Random-GE procedure, an adaptation of Random Forests to Grammatical Evolution, which leads to excellent prediction models, with a simple configuration and a reduced execution time. The ensemble gives the prediction of glucose for a duple of food and insulins, helping patients in the selection of the appropriate bolus to maintain healthy glucose levels after the meals. Experimental results show that our models get more accurate and robust predictions than previous approaches. (C) 2019 Elsevier B.V. All rights reserved.
机译:糖尿病患病是一种影响每年越来越多的人的疾病。取决于糖尿病的种类,有时在疾病的阶段,糖尿病患者必须注入一定量的人工胰岛素,即膳食前的推注,弥补其天然胰岛素的缺失或发生故障。这一决定是一项艰巨的任务,因为他们需要估计他们要摄取的碳水化合物的数量,考虑到过去和未来的情况,了解葡萄糖的过去值,评估先前注入的胰岛素的效果是否已经完成了其他相关信息。在本文中,我们展示并比较了一套方法,以自动化胰岛素推注的决定,这减少了危险预测的数量。我们将基于Markov链条的两种不同的数据富集技术与语法演化引擎结合起来生成血糖模型,单变量边缘分配算法和装袋技术,以选择组装的模型集。特别是,我们提出了随机GE程序,将随机林的适应性调整到语法演化,这导致出色的预测模型,配置简单和执行时间。该集合可以预测葡萄糖用于糊涂食物和胰岛素,帮助患者选择适当的推注后膳食后保持健康的葡萄糖水平。实验结果表明,我们的模型比以前的方法获得更准确和强大的预测。 (c)2019年Elsevier B.V.保留所有权利。

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