Cholera Detection System using CNN Machine Learning Algorithm

Chikondi Zakeyu*, Fanny Chatola**
*-** DMI-St John the Baptist University, Malawi.
Periodicity:January - March'2024
DOI : https://doi.org/10.26634/jse.18.3.20656

Abstract

A comprehensive cholera detection system leveraging cutting-edge technologies such as neural networks, machine learning, chatbots, live maps, and real-time statistical graphs is proposed. The system integrates a user-friendly chatbot interface to interact with individuals, prompting them to input relevant health information and symptoms. Behind the scenes, neural networks and machine learning algorithms analyze the data to detect potential cholera cases, offering users instant insights into their health status. The system incorporates live maps to track reported cases geographically, enabling a swift response from health authorities. Moreover, real-time statistical graphs provide dynamic visualizations of cholera trends, aiding in the identification of potential outbreak hotspots. By amalgamating these technologies, the cholera detection system not only facilitates early diagnosis and intervention but also enhances public health monitoring and management, contributing to the overall control and prevention of cholera outbreaks.

Keywords

GIS Geographic Information System, API Application Program Interface, CDS Cholera Detection System, CNN Convolutional Neural Networks.

How to Cite this Article?

Zakeyu, C., and Chatola, F. (2024). Cholera Detection System using CNN Machine Learning Algorithm. i-manager’s Journal on Software Engineering, 18(3), 1-15. https://doi.org/10.26634/jse.18.3.20656

References

[3]. Delaurenti, C. V. (2017). Cholera framework report. International Federation of Red Cross and Red Crescent Societies (pp. 1-58).
[5]. Leo, J. (2020). A Reference Machine Learning Model for Prediction of Cholera Epidemics Based-On Seasonal Weather Changes Linkages in Tanzania (Doctoral dissertation, NM-AIST).
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