Department of Computer and Information Science, University of Macau, Taipa, Macau SAR 519000, China.
Chongqing Industry & Trade Polytechnic, Chongqing 408000, China.
Int J Environ Res Public Health. 2022 Sep 2;19(17):10959. doi: 10.3390/ijerph191710959.
The conversion rate between asymptomatic infections and reported/unreported symptomatic infections is a very sensitive parameter for model variables that spread COVID-19. This is important information for follow-up use in screening, prediction, prognostics, contact tracing, and drug development for the COVID-19 pandemic. The model described here suggests that there may not be enough researchers to solve all of these problems thoroughly and effectively, and it requires careful selection of what we are doing and rapid sharing of results and models and optimizing modeling simulations with value to reduce the impact of COVID-19. Exploring simulation modeling will help decision makers make the most informed decisions. In order to fight against the "Delta" virus, the establishment of a line of defense through all-people testing (APT) is not only an effective method summarized from past experience but also one of the best means to effectively cut the chain of epidemic transmission. The effect of large-scale testing has been fully verified in the international community. We developed a practical dynamic infectious disease model-SETPG (A + I) RD + APT by considering the effects of the all-people test (APT). The model is useful for studying effects of screening measures and providing a more realistic modelling with all-people-test strategies, which require everybody in a population to be tested for infection. In prior work, a total of 370 epidemic cases were collected. We collected three kinds of known cases: the cumulative number of daily incidences, daily cumulative recovery, and daily cumulative deaths in Hong Kong and the United States between 22 January 2020 and 13 November 2020 were simulated. In two essential strategies of the integrated SETPG (A + I) RD + APT model, comparing the cumulative number of screenings in derivative experiments based on daily detection capability and tracking system application rate, we evaluated the performance of the timespan required for the basic regeneration number (0) and real-time regeneration number (0) to reach 1; the optimal policy of each experiment is available, and the screening effect is evaluated by screening performance indicators. with the binary encoding screening method, the number of screenings for the target population is 8667 in HK and 1,803,400 in the U.S., including 6067 asymptomatic cases in HK and 1,262,380 in the U.S. as well as 2599 cases of mild symptoms in HK and 541,020 in the U.S.; there were also 8.25 days of screening timespan in HK and 9.25 days of screening timespan required in the U.S. and a daily detectability of 625,000 cases in HK and 6,050,000 cases in the U.S. Using precise tracking technology, number of screenings for the target population is 6060 cases in HK and 1,766,420 cases in the U.S., including 4242 asymptomatic cases in HK and 1,236,494 cases in the U.S. as well as 1818 cases of mild symptoms in HK and 529,926 cases in the U.S. Total screening timespan (TS) is 8.25~9.25 days. According to the proposed infectious dynamics model that adapts to the all-people test, all of the epidemic cases were reported for fitting, and the result seemed more reasonable, and epidemic prediction became more accurate. It adapted to densely populated metropolises for APT on prevention.
无症状感染和报告/未报告有症状感染之间的转化率是 COVID-19 传播模型变量的一个非常敏感的参数。这对于后续用于 COVID-19 大流行的筛查、预测、预后、接触者追踪和药物开发的研究非常重要。本文描述的模型表明,可能没有足够的研究人员来彻底有效地解决所有这些问题,因此需要仔细选择我们正在做的事情,并迅速分享结果和模型,并通过优化建模模拟来减少 COVID-19 的影响。探索模拟模型将帮助决策者做出最明智的决策。为了对抗“德尔塔”病毒,通过全民检测(APT)建立防线不仅是从过去经验中总结出来的有效方法,也是有效切断疫情传播链的最佳手段之一。在国际社会,大规模检测的效果已经得到充分验证。我们通过考虑全民检测(APT)的影响,开发了一种实用的动态传染病模型-SETPG(A + I)RD + APT。该模型可用于研究筛选措施的效果,并提供更现实的建模方法,包括对所有人进行感染检测的全民检测策略。在之前的工作中,共收集了 370 例疫情病例。我们收集了三种已知病例:香港和美国 2020 年 1 月 22 日至 2020 年 11 月 13 日期间的每日累计发病率、每日累计康复和每日累计死亡的累计数据。在综合 SETPG(A + I)RD + APT 模型的两个基本策略中,基于每日检测能力和跟踪系统应用率的衍生实验,比较累计筛查次数,评估基本再生数(0)和实时再生数(0)达到 1 的时间跨度所需的时间;每个实验都有最佳策略,并通过筛查性能指标评估筛查效果。使用二进制编码筛查方法,目标人群的筛查次数为香港的 8667 次和美国的 1803400 次,其中包括香港的 6067 例无症状病例和美国的 1262380 例以及香港的 2599 例轻度症状病例和美国的 541020 例;香港的筛查时间跨度为 8.25 天,美国的筛查时间跨度为 9.25 天,香港的每日检测能力为 625000 例,美国的每日检测能力为 6050000 例。利用精确的跟踪技术,目标人群的筛查次数为香港的 6060 例和美国的 1766420 例,其中包括香港的 4242 例无症状病例和美国的 1236494 例以及香港的 1818 例轻度症状病例和美国的 529926 例。总筛查时间跨度(TS)为 8.25-9.25 天。根据适应全民检测的传染病动力学模型,所有的疫情病例都被报告进行拟合,结果似乎更合理,疫情预测也变得更加准确。它适应了人口稠密的大都市的预防 APT。