Predicting Blood Glucose Levels with EMD and LSTM Based CGM Data

Wei Song, Wanyuan Cai, Jing Li, Fusong Jiang, Shengqi He
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引用次数: 9

Abstract

Blood glucose monitoring is essential for diabetes management. Applying deep learning technique for blood glucose monitoring is promising, given its success in a range of healthcare and medical tasks. In this paper, we proposed a method that combines Empirical Mode Decomposition (EMD) with Long-Short Term Memory (LSTM) to achieve good experimental results in predicting patient blood glucose. We used patients' real blood glucose levels time series data to train the method proposed in this paper and to predict blood glucose for 30 minutes to 120 minutes. First, we use only blood glucose readings and timestamps in the dataset. Meanwhile, we used ADF to verify the non-stationarity of blood glucose time series. Then, we use EMD to decompose the blood glucose time series and use LSTM to train the decomposed time series to obtain a blood glucose prediction model. Finally, Mean Absolute Error (MAE) and root mean squared error (RMSE) were used to evaluate the experimental results. On the test dataset, the mean values of the MAE and RMSE are 0.4458mmol/L and 1.08mmol/L for 30mins, 0.87 and 1.27 mmol/L for 60mins, 0.85mmol/L and 1.36 mmol/L for 120mins, respectively. Experimental results show that the EMD+LSTM had better predictive performance than the LSTM when blood glucose changed dramatically. Meanwhile, it is still challenging to reach a high accuracy of predicting the long-term blood glucose.
基于CGM数据的EMD和LSTM预测血糖水平
血糖监测对糖尿病的管理至关重要。鉴于深度学习技术在一系列医疗保健和医疗任务中的成功,将其应用于血糖监测是有希望的。在本文中,我们提出了一种将经验模式分解(EMD)与长短期记忆(LSTM)相结合的方法,在预测患者血糖方面取得了较好的实验结果。我们使用患者真实血糖水平时间序列数据对本文提出的方法进行训练,预测30分钟至120分钟的血糖。首先,我们在数据集中只使用血糖读数和时间戳。同时,我们使用ADF来验证血糖时间序列的非平稳性。然后,我们使用EMD对血糖时间序列进行分解,并使用LSTM对分解后的时间序列进行训练,得到血糖预测模型。最后用平均绝对误差(MAE)和均方根误差(RMSE)对实验结果进行评价。在测试数据集上,30分钟MAE和RMSE的平均值分别为0.4458mmol/L和1.08mmol/L, 60分钟MAE和RMSE的平均值分别为0.87和1.27 mmol/L, 120分钟MAE和RMSE的平均值分别为0.85和1.36 mmol/L。实验结果表明,当血糖发生显著变化时,EMD+LSTM的预测性能优于LSTM。与此同时,长期血糖预测的准确性仍然具有一定的挑战性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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