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Auto-Regressive Time Delayed jump neural network for blood glucose levels forecasting

机译:自动回归时间延迟跳跃神经网络血糖水平预测

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摘要

Diabetes mellitus is a widespread chronic disease and is one of the main causes of death worldwide. In order to improve the quality of life of people with diabetes and reduce the occurrence of complications, it is fundamental to prevent glycemic levels from exceeding the physiologic range. With this purpose, many works in recent years have been developed to forecast future glycemic trends using machine learning algorithms that exploit the reading of continuous glucose monitoring sensors, which gather glycemic data from diabetic patients 24 h a day. However, their application is limited in practice by the fact that they usually require a large amount of training data and other heterogeneous features gathered from patients. For this reason, in this work we present a novel neural network capable of predicting future glycemic levels using only the past glucose values as input while needing a small amount of training data. The model is a jump neural network with the addition of feedback connections from the output to the hidden layer, and time delays for each of the input-to-hidden, output-to-hidden and input-to-output connections. Experiments were conducted on a private and a public dataset. We evaluated performance in terms of RMSE and of adverse event detection. The proposed model outperforms other methods suited for time series forecasting, as well as models for blood glucose level prediction present in the literature. (C) 2020 Elsevier B.V. All rights reserved.
机译:糖尿病是一种普遍的慢性疾病,是全世界死亡的主要原因之一。为了提高糖尿病患者的生活质量并减少并发症的发生,它是防止血糖水平超过生理范围的基础。为此目的,近年来许多作品已经开发出使用利用读取连续葡萄糖监测传感器的机器学习算法来预测未来血糖趋势,该算法每天24小时收集糖尿病患者的血糖数据。然而,他们的申请在实践中受到限制,因为它们通常需要大量的训练数据和从患者收集的其他异质特征。因此,在这项工作中,我们介绍了一种新的神经网络,其能够仅使用过去的葡萄糖值来预测未来的血糖水平,因为需要少量训练数据。该模型是跳跃神经网络,并将来自输出到隐藏层的反馈连接添加到隐藏层的时间延迟,以及每个输入到隐藏的输出到隐藏和输入到输出连接的时间延迟。实验是在私人和公共数据集上进行的。我们在RMSE和不良事件检测方面评估了性能。所提出的模型优于适用于时间序列预测的其他方法,以及文献中存在血糖水平预测的模型。 (c)2020 Elsevier B.v.保留所有权利。

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