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Abstract
In this paper, a mathematical model that captures the spread of Cholera and Typhoid is considered. The system of equations was solved using Laplace Adomian Decomposition Method (LADM) and was implemented using MATLAB. The analysis showed that an increase in the burden or cases of Cholera will result to an increase of Typhoid fever and vise-versa indicating that there is a symbiotic nature of the relationship between the typhoid disease and the cholera disease.
References:-
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