Mathematical Modeling of Tuberculosis Transmission Dynamics With Reinfection and Optimal Control

ABSTRACT Tuberculosis (TB) remains a significant global health challenge, claiming over 2 million lives annually, predominantly among adults. Existing TB models often neglect seasonal variations, optimal control, and reinfection, limiting their accuracy in predicting disease dynamics. This study pre...

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Main Author: Francis Oketch Ochieng
Format: Article
Language:English
Published: Wiley 2025-01-01
Series:Engineering Reports
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Online Access:https://doi.org/10.1002/eng2.13068
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author Francis Oketch Ochieng
author_facet Francis Oketch Ochieng
author_sort Francis Oketch Ochieng
collection DOAJ
description ABSTRACT Tuberculosis (TB) remains a significant global health challenge, claiming over 2 million lives annually, predominantly among adults. Existing TB models often neglect seasonal variations, optimal control, and reinfection, limiting their accuracy in predicting disease dynamics. This study presents a novel data‐driven SVEITRS mathematical model incorporating these factors to analyze TB transmission dynamics. Employing the next‐generation matrix approach, a basic reproduction number R0 of 1.005341 was calculated, suggesting that without robust public health interventions, TB disease may persist in Kenya. The model equations were solved numerically using fourth‐ and fifth‐order Runge–Kutta methods, with the forward–backward sweep technique applied to the optimal control problem. The model was fitted to historical TB incidence data for Kenya from 2000 to 2022 using lsqcurvefit algorithm in MATLAB software. The fitting algorithm yielded a mean absolute error (MAE) of 0.0069, demonstrating a close alignment between simulated and observed data. The optimized parameter values were used to project future TB dynamics. Key findings indicate that a 20% decrease in transmission rate coupled with a 5% increase in vaccine efficacy, while maintaining other parameters constant, would result in a 32.60% reduction in TB transmission in Kenya. Moreover, the incidence of TB in Kenya is expected to decrease to an estimated 17 cases per 100,000 people by 2045 with sustained efforts in vaccine development and public awareness campaigns. The development of highly efficacious vaccines emerges as the most cost‐effective strategy in combating TB transmission in Kenya. Policymakers should prioritize investing in the development and deployment of highly efficacious vaccines to achieve optimal public health outcomes and economic benefits, aligning with Kenya's Vision 2030.
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spelling doaj-art-9d81d0ab69604969a043f274237f44bd2025-01-31T00:22:49ZengWileyEngineering Reports2577-81962025-01-0171n/an/a10.1002/eng2.13068Mathematical Modeling of Tuberculosis Transmission Dynamics With Reinfection and Optimal ControlFrancis Oketch Ochieng0Department of Pure and Applied Mathematics Jomo Kenyatta University of Agriculture and Technology Nairobi KenyaABSTRACT Tuberculosis (TB) remains a significant global health challenge, claiming over 2 million lives annually, predominantly among adults. Existing TB models often neglect seasonal variations, optimal control, and reinfection, limiting their accuracy in predicting disease dynamics. This study presents a novel data‐driven SVEITRS mathematical model incorporating these factors to analyze TB transmission dynamics. Employing the next‐generation matrix approach, a basic reproduction number R0 of 1.005341 was calculated, suggesting that without robust public health interventions, TB disease may persist in Kenya. The model equations were solved numerically using fourth‐ and fifth‐order Runge–Kutta methods, with the forward–backward sweep technique applied to the optimal control problem. The model was fitted to historical TB incidence data for Kenya from 2000 to 2022 using lsqcurvefit algorithm in MATLAB software. The fitting algorithm yielded a mean absolute error (MAE) of 0.0069, demonstrating a close alignment between simulated and observed data. The optimized parameter values were used to project future TB dynamics. Key findings indicate that a 20% decrease in transmission rate coupled with a 5% increase in vaccine efficacy, while maintaining other parameters constant, would result in a 32.60% reduction in TB transmission in Kenya. Moreover, the incidence of TB in Kenya is expected to decrease to an estimated 17 cases per 100,000 people by 2045 with sustained efforts in vaccine development and public awareness campaigns. The development of highly efficacious vaccines emerges as the most cost‐effective strategy in combating TB transmission in Kenya. Policymakers should prioritize investing in the development and deployment of highly efficacious vaccines to achieve optimal public health outcomes and economic benefits, aligning with Kenya's Vision 2030.https://doi.org/10.1002/eng2.13068forward–backward sweep methodmodel fittingpublic awareness campaignssensitivity analysisTB vaccination and treatment
spellingShingle Francis Oketch Ochieng
Mathematical Modeling of Tuberculosis Transmission Dynamics With Reinfection and Optimal Control
Engineering Reports
forward–backward sweep method
model fitting
public awareness campaigns
sensitivity analysis
TB vaccination and treatment
title Mathematical Modeling of Tuberculosis Transmission Dynamics With Reinfection and Optimal Control
title_full Mathematical Modeling of Tuberculosis Transmission Dynamics With Reinfection and Optimal Control
title_fullStr Mathematical Modeling of Tuberculosis Transmission Dynamics With Reinfection and Optimal Control
title_full_unstemmed Mathematical Modeling of Tuberculosis Transmission Dynamics With Reinfection and Optimal Control
title_short Mathematical Modeling of Tuberculosis Transmission Dynamics With Reinfection and Optimal Control
title_sort mathematical modeling of tuberculosis transmission dynamics with reinfection and optimal control
topic forward–backward sweep method
model fitting
public awareness campaigns
sensitivity analysis
TB vaccination and treatment
url https://doi.org/10.1002/eng2.13068
work_keys_str_mv AT francisoketchochieng mathematicalmodelingoftuberculosistransmissiondynamicswithreinfectionandoptimalcontrol