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Data augmentation and evolutionary algorithms to improve the prediction of blood glucose levels in scarcity of training data

机译:数据扩充和进化算法,可改善缺乏训练数据时血糖水平的预测

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Diabetes Mellitus Type 1 patients are waiting for the arrival of the Artificial Pancreas. Artificial Pancreas systems will control the blood glucose of patients, improving their quality of life and reducing the risks they face daily. At the core of the Artificial Pancreas, an algorithm will forecast future glucose levels and estimate insulin bolus sizes. Grammatical Evolution has been proved as a suitable algorithm for predicting glucose levels. Nevertheless, one of the main obstacles that researches have found for training the Grammatical Evolution models is the lack of significant amounts of data. As in many other fields in medicine, the collection of data from real patients is very complex along with the fact that the patient's response can vary in a high degree due to a lot of personal factors which can be seen as different scenarios. In this paper, we propose both a classification system for scenario selection and a data augmentation algorithm that generates synthetic glucose time series from real data. Our experimental results show that, in a scarce data context, Grammatical Evolution models can get more accurate and robust predictions using scenario selection and data augmentation.
机译:1型糖尿病患者正在等待人造胰腺的到来。人造胰腺系统将控制患者的血糖,改善他们的生活质量并减少他们每天面临的风险。在人工胰腺的核心部分,一种算法将预测未来的葡萄糖水平并估算胰岛素推注量。语法进化已被证明是预测葡萄糖水平的合适算法。尽管如此,研究在训练语法演变模型时发现的主要障碍之一是缺少大量数据。与医学上的许多其他领域一样,从真实患者那里收集数据非常复杂,而且由于许多个人因素(可能被视为不同的情况),患者的反应可能会在很大程度上发生变化。在本文中,我们提出了用于场景选择的分类系统和一种从真实数据生成合成葡萄糖时间序列的数据增强算法。我们的实验结果表明,在数据稀缺的情况下,语法演变模型可以通过使用场景选择和数据增强来获得更准确,更可靠的预测。

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