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LSTMs and Neural Attention Models for Blood Glucose Prediction: Comparative Experiments on Real and Synthetic Data

机译:用于血糖预测的LSTM和神经注意模型:真实数据和合成数据的对比实验

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We have shown in previous work that LSTM networks are effective at predicting blood glucose levels in patients with type I diabetes, outperforming human experts and an SVR model trained with features computed by manually engineered physiological models. In this paper we present the results of a much larger set of experiments on real and synthetic datasets in what-if, agnostic, and inertial scenarios. Experiments on a more recent real-patient dataset, which we are releasing to the research community, demonstrate that LSTMs are robust to noise and can easily incorporate additional features, such as skin temperature, heart rate and skin conductance, without any change in the architecture. A neural attention module that we designed specifically for time series prediction improves prediction performance on synthetic data; however, the improvements do not transfer to real data. Conversely, using time of day as an additional input feature consistently improves the LSTM performance on real data but not on synthetic data. These and other differences show that behavior on synthetic data cannot be assumed to always transfer to real data, highlighting the importance of evaluating physiological models on data from real patients.
机译:我们在先前的工作中已经表明,LSTM网络可以有效地预测I型糖尿病患者的血糖水平,优于人类专家,并且其SVR模型具有通过人工设计的生理模型计算出的特征进行训练的能力。在本文中,我们介绍了在假设,不可知论和惯性场景下,对真实数据集和合成数据集进行的大量实验的结果。我们正在研究社区中发布的最新的实际患者数据集上的实验表明,LSTM具有强大的抗噪能力,并且可以轻松整合其他功能,例如皮肤温度,心率和皮肤电导率,而无需对架构进行任何更改。我们专门为时间序列预测设计的神经注意模块提高了对合成数据的预测性能;但是,改进不会传输到真实数据。相反,使用一天中的时间作为附加输入功能,可以持续提高LSTM在真实数据上的性能,但不能在合成数据上提高。这些差异和其他差异表明,不能假设合成数据的行为总是转移到真实数据上,从而突出了评估真实患者数据上的生理模型的重要性。

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