Ma Yifei, Xu Shujun, An Qi, Qin Mengxia, Li Sitian, Lu Kangkang, Li Jiantao, Lei Lijian, He Lu, Yu Hongmei, Xie Jun
School of Public Health, Shanxi Medical University, Taiyuan 030001, China.
School of Management, Shanxi Medical University, Taiyuan 030001, China.
J Biosaf Biosecur. 2022 Dec;4(2):105-113. doi: 10.1016/j.jobb.2022.06.002. Epub 2022 Jun 20.
It's urgently needed to assess the COVID-19 epidemic under the "dynamic zero-COVID policy" in China, which provides a scientific basis for evaluating the effectiveness of this strategy in COVID-19 control. Here, we developed a time-dependent susceptible-exposed-asymptomatic-infected-quarantined-removed (SEAIQR) model with stage-specific interventions based on recent Shanghai epidemic data, considering a large number of asymptomatic infectious, the changing parameters, and control procedures. The data collected from March 1st, 2022 to April 15th, 2022 were used to fit the model, and the data of subsequent 7 days and 14 days were used to evaluate the model performance of forecasting. We then calculated the effective regeneration number ( ) and analyzed the sensitivity of different measures scenarios. Asymptomatic infectious accounts for the vast majority of the outbreaks in Shanghai, and Pudong is the district with the most positive cases. The peak of newly confirmed cases and newly asymptomatic infectious predicted by the SEAIQR model would appear on April 13th, 2022, with 1963 and 28,502 cases, respectively, and zero community transmission may be achieved in early to mid-May. The prediction errors for newly confirmed cases were considered to be reasonable, and newly asymptomatic infectious were considered to be good between April 16th to 22nd and reasonable between April 16th to 29th. The final ranges of cumulative confirmed cases and cumulative asymptomatic infectious predicted in this round of the epidemic were 26,477 ∼ 47,749 and 402,254 ∼ 730,176, respectively. At the beginning of the outbreak, was 6.69. Since the implementation of comprehensive control, showed a gradual downward trend, dropping to below 1.0 on April 15th, 2022. With the early implementation of control measures and the improvement of quarantine rate, recovery rate, and immunity threshold, the peak number of infections will continue to decrease, whereas the earlier the control is implemented, the earlier the turning point of the epidemic will arrive. The proposed time-dependent SEAIQR dynamic model fits and forecasts the epidemic well, which can provide a reference for decision making of the "dynamic zero-COVID policy".
迫切需要对中国“动态清零”政策下的新冠疫情进行评估,这为评估该策略在新冠疫情防控中的有效性提供了科学依据。在此,我们基于近期上海疫情数据,考虑大量无症状感染者、变化的参数和防控措施,开发了一个具有阶段特异性干预措施的时间依赖型易感-暴露-无症状感染-确诊-隔离-移除(SEAIQR)模型。使用2022年3月1日至2022年4月15日收集的数据对模型进行拟合,并使用随后7天和14天的数据评估模型的预测性能。然后我们计算了有效再生数( )并分析了不同措施情景的敏感性。无症状感染者占上海疫情爆发的绝大多数,浦东新区是确诊病例最多的区。SEAIQR模型预测的新增确诊病例和新增无症状感染者峰值将出现在2022年4月13日,分别为1963例和28502例,5月上旬至中旬可能实现社区传播为零。新增确诊病例的预测误差被认为是合理的,新增无症状感染者在4月16日至22日期间被认为预测良好,在4月16日至29日期间被认为合理。本轮疫情预测的累计确诊病例和累计无症状感染者的最终范围分别为26477 ∼ 47749例和402254 ∼ 730176例。疫情爆发初期, 为6.69。自实施全面防控以来, 呈逐渐下降趋势,在2022年4月15日降至1.0以下。随着防控措施的早期实施以及隔离率、康复率和免疫阈值的提高,感染峰值数量将持续下降,而防控实施得越早,疫情转折点就会越早到来。所提出的时间依赖型SEAIQR动态模型对疫情拟合和预测效果良好,可为“动态清零”政策的决策提供参考。