论文标题
估计COVID-19的扩展曲线整合全球数据和借贷信息
Estimation of COVID-19 spread curves integrating global data and borrowing information
论文作者
论文摘要
目前,2019年新型冠状病毒病(COVID-19)对全球健康是巨大的威胁。该病毒的迅速传播引起了大流行,世界各地的国家正在苦苦挣扎,在199.9的感染病例中激增。美国食品和药物管理局批准了预防或治疗COVID-19的药物或其他治疗剂:有关该疾病的信息非常有限,即使存在。这激发了数据集成的使用,将来自不同来源的数据结合在一起,并诱发有用的信息与它们的统一视图。在本文中,我们提出了一个贝叶斯分层模型,该模型将全球数据集成了多个国家的感染轨迹的实时预测。由于提议的模型利用了跨多个国家的借贷信息,因此它的表现优于现有的基于国家的模型。由于已经采用了完全的贝叶斯方式,因此该模型提供了一个有力的预测工具,并具有不确定性量化的质量。此外,已将联合变量选择技术集成到了提出的建模方案中,该方案旨在确定由于Covid-19引起的可能的国家级风险因素。
Currently, novel coronavirus disease 2019 (COVID-19) is a big threat to global health. The rapid spread of the virus has created pandemic, and countries all over the world are struggling with a surge in COVID-19 infected cases. There are no drugs or other therapeutics approved by the US Food and Drug Administration to prevent or treat COVID-19: information on the disease is very limited and scattered even if it exists. This motivates the use of data integration, combining data from diverse sources and eliciting useful information with a unified view of them. In this paper, we propose a Bayesian hierarchical model that integrates global data for real-time prediction of infection trajectory for multiple countries. Because the proposed model takes advantage of borrowing information across multiple countries, it outperforms an existing individual country-based model. As fully Bayesian way has been adopted, the model provides a powerful predictive tool endowed with uncertainty quantification. Additionally, a joint variable selection technique has been integrated into the proposed modeling scheme, which aimed to identify possible country-level risk factors for severe disease due to COVID-19.