AlArjani Ali, Nasseef Md Taufiq, Kamal Sanaa M, Rao B V Subba, Mahmud Mufti, Uddin Md Sharif
Department of Mechanical & Industrial Engineering, College of Engineering, Prince Sattam Bin Abdulaziz University, AlKharj, 16273 Saudi Arabia.
Douglas Hospital Research Center, Department of Psychiatry, School of Medicine, McGill University, Montreal, QC Canada.
Arab J Sci Eng. 2022;47(8):10163-10186. doi: 10.1007/s13369-021-06419-4. Epub 2022 Jan 7.
The entire world has been affected by the outbreak of COVID-19 since early 2020. Human carriers are largely the spreaders of this new disease, and it spreads much faster compared to previously identified coronaviruses and other flu viruses. Although vaccines have been invented and released, it will still be a challenge to overcome this disease. To save lives, it is important to better understand how the virus is transmitted from one host to another and how future areas of infection can be predicted. Recently, the second wave of infection has hit multiple countries, and governments have implemented necessary measures to tackle the spread of the virus. We investigated the three phases of COVID-19 research through a selected list of mathematical modeling articles. To take the necessary measures, it is important to understand the transmission dynamics of the disease, and mathematical modeling has been considered a proven technique in predicting such dynamics. To this end, this paper summarizes all the available mathematical models that have been used in predicting the transmission of COVID-19. A total of nine mathematical models have been thoroughly reviewed and characterized in this work, so as to understand the intrinsic properties of each model in predicting disease transmission dynamics. The application of these nine models in predicting COVID-19 transmission dynamics is presented with a case study, along with detailed comparisons of these models. Toward the end of the paper, key behavioral properties of each model, relevant challenges and future directions are discussed.
自2020年初以来,整个世界都受到了新冠疫情爆发的影响。人类携带者在很大程度上是这种新疾病的传播者,并且与之前发现的冠状病毒和其他流感病毒相比,它传播得更快。尽管已经发明并发布了疫苗,但要战胜这种疾病仍将是一项挑战。为了拯救生命,更好地了解病毒如何从一个宿主传播到另一个宿主以及如何预测未来的感染区域非常重要。最近,第二波感染袭击了多个国家,各国政府已采取必要措施应对病毒传播。我们通过一份选定的数学建模文章清单,对新冠疫情研究的三个阶段进行了调查。为了采取必要措施,了解疾病的传播动态很重要,而数学建模被认为是预测此类动态的一种成熟技术。为此,本文总结了所有用于预测新冠病毒传播的现有数学模型。在这项工作中,总共对九个数学模型进行了全面审查和特征描述,以便了解每个模型在预测疾病传播动态方面的内在特性。通过一个案例研究展示了这九个模型在预测新冠病毒传播动态中的应用,以及对这些模型的详细比较。在论文结尾,讨论了每个模型的关键行为特性、相关挑战和未来方向。