论文标题
Vaxequity:数据驱动的风险评估和优化框架,用于公平疫苗分布
VaxEquity: A Data-Driven Risk Assessment and Optimization Framework for Equitable Vaccine Distribution
论文作者
论文摘要
随着全球Covid-19案件的持续增长,必须确保所有缺乏疫苗资源的脆弱国家都能获得足够的支持以控制风险。 Covax是WHO为最需要国家提供疫苗的一项倡议。 Covax面临的一个关键问题是如何以最有效,最公平的方式向这些国家分配有限量的疫苗。本文旨在通过首先提出数据驱动的风险评估和预测模型,然后开发一个决策框架来支持战略疫苗分布,以应对这一挑战。基于机器学习的风险预测模型表征了风险如何受到基本基本因素的影响,例如每个Covax国家的人口中的疫苗接种水平。然后利用该预测模型来设计最佳的疫苗分布策略,该策略同时最大程度地降低了由Covax针对的这些国家的疫苗接种覆盖范围,从而最大程度地减少了最大程度的风险。最后,我们使用案例研究和现实世界数据来证实提出的框架。
With the continuous rise of the COVID-19 cases worldwide, it is imperative to ensure that all those vulnerable countries lacking vaccine resources can receive sufficient support to contain the risks. COVAX is such an initiative operated by the WHO to supply vaccines to the most needed countries. One critical problem faced by the COVAX is how to distribute the limited amount of vaccines to these countries in the most efficient and equitable manner. This paper aims to address this challenge by first proposing a data-driven risk assessment and prediction model and then developing a decision-making framework to support the strategic vaccine distribution. The machine learning-based risk prediction model characterizes how the risk is influenced by the underlying essential factors, e.g., the vaccination level among the population in each COVAX country. This predictive model is then leveraged to design the optimal vaccine distribution strategy that simultaneously minimizes the resulting risks while maximizing the vaccination coverage in these countries targeted by COVAX. Finally, we corroborate the proposed framework using case studies with real-world data.