Türkiye'de CoronaVac ile Kovid-19 Aşılama Başlangıcında Sars-Cov-2 Yayılımının Matematiksel Modellenmesi

Ersin Şener, Ümmü ŞAHİN ŞENER
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Abstract

The Sars-CoV-2 virus, first detected in Wuhan, China, became a global crisis that affected the entire world and was declared a pandemic by the World Health Organization (WHO) in March 2020. The most basic protective measure in the fight against pandemics facing humanity is vaccination. From this point of view, data is collected between January 13 and February 11, 2021 by taking the number of daily cases, deaths and recovered patients in Türkiye. During this period, vaccination against Covid-19 with Sinovac's CoronaVac vaccine is started in Türkiye. Mathematical predictive models of the observed values are constructed and compared using polynomial regression (up to the 3rd degree) and nonlinear regression, i.e., curve fitting methods, and SIR (Susceptible-Infected-Removed), which is a system of ordinary differential equations (ODEs). The efficiencies of these prediction models are tested, validated, and the most effective mathematical prediction models are proposed. The values of root mean square error (RMSE) and mean absolute percentage error (MAPE) are used as performance measures to compare the methods. The proposed prediction models are also used for forecasting. The number of new cases occurring each day is predicted using the time-dependent equations of the SIR method, which are solved using the Euler method. It is found that the SIR method is quite successful in predicting the observed values compared to the other methods, but the QR method are given more successful results in predicting the total number of deaths
土耳其 Covid-19 疫苗接种开始时 Sars-Cov-2 传播的数学建模
首次在中国武汉发现的 Sars-CoV-2 病毒成为影响全世界的全球性危机,世界卫生组织(WHO)于 2020 年 3 月宣布其为大流行病。人类在对抗大流行病的过程中,最基本的保护措施就是接种疫苗。从这一角度出发,我们收集了 2021 年 1 月 13 日至 2 月 11 日期间土耳其的每日病例数、死亡数和康复患者数。在此期间,土耳其开始使用 Sinovac 的 CoronaVac 疫苗接种 Covid-19 疫苗。使用多项式回归(最高三度)和非线性回归(即曲线拟合方法)以及 SIR(易感者-感染者-移除者)(这是一个常微分方程系统)构建并比较了观察值的数学预测模型。对这些预测模型的效率进行了测试和验证,并提出了最有效的数学预测模型。均方根误差 (RMSE) 和平均绝对百分比误差 (MAPE) 值被用作比较各种方法的性能指标。提出的预测模型还可用于预测。使用 SIR 方法的时间相关方程预测每天发生的新病例数,该方程使用欧拉方法求解。结果发现,与其他方法相比,SIR 方法在预测观测值方面相当成功,但 QR 方法在预测死亡总人数方面取得了更成功的结果。
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