Estimates of the collective immunity to COVID-19 derived from a stochastic cellular automaton based framework.

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Natural Computing Pub Date : 2022-01-01 Epub Date: 2022-06-18 DOI:10.1007/s11047-022-09893-3
Isaías Lima, Pedro Paulo Balbi
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引用次数: 2

Abstract

In the context of the propagation of infectious diseases, when a sufficient degree of immunisation is achieved within a population, the spread of the disease is ended or significantly decreased, leading to collective immunity, meaning the indirect protection given by immune individuals to susceptible individuals. Here we describe the estimates of the collective immunity to COVID-19 from a stochastic cellular automaton based model designed to emulate the spread of SARS-CoV-2 in a population of static individuals interacting only via a Moore neighbourhood of radius one, with a view to analyze the impact of initially immune individuals on the dynamics of COVID-19. This impact was measured by comparing a progression of initial immunity ratio-the percentage of immunised individuals before patient zero starts infecting its neighbourhood-from 0 to 95% of the initial population, with the number of susceptible individuals not contaminated, the peak value of active cases, the total number of deaths and the emulated pandemic duration in days. The influence of this range of immunities over the model was tested with different parameterisations regarding the uncertainties involved in the model such as the durations of the cellular automaton states, the contamination contributions of each state and the state transition probabilities. A collective immunity threshold of 55 % ± 2.5 % on average was obtained from this procedure, under four distinct parameterisations, which is in tune with the estimates of the currently available medical literature, even increasing the uncertainty of the input parameters.

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基于随机元胞自动机框架的COVID-19集体免疫力估计。
在传染病传播的情况下,当在人口中达到足够程度的免疫接种时,疾病的传播就会终止或大大减少,从而导致集体免疫,这意味着免疫个体对易感个体的间接保护。在这里,我们描述了基于随机元胞自动机的模型对COVID-19集体免疫的估计,该模型旨在模拟SARS-CoV-2在仅通过半径为1的摩尔邻域相互作用的静态个体群体中的传播,以分析初始免疫个体对COVID-19动态的影响。这种影响是通过比较初始免疫比率的进展来衡量的,初始免疫比率是指在零号患者开始感染其邻居之前获得免疫的个体的百分比,从0到初始人口的95%,与未受感染的易感个体的数量、活跃病例的峰值、死亡总数和模拟的大流行持续时间(以天为单位)进行比较。针对模型中涉及的不确定性,如元胞自动机状态的持续时间、每个状态的污染贡献和状态转移概率,用不同的参数化测试了该免疫范围对模型的影响。在四种不同的参数化下,从该程序中获得的集体免疫阈值平均为55%±2.5%,这与目前可用的医学文献的估计一致,甚至增加了输入参数的不确定性。
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来源期刊
Natural Computing
Natural Computing Computer Science-Computer Science Applications
CiteScore
4.40
自引率
4.80%
发文量
49
审稿时长
3 months
期刊介绍: The journal is soliciting papers on all aspects of natural computing. Because of the interdisciplinary character of the journal a special effort will be made to solicit survey, review, and tutorial papers which would make research trends in a given subarea more accessible to the broad audience of the journal.
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