COVID-19:预测、流行和疫苗分配操作

Amine Bennouna, Joshua Joseph, David Nze-Ndong, G. Perakis, Divya Singhvi, O. S. Lami, Yannis Spantidakis, Leann Thayaparan, Asterios Tsiourvas
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引用次数: 2

摘要

问题定义:缓解COVID-19大流行带来了一系列前所未有的挑战,包括预测新病例和死亡,了解超出检测能力范围的真实流行情况,以及在不同地区分配不同的疫苗。在本文中,我们描述了我们为解决这些问题所做的努力,并从病例和死亡预测、真实流行率和公平疫苗分配等方面探讨了对抗击大流行的影响。方法/结果:我们展示了我们开发的预测病例和死亡的方法,使用一种新的基于机器学习的聚合方法来创建一个我们称之为MIT-Cassandra的单一预测。我们进一步结合COVID-19病例预测来确定真实流行率,并将该流行率纳入有效和公平地管理疫苗分配操作的优化模型。我们研究了不同地区和年龄组之间疫苗分配的权衡,以及不同疫苗的第一剂和第二剂分配。这也使我们能够深入了解疾病在不同人群中的流行和暴露如何以公平的方式影响不同疫苗剂量的分布。管理意义:麻省理工学院-卡桑德拉目前被疾病控制和预防中心使用,在准确性方面一直是表现最好的方法之一,经常名列前茅。此外,我们的工作一直在帮助决策者预测未来几个月不同地区的COVID-19病例和真实流行情况,并利用这些知识在各种操作限制下分发疫苗。最后,也是非常重要的一点,我们的研究成果被专门用于与麻省理工学院(MIT)的智力探索项目合作,并作为麻省理工学院重新开放该研究所的一部分。资金:麻省理工学院对智力探索的财政支持表示感谢。补充材料:在线附录可在https://doi.org/10.1287/msom.2022.1160上获得。
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COVID-19: Prediction, Prevalence, and the Operations of Vaccine Allocation
Problem definition: Mitigating the COVID-19 pandemic poses a series of unprecedented challenges, including predicting new cases and deaths, understanding true prevalence beyond what tests are able to detect, and allocating different vaccines across various regions. In this paper, we describe our efforts to tackle these issues and explore the impact on combating the pandemic in terms of case and death prediction, true prevalence, and fair vaccine distribution. Methodology/results: We present the methods we developed for predicting cases and deaths using a novel machine-learning-based aggregation method to create a single prediction that we call MIT-Cassandra. We further incorporate COVID-19 case prediction to determine true prevalence and incorporate this prevalence into an optimization model for efficiently and fairly managing the operations of vaccine allocation. We study the trade-offs of vaccine allocation between different regions and age groups, as well as first- and second-dose distribution of different vaccines. This also allows us to provide insights into how prevalence and exposure of the disease in different parts of the population can affect the distribution of different vaccine doses in a fair way. Managerial implications: MIT-Cassandra is currently being used by the Centers for Disease Control and Prevention and is consistently among the best-performing methods in terms of accuracy, often ranking at the top. In addition, our work has been helping decision makers by predicting how cases and true prevalence of COVID-19 will progress over the next few months in different regions and utilizing the knowledge for vaccine distribution under various operational constraints. Finally, and very importantly, our work has specifically been used as part of a collaboration with the Massachusetts Institute of Technology's (MIT’s) Quest for Intelligence and as part of MIT’s process to reopen the institute. Funding: Financial support from MIT Quest for Intelligence is gratefully acknowledged. Supplemental Material: The online appendix is available at https://doi.org/10.1287/msom.2022.1160 .
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