Horn Abigail L, Jiang Lai, Washburn Faith, Hvitfeldt Emil, de la Haye Kayla, Nicholas William, Simon Paul, Pentz Maryann, Cozen Wendy, Sood Neeraj, Conti David V
medRxiv. 2020 Dec 14:2020.12.11.20209627. doi: 10.1101/2020.12.11.20209627.
Health disparities have emerged with the COVID-19 epidemic because the risk of exposure to infection and the prevalence of risk factors for severe outcomes given infection vary within and between populations. However, estimated epidemic quantities such as rates of severe illness and death, the case fatality rate (CFR), and infection fatality rate (IFR), are often expressed in terms of aggregated population-level estimates due to the lack of epidemiological data at the refined subpopulation level. For public health policy makers to better address the pandemic, stratified estimates are necessary to investigate the potential outcomes of policy scenarios targeting specific subpopulations.
We develop a framework for using available data on the prevalence of COVID-19 risk factors (age, comorbidities, BMI, smoking status) in subpopulations, and epidemic dynamics at the population level and stratified by age, to estimate subpopulation-stratified probabilities of severe illness and the CFR (as deaths over observed infections) and IFR (as deaths over estimated total infections) across risk profiles representing all combinations of risk factors including age, comorbidities, obesity class, and smoking status. A dynamic epidemic model is integrated with a relative risk model to produce time-varying subpopulation-stratified estimates. The integrated model is used to analyze dynamic outcomes and parameters by population and subpopulation, and to simulate alternate policy scenarios that protect specific at-risk subpopulations or modify the population-wide transmission rate. The model is calibrated to data from the Los Angeles County population during the period March 1 - October 15 2020.
We estimate a rate of 0.23 (95% CI: 0.13,0.33) of infections observed before April 15, which increased over the epidemic course to 0.41 (0.11,0.69). Overall population-average IFR( ) estimates for LAC peaked at 0.77% (0.38%,1.15%) on May 15 and decreased to 0.55% (0.24%,0.90%) by October 15. The population-average IFR( ) stratified by age group varied extensively across subprofiles representing each combination of the additional risk factors considered (comorbidities, BMI, smoking). We found median IFRs ranging from 0.009%-0.04% in the youngest age group (0-19), from 0.1%-1.8% for those aged 20-44, 0.36%-4.3% for those aged 45-64, and 1.02%-5.42% for those aged 65+. In the group aged 65+ for which the rate of unobserved infections is likely much lower, we find median CFRs in the range 4.4%-23.45%. The initial societal lockdown period avoided overwhelming healthcare capacity and greatly reduced the observed death count. In comparative scenario analysis, alternative policies in which the population-wide transmission rate is reduced to a moderate and sustainable level of non-pharmaceutical interventions (NPIs) would not have been sufficient to avoid overwhelming healthcare capacity, and additionally would have exceeded the observed death count. Combining the moderate NPI policy with stringent protection of the at-risk subpopulation of individuals 65+ would have resulted in a death count similar to observed levels, but hospital counts would have approached capacity limits.
The risk of severe illness and death of COVID-19 varies tremendously across subpopulations and over time, suggesting that it is inappropriate to summarize epidemiological parameters for the entire population and epidemic time period. This includes variation not only across age groups, but also within age categories combined with other risk factors analyzed in this study (comorbidities, obesity status, smoking). In the policy analysis accounting for differences in IFR across risk groups in comparing the control of infections and protection of higher risk groups, we find that the strict initial lockdown period in LAC was effective because it both reduced overall transmission and protected individuals at greater risk, resulting in preventing both healthcare overload and deaths. While similar numbers of deaths as observed in LAC could have been achieved with a more moderate NPI policy combined with greater protection of individuals 65+, this would have come at the expense of overwhelming the healthcare system. In anticipation of a continued rise in cases in LAC this winter, policy makers need to consider the trade offs of various policy options on the numbers of the overall population that may become infected, severely ill, and that die when considering policies targeted at subpopulations at greatest risk of transmitting infection and at greatest risk for developing severe outcomes.
新冠疫情暴露出健康差异问题,因为不同人群内部及之间,感染暴露风险以及感染后出现严重后果的风险因素患病率各不相同。然而,由于缺乏精细亚人群层面的流行病学数据,诸如重症率、死亡率、病死率(CFR)和感染死亡率(IFR)等疫情估计数据,往往以总体人群层面的汇总估计值来表示。为使公共卫生政策制定者更好应对疫情,有必要进行分层估计,以研究针对特定亚人群的政策情景可能产生的结果。
我们构建了一个框架,利用亚人群中新冠风险因素(年龄、合并症、体重指数、吸烟状况)患病率的现有数据,以及总体层面且按年龄分层的疫情动态数据,来估计亚人群分层的重症概率、病死率(即观察到的感染病例中的死亡数)和感染死亡率(即估计的总感染病例中的死亡数),涵盖包括年龄、合并症、肥胖等级和吸烟状况等所有风险因素组合的风险概况。将动态疫情模型与相对风险模型相结合,以生成随时间变化的亚人群分层估计值。该综合模型用于按总体和亚人群分析动态结果及参数,并模拟保护特定高危亚人群或改变总体传播率的替代政策情景。该模型根据2020年3月1日至10月15日期间洛杉矶县人群的数据进行校准。
我们估计4月15日前观察到的感染率为0.23(95%置信区间:0.13,0.33),在疫情过程中升至0.41(0.11,0.69)。洛杉矶县总体人群平均感染死亡率(IFR)估计值在5月15日达到峰值0.77%(0.38%,1.15%),到10月15日降至0.55%(0.24%,0.90%)。按年龄组分层的总体人群平均感染死亡率(IFR)在代表所考虑的其他风险因素(合并症、体重指数、吸烟)每种组合的亚概况中差异很大。我们发现最年轻年龄组(0 - 19岁)的感染死亡率中位数在0.009% - 0.04%之间,20 - 44岁人群为0.1% - 1.8%,45 - 64岁人群为0.36% - 4.3%,65岁及以上人群为1.02% - 5.42%。在65岁及以上人群中,未观察到的感染率可能低得多,我们发现病死率中位数在4.4% - 23.45%范围内。最初的社会封锁期避免了医疗能力不堪重负,并大幅减少了观察到的死亡人数。在比较情景分析中,将总体传播率降低到适度且可持续的非药物干预(NPI)水平的替代政策不足以避免医疗能力不堪重负,而且还会超过观察到的死亡人数。将适度的NPI政策与对65岁及以上高危亚人群的严格保护相结合,可能会使死亡人数与观察到的水平相似,但医院收治人数将接近容量极限。
新冠疫情的重症和死亡风险在亚人群中以及随时间变化差异巨大,这表明总结整个人口和疫情时间段的流行病学参数是不合适的。这种差异不仅存在于不同年龄组之间,还存在于本研究分析的与其他风险因素(合并症、肥胖状况、吸烟)相结合的年龄类别内部。在政策分析中,考虑到不同风险组感染死亡率的差异来比较感染控制和高危组保护情况时,我们发现洛杉矶县最初的严格封锁期是有效的,因为它既降低了总体传播,又保护了高风险个体,从而防止了医疗系统不堪重负和死亡情况的发生。虽然通过更适度的NPI政策结合对65岁及以上人群的更多保护也可能实现与洛杉矶县观察到的死亡人数相似的结果,但这将以医疗系统不堪重负为代价。鉴于预计今年冬天洛杉矶县病例数将持续上升,政策制定者在考虑针对传播感染风险最高和出现严重后果风险最高的亚人群的政策时,需要权衡各种政策选项对可能感染、重症和死亡的总体人口数量的影响。