Huang Norden E, Qiao Fangli, Wang Qian, Qian Hong, Tung Ka-Kit
Data Analysis Laboratory, First Institute of Oceanography, Qingdao 266061, People's Republic of China.
Shanghai Jiao Tong University, Shanghai 200240, People's Republic of China.
Proc Math Phys Eng Sci. 2021 Oct;477(2254):20210551. doi: 10.1098/rspa.2021.0551. Epub 2021 Oct 13.
For epidemics such as COVID-19, with a significant population having asymptomatic, untested infection, model predictions are often not compatible with data reported only for the cases confirmed by laboratory tests. Additionally, most compartmental models have instantaneous recovery from infection, contrary to observation. Tuning such models with observed data to obtain the unknown infection rate is an ill-posed problem. Here, we derive from the first principle an epidemiological model with delay between the newly infected () and recovered () populations. To overcome the challenge of incompatibility between model and case data, we solve for the ratios of the observed quantities and show that log(()/()) should follow a straight line. This simple prediction tool is accurate in hindcasts verified using data for China and Italy. In traditional epidemiology, an epidemic wanes when much of the population is infected so that 'herd immunity' is achieved. For a highly contagious and deadly disease, herd immunity is not a feasible goal without human intervention or vaccines. Even before the availability of vaccines, the epidemic was suppressed with social measures in China and South Korea with much less than 5% of the population infected. Effects of social behaviour should be and are incorporated in our model.
对于像新冠疫情这样存在大量无症状、未经检测感染人群的流行病,模型预测往往与仅针对实验室确诊病例报告的数据不相符。此外,大多数 compartmental 模型假设感染后可立即康复,这与实际观察情况相悖。用观测数据调整此类模型以获取未知感染率是一个不适定问题。在此,我们从第一原理推导出一个在新感染人群()和康复人群()之间存在延迟的流行病学模型。为克服模型与病例数据不匹配的挑战,我们求解观测数量的比率,并表明 log(()/()) 应呈直线关系。这个简单的预测工具在使用中国和意大利数据进行的事后预测中是准确的。在传统流行病学中,当大部分人群被感染从而实现“群体免疫”时,疫情就会消退。对于一种高传染性和致命性疾病,在没有人为干预或疫苗的情况下,群体免疫并非可行目标。甚至在疫苗可用之前,中国和韩国通过社会措施抑制了疫情,感染人口不到 5%。社会行为的影响应该且已经被纳入我们的模型。