Bhanot Gyan, DeLisi Charles
Department of Physics and Astronomy, Rutgers University, Piscataway, NJ, 08854, USA; Department of Molecular Biology and Biochemistry, Rutgers University, Piscataway, NJ, 08854, USA; Rutgers Cancer Institute of New Jersey, New Brunswick, NJ, 08903, USA.
Moores Cancer Center, University of California San Diego, La Jolla, CA 92103, USA.
Res Sq. 2020 Oct 29:rs.3.rs-97697. doi: 10.21203/rs.3.rs-97697/v1.
As the SARS-Cov-2/Covid-19 pandemic continues to ravage the world, it is important to understanding the characteristics of its spread and possible correlates for control to develop strategies of response.
Here we show how a simple Susceptible-Infective-Recovered (SIR) model applied to data for eight European countries and the United Kingdom (UK) can be used to forecast the descending limb (post-peak) of confirmed cases and deaths as a function of time, and predict the duration of the pandemic once it has peaked, by estimating and fixing parameters using only characteristics of the ascending limb and the magnitude of the first peak.
The predicted and actual case fatality ratio, or number of deaths per million population from the start of the pandemic to when daily deaths number less than five for the first time, was lowest in Norway (predicted: 44 ± 5 deaths/million; actual: 36 deaths/million) and highest for the United Kingdom (predicted: 578 +/- 65 deaths/million; actual 621 deaths/million). The inferred pandemic characteristics separated into two distinct groups: those that are largely invariant across countries, and those that are highly variable. Among the former is the infective period, T = 16.3 ± 2.7 days, the average time between contacts, T = 3.8+/- 0.5 days and the average number of contacts while infective R = 4.4 +/- 0.5. In contrast, there is a highly variable time lag T between the peak in the daily number of confirmed cases and the peak in the daily number of deaths, ranging from lows of T = 2,4 days for Denmark and Italy respectively, to highs of T = 12, 15 for Germany and Norway respectively. The mortality fraction, or ratio of deaths to confirmed cases, was also highly variable, ranging from low values 3%, 5% and 5% for Norway, Denmark and Germany respectively, to high values of 18%, 20% and 21% for Sweden, France, and the UK respectively. The probability of mortality rather than recovery was a significant correlate of the duration of the pandemic, defined as the time from 12/31/2019 to when the number of daily deaths fell below 5. Finally, we observed a small but detectable effect of average temperature on the probability of infection per contact, with higher temperatures associated with lower infectivity.
Our simple model captures the dynamics of the initial stages of the pandemic, from its exponential beginning to the first peak and beyond, with remarkable precision. As with all epidemiological analyses, unanticipated behavioral changes will result in deviations between projection and observation. This is abundantly clear for the current pandemic. Nonetheless, accurate short-term projections are possible, and the methodology we present is a useful addition to the epidemiologist's armamentarium. Our predictions assume that control measures such as lockdown, social distancing, use of masks etc. remain the same post-peak as before peak. Consequently, deviations from our predictions are a measure of the extent to which loosening of control measures have impacted case-loads and deaths since the first peak and initial decline in daily cases and deaths. Our findings suggest that the two key parameters to control and reduce the impact of a developing pandemic are the infective period and the mortality fraction, which are achievable by early case identification, contact tracing and quarantine (which would reduce the former) and improving quality of care for identified cases (which would reduce the latter).
随着严重急性呼吸综合征冠状病毒2(SARS-CoV-2)/冠状病毒病2019(COVID-19)大流行继续肆虐全球,了解其传播特征以及可能的控制相关因素对于制定应对策略至关重要。
在此,我们展示了如何将一个简单的易感-感染-康复(SIR)模型应用于八个欧洲国家和英国的数据,通过仅利用上升阶段的特征和第一个峰值的大小来估计和确定参数,从而用于预测确诊病例和死亡人数的下降阶段(峰值后)随时间的变化,并预测大流行达到峰值后的持续时间。
预测的和实际的病死率,即从大流行开始到每日死亡人数首次少于5人时每百万人口的死亡数,在挪威最低(预测:44±5人/百万;实际:36人/百万),在英国最高(预测:578±65人/百万;实际:621人/百万)。推断出的大流行特征分为两个不同的组:在各国基本不变的特征和高度可变的特征。前者包括感染期,T = 16.3±2.7天,平均接触间隔时间,T = 3.8±0.5天,以及感染期间的平均接触次数,R = 4.4±0.5。相比之下,确诊病例每日数量峰值与死亡病例每日数量峰值之间存在高度可变的时间滞后T,范围从丹麦和意大利分别低至T = 2.4天,到德国和挪威分别高至T = 12天、15天。死亡率,即死亡人数与确诊病例数的比率,也高度可变,范围从挪威、丹麦和德国分别低至3%、5%和5%,到瑞典、法国和英国分别高至18%、20%和21%。死亡而非康复的概率是大流行持续时间的一个显著相关因素,大流行持续时间定义为从2019年12月31日到每日死亡人数降至5人以下的时间。最后,我们观察到平均温度对每次接触感染概率有微小但可检测到的影响,温度越高,传染性越低。
我们的简单模型以惊人的精度捕捉了大流行初始阶段的动态,从其指数增长开始到第一个峰值及之后。与所有流行病学分析一样,意外的行为变化将导致预测与观察之间出现偏差。对于当前的大流行来说,这一点非常明显。尽管如此,准确的短期预测是可能的,并且我们提出的方法是流行病学家工具库中的一个有用补充。我们的预测假设诸如封锁、社交距离、戴口罩等控制措施在峰值后与峰值前保持相同。因此,与我们预测的偏差衡量了自第一个峰值以及每日病例和死亡人数最初下降以来,控制措施放松对病例数和死亡人数的影响程度。我们的研究结果表明,控制和减少正在发展的大流行影响的两个关键参数是感染期和死亡率,这可以通过早期病例识别、接触者追踪和隔离(这将降低前者)以及提高确诊病例的护理质量(这将降低后者)来实现。