Department of Mathematics, Faculty of Science, Erciyes University, Kayseri, Turkey.
Department of Mathematics, College of Engineering, Mathematics and Physical Sciences, University of Exeter, TR10, Cornwall, UK; Department of Mathematics and Computer Sciences, Necmettin Erbakan University, 42090, Konya, Turkey.
Comput Biol Med. 2022 Feb;141:105044. doi: 10.1016/j.compbiomed.2021.105044. Epub 2021 Nov 23.
In the present paper, interactions between COVID-19 and diabetes are investigated using real data from Turkey. Firstly, a fractional order pandemic model is developed both to examine the spread of COVID-19 and its relationship with diabetes. In the model, diabetes with and without complications are adopted by considering their relationship with the quarantine strategy. Then, the existence and uniqueness of solution are examined by using the fixed point theory. The dynamic behaviors of the equilibria and their stability analysis are studied. What is more, with the help of least-squares curve fitting technique (LSCFT), the fitting of the parameters is implemented to predict the direction of COVID-19 by using more accurately generated parameters. By trying to minimize the mean absolute relative error between the plotted curve for the infected class solution and the actual data of COVID-19, the optimal values of the parameters used in numerical simulations are acquired successfully. In addition, the numerical solution of the mentioned model is achieved through the Adams-Bashforth-Moulton predictor-corrector method. Meanwhile, the sensitivity analysis of the parameters according to the reproduction number is given. Moreover, numerical simulations of the model are obtained and the biological interpretations explaining the effects of model parameters are performed. Finally, in order to point out the advantages of the fractional order modeling, the memory trace and hereditary traits are taken into consideration. By doing so, the effect of the different fractional order derivatives on the COVID-19 pandemic and diabetes are investigated.
本文利用来自土耳其的真实数据研究了 COVID-19 与糖尿病之间的相互作用。首先,建立了一个分数阶大流行模型,以研究 COVID-19 的传播及其与糖尿病的关系。在该模型中,通过考虑糖尿病与隔离策略的关系,采用了有并发症和无并发症的糖尿病。然后,利用不动点理论检验了解的存在性和唯一性。研究了平衡点的动态行为及其稳定性分析。此外,借助最小二乘曲线拟合技术(LSCFT),对参数进行拟合,以更准确地生成参数来预测 COVID-19 的发展方向。通过尝试最小化感染类解的拟合曲线与 COVID-19 实际数据之间的平均绝对相对误差,成功获得了数值模拟中使用的参数的最优值。此外,采用 Adams-Bashforth-Moulton 预报-校正方法求解了所提出模型的数值解。同时,根据繁殖数对参数进行了敏感性分析。此外,对模型进行了数值模拟,并对模型参数的影响进行了生物学解释。最后,为了指出分数阶建模的优势,考虑了记忆痕迹和遗传特征。通过这样做,研究了不同分数阶导数对 COVID-19 大流行和糖尿病的影响。