Department of Applied Mathematics, Delhi Technological University, Delhi 110042, India.
Comput Biol Med. 2024 Aug;178:108682. doi: 10.1016/j.compbiomed.2024.108682. Epub 2024 Jun 1.
During any infectious disease outbreak, effective and timely quarantine of infected individuals, along with preventive measures by the population, is vital for controlling the spread of infection in society. Therefore, this study attempts to provide a mathematically validated approach for managing the epidemic spread by incorporating the Monod-Haldane incidence rate, which accounts for psychological effects, and a saturated quarantine rate as Holling functional type III that considers the limitation in quarantining of infected individuals into the standard Susceptible-Exposed-Infected-Quarantine-Recovered (SEIQR) model. The rate of change of each subpopulation is considered as the Caputo form of fractional derivative where the order of derivative represents the memory effects in epidemic transmission dynamics and can enhance the accuracy of disease prediction by considering the experience of individuals with previously encountered. The mathematical study of the model reveals that the solutions are well-posed, ensuring nonnegativity and boundedness within an attractive region. Further, the study identifies two equilibria, namely, disease-free (DFE) and endemic (EE); and stability analysis of equilibria is performed for local as well as global behaviours for the same. The stability behaviours of equilibria mainly depend on the basic reproduction number R and its alternative threshold T which is computed using the Next-generation matrix method. It is investigated that DFE is locally and globally asymptotic stable when R<1. Furthermore, we show the existence of EE and investigate that it is locally and globally asymptotic stable using the Routh-Hurwitz criterion and the Lyapunov stability theorem for fractional order systems with R>1 under certain conditions. This study also addresses a fractional optimal control problem (FOCP) using Pontryagin's maximum principle aiming to minimize the spread of infection with minimal expenditure. This approach involves introducing a time-dependent control measure, u(t), representing the behavioural response of susceptible individuals. Finally, numerical simulations are presented to support the analytical findings using the Adams Bashforth Moulton scheme in MATLAB, providing a comprehensive understanding of the proposed SEIQR model.
在任何传染病爆发期间,对感染者进行有效和及时的隔离,以及人群采取预防措施,对于控制社会感染的传播至关重要。因此,本研究试图通过将考虑心理效应的 Monod-Haldane 发生率和考虑感染者隔离限制的饱和隔离率作为 Holling 功能型 III 纳入标准的 Susceptible-Exposed-Infected-Quarantine-Recovered (SEIQR) 模型,为管理传染病传播提供一种经过数学验证的方法。每个亚群的变化率被认为是分数阶导数的 Caputo 形式,其中导数的阶数代表传染病传播动力学中的记忆效应,并通过考虑个体之前遇到的经验来提高疾病预测的准确性。该模型的数学研究表明,解是有界的,在有吸引力的区域内确保非负性和有界性。此外,该研究确定了两个平衡点,即无病平衡点 (DFE) 和地方病平衡点 (EE);并对平衡点进行了局部和全局稳定性分析。平衡点的稳定性行为主要取决于基本繁殖数 R 及其替代阈值 T,T 是使用下一代矩阵方法计算的。研究表明,当 R<1 时,DFE 是局部和全局渐近稳定的。此外,我们还证明了 EE 的存在,并通过 Routh-Hurwitz 准则和分数阶系统的 Lyapunov 稳定性定理研究了当 R>1 且满足某些条件时,EE 是局部和全局渐近稳定的。本研究还使用 Pontryagin 最大原理针对感染传播最小化和支出最小化问题提出了一个分数最优控制问题 (FOCP)。该方法涉及引入一个时间相关的控制措施 u(t),表示易感个体的行为反应。最后,使用 MATLAB 中的 Adams Bashforth Moulton 方案进行数值模拟,以支持基于分析的发现,提供对所提出的 SEIQR 模型的全面理解。