论文标题
COVID-19:估计西班牙的传播解决概率模型的反问题
COVID-19: Estimating spread in Spain solving an inverse problem with a probabilistic model
论文作者
论文摘要
我们介绍了一种新的概率模型,以估算新型SARS-COV-2病毒在地区或国家 /地区的实际传播。我们的模型通过逆问题根据概率模型模拟了每个人在人群中的行为。我们估计使用死亡率记录的实际人数和感染者的实际数量。此外,该模型是动态的,因为它考虑了解决逆问题时引入的策略度量。在西班牙获得的结果具有特殊的实际相关性:在最坏情况下,受感染者的数量可能比西班牙政府在4月26美元的$ 26 $ th $的数据高17美元。假设统计中反映的死亡人数正确,则$ 9.8 $的人口可能被污染或已经从西班牙受影响最大的地区之一的马德里病毒中恢复过来。但是,如果我们假设死亡人数的数量是官方人数的两倍,那么感染的数量可能已达到19.5美元\%$。在加利西亚,效果最少的区域之一,感染的数量未达到$ 2.5 \%$。根据我们的发现,我们可以:i)估计如果我们取消隔离区,则在秋天之前发生新爆发的风险; ii)可能知道每个地区人口的免疫程度; iii)根据人群中感染或恢复的个体的数量,预测或模拟将来将在将来引入的政策的效果。
We introduce a new probabilistic model to estimate the real spread of the novel SARS-CoV-2 virus along regions or countries. Our model simulates the behavior of each individual in a population according to a probabilistic model through an inverse problem; we estimate the real number of recovered and infected people using mortality records. In addition, the model is dynamic in the sense that it takes into account the policy measures introduced when we solve the inverse problem. The results obtained in Spain have particular practical relevance: the number of infected individuals can be $17$ times higher than the data provided by the Spanish government on April $26$ $th$ in the worst-case scenario. Assuming that the number of fatalities reflected in the statistics is correct, $9.8$ percent of the population may be contaminated or have already been recovered from the virus in Madrid, one of the most affected regions in Spain. However, if we assume that the number of fatalities is twice as high as the official numbers, the number of infections could have reached $19.5\%$. In Galicia, one of the regions where the effect has been the least, the number of infections does not reach $2.5 \%$ . Based on our findings, we can: i) estimate the risk of a new outbreak before Autumn if we lift the quarantine; ii) may know the degree of immunization of the population in each region; and iii) forecast or simulate the effect of the policies to be introduced in the future based on the number of infected or recovered individuals in the population.