Abstract
Objectives
A stochastic version of the deterministic model for meningitis epidemic by Yaga and Saporu (A study of a deterministic model for meningitis epidemic. J Epidemiol Methods 2024;13:20230023) is developed.
Method
The stochastic mean system of equations for possible state of an individual in the model and the extinction probabilities for carrier and infective are derived. Comparison of the system of stochastic mean equations and its deterministic analogue of profiles for the various compartments and the case-carrier trajectories show similar pattern with a time shift difference.
Results
This indicates that there must be caution in using the deterministic analogue as an approximating system of the stochastic mean equations for inferential purpose. Simulation studies of the comparison of the compartmental profiles for the general case; model I, with the assumption that a proportion (φ≠0), of the infected susceptible can move directly to the infective stage and that of the special case, model II, when φ=0 is examined for various values of ϵ (odds in favour of a carrier transmitting infection)
Conclusion
It is concluded that carriership play a more prominent role in the transmission of meningitis epidemic and efforts aimed at control should be targeted at reducing the transmission rate and increasing the loss of carriership.
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Author contributions: All authors participated in the production of the manuscript from beginning to the end.
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Research ethics: Not applicable.
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Informed consent: Not applicable.
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Use of Large Language Models, AI and Machine Learning Tools: None declared.
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Conflict of interest: The authors state no conflict of interest.
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Research funding: None declared.
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Data availability: Not applicable.
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Articles in the same Issue
- Causal mediation analysis for difference-in-difference design and panel data
- Research Articles
- Sensitivity analysis for unmeasured confounding for a joint effect with an application to survey data
- Investigating the association between school substance programs and student substance use: accounting for informative cluster size
- The quantiles of extreme differences matrix for evaluating discriminant validity
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- Bot invasion: protecting the integrity of online surveys against spamming
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- Understanding the impact of media and latency in information response on the disease propagation: a mathematical model and analysis
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