Chen Jiangzhuo, Hoops Stefan, Marathe Achla, Mortveit Henning, Lewis Bryan, Venkatramanan Srinivasan, Haddadan Arash, Bhattacharya Parantapa, Adiga Abhijin, Vullikanti Anil, Srinivasan Aravind, Wilson Mandy, Ehrlich Gal, Fenster Maier, Eubank Stephen, Barrett Christopher, Marathe Madhav
medRxiv. 2021 Feb 16:2021.02.04.21251012. doi: 10.1101/2021.02.04.21251012.
We study allocation of COVID-19 vaccines to individuals based on the structural properties of their underlying social contact network. Even optimistic estimates suggest that most countries will likely take 6 to 24 months to vaccinate their citizens. These time estimates and the emergence of new viral strains urge us to find quick and effective ways to allocate the vaccines and contain the pandemic. While current approaches use combinations of age-based and occupation-based prioritizations, our strategy marks a departure from such largely aggregate vaccine allocation strategies. We propose a novel approach motivated by recent advances in (i) science of real-world networks that point to efficacy of certain vaccination strategies and (ii) digital technologies that improve our ability to estimate some of these structural properties. Using a realistic representation of a social contact network for the Commonwealth of Virginia, combined with accurate surveillance data on spatiotemporal cases and currently accepted models of within- and between-host disease dynamics, we study how a limited number of vaccine doses can be strategically distributed to individuals to reduce the overall burden of the pandemic. We show that allocation of vaccines based on individuals' degree (number of social contacts) and total social proximity time is significantly more effective than the currently used age-based allocation strategy in terms of number of infections, hospitalizations and deaths. Our results suggest that in just two months, by March 31, 2021, compared to age-based allocation, the proposed degree-based strategy can result in reducing an additional 56-110k infections, 3.2- 5.4k hospitalizations, and 700-900 deaths just in the Commonwealth of Virginia. Extrapolating these results for the entire US, this strategy can lead to 3-6 million fewer infections, 181-306k fewer hospitalizations, and 51-62k fewer deaths compared to age-based allocation. The overall strategy is robust even: (i) if the social contacts are not estimated correctly; (ii) if the vaccine efficacy is lower than expected or only a single dose is given; (iii) if there is a delay in vaccine production and deployment; and (iv) whether or not non-pharmaceutical interventions continue as vaccines are deployed. For reasons of implementability, we have used degree, which is a simple structural measure and can be easily estimated using several methods, including the digital technology available today. These results are significant, especially for resource-poor countries, where vaccines are less available, have lower efficacy, and are more slowly distributed.
我们基于个体潜在社交接触网络的结构特性,研究新冠疫苗在个体间的分配。即便乐观估计也表明,大多数国家可能需要6到24个月才能为其公民接种疫苗。这些时间预估以及新病毒株的出现促使我们寻找快速有效的疫苗分配方式,以控制疫情。当前的方法采用基于年龄和职业的优先排序组合,但我们的策略与这些主要基于总体情况的疫苗分配策略不同。我们提出了一种新方法,其灵感来自于以下两方面的最新进展:(i)现实世界网络科学指出某些疫苗接种策略的有效性;(ii)数字技术提升了我们估计这些结构特性的能力。利用弗吉尼亚联邦州社交接触网络的真实模型,结合时空病例的准确监测数据以及目前被认可的宿主内和宿主间疾病动态模型,我们研究了如何将有限数量的疫苗剂量有策略地分配给个体,以减轻疫情的总体负担。我们表明,基于个体的度数(社交接触数量)和总社交接近时间来分配疫苗,在感染、住院和死亡人数方面,比目前使用的基于年龄的分配策略显著更有效。我们的结果表明,到2021年3月31日仅两个月内,与基于年龄的分配相比,所提出的基于度数的策略仅在弗吉尼亚联邦州就能额外减少5.6 - 11万例感染、3200 - 5400例住院和700 - 900例死亡。将这些结果外推至整个美国,与基于年龄的分配相比,该策略可减少300 - 600万例感染、18.1 - 30.6万例住院和5.1 - 6.2万例死亡。即便在以下情况下,总体策略依然稳健:(i)社交接触估计不正确;(ii)疫苗效力低于预期或仅接种一剂;(iii)疫苗生产和部署出现延迟;(iv)在疫苗部署时非药物干预措施是否继续实施。出于可实施性的考虑,我们使用了度数,这是一种简单的结构度量,可通过多种方法轻松估计,包括当今可用的数字技术。这些结果意义重大,尤其对于资源匮乏的国家,这些国家疫苗供应较少、效力较低且分配更慢。