Research article

Modeling the vaccination control of bacterial meningitis transmission dynamics: a case study

  • Received: 24 June 2023 Revised: 10 October 2023 Accepted: 22 November 2023 Published: 28 December 2023
  • Bacterial meningitis, which is considered a major concern by the World Health Organization, is a medical emergency that lingers as a terrifying infection in sub-Saharan Africa and other countries in the "meningitis belt" due to the frequent occurrence of the infection and its debilitating effects among survivors, even after treatment. This study presents a novel two-strain compartmental bacterial meningitis model. The disease-free equilibrium was established to be locally and globally asymtotically stable. Numerical simulations were performed to visualize the effects of various model parameters on each compartment. Sensitivity analysis was also performed and it was established that the most sensitive parameter for both strains $ 1 $ and $ 2 $ is the transmission probability, $ \beta $. It was ascertained that bacterial meningitis will not spread in the population if at least $ 25\% $ of the population are immune to the disease.

    Citation: Monica Veronica Crankson, Olusegun Olotu, Ayodeji Sunday Afolabi, Afeez Abidemi. Modeling the vaccination control of bacterial meningitis transmission dynamics: a case study[J]. Mathematical Modelling and Control, 2023, 3(4): 416-434. doi: 10.3934/mmc.2023033

    Related Papers:

  • Bacterial meningitis, which is considered a major concern by the World Health Organization, is a medical emergency that lingers as a terrifying infection in sub-Saharan Africa and other countries in the "meningitis belt" due to the frequent occurrence of the infection and its debilitating effects among survivors, even after treatment. This study presents a novel two-strain compartmental bacterial meningitis model. The disease-free equilibrium was established to be locally and globally asymtotically stable. Numerical simulations were performed to visualize the effects of various model parameters on each compartment. Sensitivity analysis was also performed and it was established that the most sensitive parameter for both strains $ 1 $ and $ 2 $ is the transmission probability, $ \beta $. It was ascertained that bacterial meningitis will not spread in the population if at least $ 25\% $ of the population are immune to the disease.



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