黎巴嫩COVID-19发病率预测分析:预测未来流行病学趋势以制定更有效的控制方案

S. E. Falou, F. Trad
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引用次数: 5

摘要

自2019冠状病毒病疫情开始以来,各国政府一直在试图减轻其对本国公民和国家的影响,主要方式是通过非药物干预措施(NPIs),从普遍掩蔽和社会隔离到全球封锁。鉴于这种病毒仍然是新的,政府并不总是知道在采取具体措施后会发生什么,但理想情况下,如果各国事先知道其行动的效果,他们总是会选择最适合其公民的方法,这就是我们从研究中寻求的。我们的目标是概念化一个系统,帮助政府在大流行期间做出正确的决定。为此,我们构建了一个模拟器来模拟COVID-19在虚拟国家的传播——我们可以在不同的时间应用不同的npi——使用运行在蒙特卡洛算法之上的基于代理的模型。我们的模拟器首先在概念(例如平坦曲线和第二波场景)上进行了验证,以确保它反映了现实的COVID-19方面。然后,它被用来模拟黎巴嫩的情况,并预测开放学校和大学对大流行病形势的影响,因为黎巴嫩教育部计划从2021年4月21日开始这样做。我们的验证证明,这种原型对黎巴嫩这样的国家在大流行期间做出更好的决策非常有益。
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Forecast Analysis of the COVID-19 Incidence in Lebanon: Prediction of Future Epidemiological Trends to Plan More Effective Control Programs
Since the beginning of the COVID-19 epidemic, governments have been attempting to mitigate its impact on their citizens and countries, and the main way of doing this was through Non-Pharmaceutical Interventions (NPIs) that ranged from universal masking and social isolation to worldwide lockdowns. Given that the virus is still new, a government does not always know what to expect after applying a specific measure, but ideally, if countries knew beforehand the effect of their actions, they would always choose what works best for their citizens, and this is what we seek from our study. Our goal is to conceptualize a system that helps governments make the right decisions during a pandemic. For this purpose, we built a simulator to simulate the spread of COVID-19 in a virtual country – where we can apply different NPIs at different times – using an Agent-Based Model that runs on top of the Monte Carlo Algorithm. Our Simulator was first validated on concepts (e.g. Flattening the Curve and Second Wave scenario) to make sure it reflects realistic COVID-19 aspects. Then, it was used to simulate the case of Lebanon, and forecast the effect of opening schools and universities on the pandemic situation since the Lebanese Ministry of Education was planning to do so starting from 21 April 2021. Our validations prove that this prototype can be very beneficial for a country like Lebanon to carry a better decision making during the pandemic.
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