Seasonality Prediction of Meningitis Using Artificial Neural Network (ANN).

Publication Date: 01/07/2024

DOI: 10.52589/AJMSS-UTSMWUD8


Author(s): Aminu Titilope Funmilayo , Daniel Akindunjoye Akinboro , Sanusi Akeem Olatoye .

Volume/Issue: Volume 7 , Issue 2 (2024)



Abstract:

Communities are concerned about controlling, preventing and handling infectious diseases due to recent epidemic outbreaks . Meningitis, an inflammation of the membranes surrounding the brain and spinal cord, is a significant risk in Nigeria. It can cause death within hours of infection with average case fatality rate of 10 percent. To prevent meningitis outbreaks, this paper focuses on using an Artificial Neural network (ANN) to predict outbreak of meningitis based on climatological factors. Previous research has shown that climate plays a major role in these outbreaks. The study found that Levenberg-Marquarait ANN algorithm was the best with the lowest prediction error and fewer iterations . High temperature and low humidity were identified as major triggers for meningitis outbreaks. It is crucial to address these factors to prevent future outbreaks and protect the community.


Keywords:

Artificial Neural Network, Meningitis, Prediction, Machine learning, Time steps.


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