Li Binghang, Zhou Yalin, Zhang Ting, Ma Anning, Hao Wenhao
Weifang People's Hospital, Shandong Second Medical University, Weifang, China.
School of Public Health, Shandong Second Medical University, Weifang, China.
Front Public Health. 2024 Nov 27;12:1449305. doi: 10.3389/fpubh.2024.1449305. eCollection 2024.
Given the significant impact of the more than three-year-long COVID-19 pandemic on people's health, social order, and economic performance, as well as the potential re-emergence of a new variant and the epidemic "Disease X," it is crucial to examine its developmental trends and suggest countermeasures to address community epidemics of severe respiratory infectious diseases.
The epidemiological characterization of various strains of COVID-19 was modeled using an improved Susceptible-Exposed-Infectious-Recovered (SEIR) model to simulate the infections of different strains of COVID-19 under different scenarios, taking as an example an urban area of a prefecture-level city in Shandong Province, China, with a resident population of 2 million. Scenarios 1-5 are scenario-based simulations the Omicron strain, and 6-8 simulate the original COVID-19 strain, with different parameters for each scenario. Scenarios 1 and 6 do not consider community NPIs and represent natural epidemic scenarios. Scenarios 2-4 assess the impact of different NPIs on the original COVID-19 strain. Scenarios 1-4 and 6-8 compare the effects of the same measures on different strains. Scenario 5 simulates the effects of implementing NPIs after an outbreak has spread widely. Compare scenarios 4 and 9 to analyze the effect of high grades versus dynamic clearing of NPIs. By analyzing the time at which the peak number of cases was reached and the maximum number of cases, we were able to calculate the effectiveness of urban community control measures (NPIs) and the impact of vaccination on disease trends. Based on our research into the degree of restriction of social activities in different levels of control areas during real-world epidemics, we categorized the NPIs into three levels, with controls becoming increasingly stringent from levels 1 to 3 as low-, medium-, and high-risk areas are, respectively, controlled.
In simulation scenarios 1-5 and 9, where the epidemic strain is Omicron and the susceptible population receives three doses of vaccine, it was found that the real-time peak number of cases in scenario 2, which implemented level 1 controls, was reduced by 18.19%, and in scenario 3, which implemented level 2 controls, it was reduced by 38.94%, compared with scenario 1, where no control measures were taken. Level 1 and level 2 controls do not block transmission but significantly reduce peak incidence and delay the peak time. In scenario 5, even with a high number of initial cases, the implementation of level 3 controls can still control the outbreak quickly, but it requires a longer period of time. However, Omicron has a low rate of severe illness, and the existing beds in City A could largely cope even if the control measures had not been implemented. Analyzing scenarios 4 and 9, level 3 community control and dynamic zeroing of the three zones were similarly successful in interrupting the spread of the epidemic. In simulation scenarios 6-8, where the prevalent strain was the original COVID-19 strain, only level 3 community control was able to rapidly extinguish the outbreak. Unchecked, the outbreak is severe, characterized by high peaks and substantial medical stress. Although level 2 controls reduced real-time incidence and peak new infections by 39.81 and 61.33%, and delayed the peaks by 55 and 52 days, respectively, the high rate of severe illnesses may still overwhelm the medical system.
Control effects are related to the level, timing and virus characteristics. Level 3 and dynamic zeroing measures can interrupt community transmission in the early stages of an outbreak. During a pandemic, different NPIs must be implemented, considering the virus's status and cost of control, and ensuring that medical resources are sufficient to maintain medical order.
鉴于长达三年多的新冠疫情对人们的健康、社会秩序和经济表现产生了重大影响,以及新变种和“X疾病”可能再次出现,研究其发展趋势并提出应对社区严重呼吸道传染病疫情的对策至关重要。
采用改进的易感-暴露-感染-康复(SEIR)模型对新冠病毒各毒株的流行病学特征进行建模,以中国山东省一个常住人口为200万的地级市市区为例,模拟不同情景下不同毒株的新冠病毒感染情况。情景1-5是基于奥密克戎毒株的情景模拟,情景6-8模拟原始新冠病毒毒株,每个情景有不同参数。情景1和6不考虑社区非药物干预措施(NPIs),代表自然流行情景。情景2-4评估不同非药物干预措施对原始新冠病毒毒株的影响。情景1-4和6-8比较相同措施对不同毒株的效果。情景5模拟疫情广泛传播后实施非药物干预措施的效果。比较情景4和9,分析高等级非药物干预措施与动态清零的效果。通过分析达到病例峰值的时间和病例最大数量,我们能够计算城市社区防控措施(非药物干预措施)的有效性以及疫苗接种对疾病趋势的影响。基于我们对现实世界疫情期间不同管控区域社会活动限制程度的研究,我们将非药物干预措施分为三个等级,随着低、中、高风险区域分别得到管控,从等级1到等级3管控越来越严格。
在模拟情景1-5和9中,流行毒株为奥密克戎且易感人群接种三剂疫苗,发现实施一级管控的情景2的实时病例峰值比未采取管控措施的情景1降低了18.19%,实施二级管控的情景3降低了38.94%。一级和二级管控虽不能阻断传播,但显著降低了峰值发病率并推迟了峰值时间。在情景5中,即使初始病例数较多,实施三级管控仍能迅速控制疫情,但需要较长时间。然而,奥密克戎毒株的重症率较低,即使未实施管控措施,A市现有的床位在很大程度上也能应对。分析情景4和9,三级社区管控和三区动态清零在阻断疫情传播方面同样成功。在模拟情景6-8中,流行毒株为原始新冠病毒毒株,只有三级社区管控能够迅速扑灭疫情。若不加控制,疫情将很严重,表现为高峰值和巨大的医疗压力。尽管二级管控分别将实时发病率和新增感染峰值降低了39.81%和61.33%,并将峰值推迟了55天和52天,但高重症率仍可能使医疗系统不堪重负。
防控效果与等级、时机和病毒特性有关。三级管控和动态清零措施可在疫情暴发早期阻断社区传播。在疫情大流行期间,必须根据病毒状况和防控成本实施不同的非药物干预措施,并确保医疗资源足以维持医疗秩序。