论文标题
数据驱动的模拟和优化COVID-19退出策略
Data-driven Simulation and Optimization for Covid-19 Exit Strategies
论文作者
论文摘要
冠状病毒SARS-2的迅速传播是一项重大挑战,它导致全世界几乎所有政府都采取了巨大措施来应对悲剧。这些措施中的主要措施是整个国家和城市的大规模封锁,这超出了全球经济影响,在人口内部造成了一些深厚的社会和心理紧张局势。尽管采用的缓解措施(包括锁定)通常已证明有用,但决策者现在面临着一个关键的问题:如何以及何时取消缓解措施?确实需要精心计划的退出策略才能从大流行中恢复而不冒着新爆发的风险。从经典上讲,退出策略依靠数学建模来预测公共卫生干预的影响。不幸的是,这种模型对某些关键参数很敏感,这些参数通常是基于thumb规则设置的。在本文中,我们建议使用实际数据驱动的模型来增强流行病学预测,这些模型将学会对不同上下文(例如,每个国家 /地区)进行微调预测。因此,我们建立了大流行模拟和预测工具包,结合了对疾病流行病学参数的深度学习估计,以预测病例和死亡,以及一个遗传算法组成部分,搜索决策者设定的约束和目标之间的最佳折衷/政策。在各个国家重播大流行进化时,我们在实验上表明,在75%的病例中,我们的方法的错误率比纯流行病学模型低得多,并且在学习和测试在不看到国家时获得了95%的R2分数。当用于预测时,这种方法为个人措施和策略的影响提供了可行的见解。
The rapid spread of the Coronavirus SARS-2 is a major challenge that led almost all governments worldwide to take drastic measures to respond to the tragedy. Chief among those measures is the massive lockdown of entire countries and cities, which beyond its global economic impact has created some deep social and psychological tensions within populations. While the adopted mitigation measures (including the lockdown) have generally proven useful, policymakers are now facing a critical question: how and when to lift the mitigation measures? A carefully-planned exit strategy is indeed necessary to recover from the pandemic without risking a new outbreak. Classically, exit strategies rely on mathematical modeling to predict the effect of public health interventions. Such models are unfortunately known to be sensitive to some key parameters, which are usually set based on rules-of-thumb.In this paper, we propose to augment epidemiological forecasting with actual data-driven models that will learn to fine-tune predictions for different contexts (e.g., per country). We have therefore built a pandemic simulation and forecasting toolkit that combines a deep learning estimation of the epidemiological parameters of the disease in order to predict the cases and deaths, and a genetic algorithm component searching for optimal trade-offs/policies between constraints and objectives set by decision-makers. Replaying pandemic evolution in various countries, we experimentally show that our approach yields predictions with much lower error rates than pure epidemiological models in 75% of the cases and achieves a 95% R2 score when the learning is transferred and tested on unseen countries. When used for forecasting, this approach provides actionable insights into the impact of individual measures and strategies.