论文标题
在大流行中指导历史疾病的预测模型:流感和Covid-19
Steering a Historical Disease Forecasting Model Under a Pandemic: Case of Flu and COVID-19
论文作者
论文摘要
及时预测流感,帮助卫生组织和决策者进行充分的准备和决策。但是,尽管研究兴趣增加,但有效的流感预测仍然是一个挑战。在共同大流行中,当流感样疾病(ILI)计数受到各种因素(例如与covid-19的症状相似性以及医疗保健寻求普通人群的医疗保健寻求模式的变化)的影响时,这更具挑战性。在当前的大流行中,历史流感模型具有有关疾病动态的宝贵专业知识,但面临适应困难。因此,我们提出了一种神经转移学习体系结构Cali-Net,使我们能够将历史疾病预测模型“引导”到Flu和Covid共存的新场景中。我们的框架可以通过自动学习何时应强调与共同相关的信号学习以及何时应该从历史模型中学习的框架来实现这种适应。因此,我们利用从历史ILI数据以及有限的共同相关信号中学到的表示形式。我们的实验表明,我们的方法成功地将历史预测模型适应当前大流行。此外,我们表明,与最先进的流感预测方法相比,我们的主要目标的成功并不是牺牲整体表现。
Forecasting influenza in a timely manner aids health organizations and policymakers in adequate preparation and decision making. However, effective influenza forecasting still remains a challenge despite increasing research interest. It is even more challenging amidst the COVID pandemic, when the influenza-like illness (ILI) counts are affected by various factors such as symptomatic similarities with COVID-19 and shift in healthcare seeking patterns of the general population. Under the current pandemic, historical influenza models carry valuable expertise about the disease dynamics but face difficulties adapting. Therefore, we propose CALI-Net, a neural transfer learning architecture which allows us to 'steer' a historical disease forecasting model to new scenarios where flu and COVID co-exist. Our framework enables this adaptation by automatically learning when it should emphasize learning from COVID-related signals and when it should learn from the historical model. Thus, we exploit representations learned from historical ILI data as well as the limited COVID-related signals. Our experiments demonstrate that our approach is successful in adapting a historical forecasting model to the current pandemic. In addition, we show that success in our primary goal, adaptation, does not sacrifice overall performance as compared with state-of-the-art influenza forecasting approaches.