Dynamic Poisson Autoregression for Influenza-Like-Illness Case Count Prediction

Z. Wang, Prithwish Chakraborty, S. Mekaru, J. Brownstein, Jieping Ye, Naren Ramakrishnan
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引用次数: 48

Abstract

Influenza-like-illness (ILI) is among of the most common diseases worldwide, and reliable forecasting of the same can have significant public health benefits. Recently, new forms of disease surveillance based upon digital data sources have been proposed and are continuing to attract attention over traditional surveillance methods. In this paper, we focus on short-term ILI case count prediction and develop a dynamic Poisson autoregressive model with exogenous inputs variables (DPARX) for flu forecasting. In this model, we allow the autoregressive model to change over time. In order to control the variation in the model, we construct a model similarity graph to specify the relationship between pairs of models at two time points and embed prior knowledge in terms of the structure of the graph. We formulate ILI case count forecasting as a convex optimization problem, whose objective balances the autoregressive loss and the model similarity regularization induced by the structure of the similarity graph. We then propose an efficient algorithm to solve this problem by block coordinate descent. We apply our model and the corresponding learning method on historical ILI records for 15 countries around the world using a variety of syndromic surveillance data sources. Our approach provides consistently better forecasting results than state-of-the-art models available for short-term ILI case count forecasting.
流感样疾病病例数预测的动态泊松自回归
流感样疾病(ILI)是世界上最常见的疾病之一,对流感样疾病的可靠预测可以带来重大的公共卫生效益。最近,人们提出了基于数字数据源的新形式的疾病监测,并继续引起人们对传统监测方法的关注。本文以短期流感病例数预测为研究重点,建立了带有外生输入变量的动态泊松自回归模型(DPARX)。在这个模型中,我们允许自回归模型随时间变化。为了控制模型的变化,我们构建了一个模型相似图来指定两个时间点上模型对之间的关系,并根据图的结构嵌入先验知识。我们将ILI病例数预测描述为一个凸优化问题,其目标是平衡自回归损失和相似图结构引起的模型相似正则化。然后,我们提出了一种有效的块坐标下降算法来解决这个问题。我们利用各种综合征监测数据源,将我们的模型和相应的学习方法应用于世界上15个国家的ILI历史记录。我们的方法在短期ILI病例数预测方面始终比现有的最先进模型提供更好的预测结果。
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