In this paper, we study the problem of blood glucose forecasting and provide a deep personalized solution. Predicting blood glucose level in people with diabetes has significant value because health complications of abnormal glucose level are serious, sometimes even leading to death. Therefore, having a model that can accurately and quickly warn patients of potential problems is essential. To develop a better deep model for blood glucose forecasting, we analyze the data and detect important patterns. These observations helped us to propose a method that has several key advantages over existing methods: 1- it learns a personalized model for each patient as well as a global model; 2- it uses an attention mechanism and extracted time features to better learn long-term dependencies in the data; 3- it introduces a new, robust training procedure for time series data. We empirically show the efficacy of our model on a real dataset.
翻译:在本文中,我们研究了血糖预测问题,并提供了深刻的个人化解决方案。预测糖尿病患者的血糖水平具有重要价值,因为异常葡萄糖水平的健康并发症非常严重,有时甚至导致死亡。因此,建立能够准确和快速地警告病人潜在问题的模型至关重要。为了为血糖预测开发一个更深的模型,我们分析了数据并检测了重要模式。这些观察有助于我们提出一种比现有方法具有若干主要优势的方法:1 - 它为每个病人学习个性化模型以及全球模型;2 - 它使用关注机制和抽取的时间特征来更好地了解数据的长期依赖性;3 - 它为时间序列数据引入了新的、强有力的培训程序。我们用实证方式展示了我们模型在真实数据集上的功效。