A mathematical analysis of the two-strain tuberculosis model dynamics with exogenous re-infection

Benjamin Idoko Omede , Olumuyiwa James Peter , William Atokolo , Bolarinwa Bolaji , Tawakalt Abosede Ayoola
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Abstract

The rise of drug resistance has become a major obstacle in treating tuberculosis (TB), significantly contributing to the increasing disease burden. Therefore, it is essential to study the transmission dynamics of the disease, considering the factors that contribute to the strain’s impact on the disease burden, using an epidemiological model. We present a deterministic mathematical model that explores the dynamics of TB with two strains: drug-susceptible and drug-resistant, taking into account exogenous re-infection. We thoroughly analyze to gain insights into the behavior of the model. The qualitative analysis of the model reveals an interesting phenomenon known as “backward bifurcation,” where both stable disease-free and stable endemic equilibria coexist when the associated reproduction number is less than one. In the absence of exogenous re-infection, the model shows the existence of unique positive endemic equilibria. Numerical simulations were conducted, yielding noteworthy results. Increasing the treatment rate for individuals infected with the drug-susceptible strain reduces the number of new cases of drug-susceptible TB while increasing the detection of drug-resistant TB cases. The simulations demonstrate that drug-susceptible and drug-resistant TB strains can coexist when their reproduction numbers exceed one without competitive exclusion occurring. In summary, this study sheds light on the challenges posed by drug resistance in TB treatment and highlights the importance of understanding the disease dynamics through mathematical modeling to develop effective strategies for its control.

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外源性再感染下两株结核模型动力学的数学分析
耐药性的增加已成为治疗结核病的一个主要障碍,大大增加了疾病负担。因此,有必要利用流行病学模型研究该病的传播动力学,考虑到导致菌株对疾病负担产生影响的因素。我们提出了一个确定性的数学模型,探讨了两种菌株的结核病动力学:药物敏感和耐药,考虑到外源性再感染。我们进行彻底的分析,以深入了解模型的行为。该模型的定性分析揭示了一个有趣的现象,即“后向分叉”,即当相关的繁殖数小于1时,稳定的无病平衡和稳定的地方性平衡共存。在没有外源再感染的情况下,该模型显示存在唯一的正地方性平衡。进行了数值模拟,得到了显著的结果。提高对感染药物敏感菌株的个体的治疗率,可减少药物敏感结核病新病例的数量,同时增加耐药结核病病例的发现。模拟表明,当它们的繁殖数量超过1时,药物敏感和耐药结核菌株可以共存,而不会发生竞争排斥。总之,这项研究揭示了结核病治疗中耐药性带来的挑战,并强调了通过数学建模了解疾病动态以制定有效控制策略的重要性。
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来源期刊
Healthcare analytics (New York, N.Y.)
Healthcare analytics (New York, N.Y.) Applied Mathematics, Modelling and Simulation, Nursing and Health Professions (General)
CiteScore
4.40
自引率
0.00%
发文量
0
审稿时长
79 days
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