Department of Mathematics, Faculty of Mathematics and Natural Sciences, Universitas Indonesia, Depok 16424, Indonesia.
Math Biosci Eng. 2024 Mar 1;21(4):4956-4988. doi: 10.3934/mbe.2024219.
This study developed a deterministic transmission model for the coronavirus disease of 2019 (COVID-19), considering various factors such as vaccination, awareness, quarantine, and treatment resource limitations for infected individuals in quarantine facilities. The proposed model comprised five compartments: susceptible, vaccinated, quarantined, infected, and recovery. It also considered awareness and limited resources by using a saturated function. Dynamic analyses, including equilibrium points, control reproduction numbers, and bifurcation analyses, were conducted in this research, employing analytics to derive insights. Our results indicated the possibility of an endemic equilibrium even if the reproduction number for control was less than one. Using incidence data from West Java, Indonesia, we estimated our model parameter values to calibrate them with the real situation in the field. Elasticity analysis highlighted the crucial role of contact restrictions in reducing the spread of COVID-19, especially when combined with community awareness. This emphasized the analytics-driven nature of our approach. We transformed our model into an optimal control framework due to budget constraints. Leveraging Pontriagin's maximum principle, we meticulously formulated and solved our optimal control problem using the forward-backward sweep method. Our experiments underscored the pivotal role of vaccination in infection containment. Vaccination effectively reduces the risk of infection among vaccinated individuals, leading to a lower overall infection rate. However, combining vaccination and quarantine measures yields even more promising results than vaccination alone. A second crucial finding emphasized the need for early intervention during outbreaks rather than delayed responses. Early interventions significantly reduce the number of preventable infections, underscoring their importance.
本研究开发了一种针对 2019 年冠状病毒病(COVID-19)的确定性传播模型,考虑了各种因素,如接种疫苗、意识、隔离以及隔离设施中受感染个体的治疗资源限制。所提出的模型包括五个部分:易感者、接种者、隔离者、感染者和康复者。它还通过使用饱和函数考虑了意识和有限的资源。本研究进行了动态分析,包括平衡点、控制繁殖数和分岔分析,并利用分析方法得出了一些见解。我们的研究结果表明,即使控制繁殖数小于一,也可能存在地方病平衡点。我们利用印度尼西亚西爪哇的数据对我们的模型参数进行了估计,以校准模型与实际情况。弹性分析强调了接触限制在减少 COVID-19 传播方面的关键作用,特别是在结合社区意识的情况下。这突出了我们方法的分析驱动性质。由于预算限制,我们将模型转换为最优控制框架。利用庞特里亚金极大值原理,我们使用前向-后向扫描法仔细地对我们的最优控制问题进行了公式化和求解。我们的实验强调了接种疫苗在控制感染方面的关键作用。接种疫苗可有效降低接种者感染的风险,从而降低总体感染率。但是,接种疫苗和隔离措施相结合的效果比单独接种疫苗更好。第二个关键发现强调了在疫情爆发期间进行早期干预而不是延迟响应的必要性。早期干预可显著减少可预防感染的数量,凸显了其重要性。