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Predicting Blood Glucose using an LSTM Neural Network

机译:使用LSTM神经网络预测血糖

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Diabetes self-management relies on the blood glucose prediction as it allows taking suitable actions to prevent low or high blood glucose level. In this paper, we propose a deep learning neural network (NN) model for blood glucose prediction. It is a sequential one using a Long-Short-Term Memory (LSTM) layer with two fully connected layers. Several experiments were carried out over data of 10 diabetic patients to decide on the model’s parameters in order to identify the best variant of it. The performance of the proposed LSTM NN measured in terms of root mean square error (RMSE) was compared with the ones of an existing LSTM and an autoregressive (AR) models. The results show that our LSTM NN is significantly more accurate; in fact, it outperforms the existing LSTM model for all patients and outperforms the AR model in 9 over 10 patients, besides, the performance differences were assessed by the Wilcoxon statistical test. Furthermore, the mean of the RMSE of our model was 12.38 mg/dl while it was 28.84 mg/dl and 50.69 mg/dl for AR and the existing LSTM respectively.
机译:糖尿病自我管理依赖于血糖预测,因为它允许采取适当的措施来防止低血糖或高血糖。在本文中,我们提出了一种用于血糖预测的深度学习神经网络(NN)模型。它是一个序列,使用带有两个完全连接的层的长期内存(LSTM)层。对10位糖尿病患者的数据进行了几次实验,以确定模型的参数,以便确定模型的最佳变体。将根据均方根误差(RMSE)衡量的拟议LSTM NN的性能与现有LSTM和自回归(AR)模型的性能进行了比较。结果表明,我们的LSTM NN更加准确;实际上,在所有10位患者中,有9位患者的表现优于现有LSTM模型,并优于AR模型。此外,性能差异是通过Wilcoxon统计检验评估的。此外,我们模型的RMSE平均值为12.38 mg / dl,而AR和现有LSTM的平均值分别为28.84 mg / dl和50.69 mg / dl。

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