TOWARDS PREDICTION OF CEREBROSPINAL MENINGITIS DISEASE OCCURRENCE USING LOGISTICS REGRESSION – A WEB BASED APPLICATION
Abstract
Cerebrospinal meningitis (CSM) is characterized by acute severe infection of the central nervous system causing inflammation of the meninges with associated morbidity and mortality. The information about its symptoms, time and season of spread, most affected region, its fatality rate, type and how easily it causes major disabilities in patients can be modelled and utilized in its treatment, and prevention. This research uses data mining techniques to predict the occurrence of CSM in terms of those liable to be infected by the disease using feature information about the region and the patient. It encompasses data collection, preprocessing, exploration, algorithm training, prediction, and web hosting. The intention is to help in managing the resources needed for both treatment and prevention. The outcome of the research indicated that the proposed technique is viable for the task, considering the number of correct predictions that was reported when the application was deployed and tested.
References
Swathy M. and Saruladha K., (2021), “A comparative study of classification and prediction of Cardio-Vascular Diseases (CVD) using Machine Learning and Deep Learning techniques” https://www.sciencedirect.com/science/article/pii/S2405959521001119.
Bello Y., Adebayo, A. A., Abubakar Bashir (2020): Analysis of Rainfall and Temperature changes in Gombe State, Nigeria. FUDMA Journal of Sciences (FJS) Vol. 4 No. 1, pp 632 -646
Zaccari, K. , Marujo, E. (2019). Machine Learning for Aiding Meningitis Diagnosis in Paediatric Patients. International Journal of Medical and Health Sciences, 13(9), 411 - 419.
Liu, X., Gao, K., Liu, B., Pan, C., Liang, K., Yan, L., Ma, J., He, F., Zhang, S., Pan, S., & Yu, Y. (2021). Advances in Deep Learning-Based Medical Image Analysis. Health Data Science. DOI: https://doi.org/10.34133/2021/8786793
Wu, H., Yin, H., Chen, H., Sun, M., Liu, X., Yu, Y., Tang, Y., Long, H., Zhang, B., Zhang, J., Zhou, Y., Li, Y., Zhang, G., Zhang, P., Zhan, Y., Liao, J., Luo, S., Xiao, R., Su, Y., Zhao, J., Wang, F., Zhang, J., Zhang, W., Zhang, J., & Lu, Q. (2020). A deep learning, image based approach for automated diagnosis for inflammatory skin diseases. Annals of Translational Medicine, 8. DOI: https://doi.org/10.21037/atm.2020.04.39
Patel C. Jaymin., Heidi M. Soeters, Alpha Oumar Diallo, Brice W. Bicaba, Goumbi Kadadé, Assétou Y. Dembélé, Mahamat A. Acyl, Christelle Nikiema, Clement Lingani, Cynthia Hatcher,1 Anna M. Acosta, Jennifer D. Thomas, Fabien Diomande, Stacey Martin, Thomas A. Clark, Richard Mihigo, Rana A. Hajjeh, Catherine H. Zilber, Flavien Aké, Sarah A. Mbaeyi, Xin Wang, Jennifer C. Moisi, Olivier Ronveaux, Jason M. Mwenda, and Ryan T. Novak. (2022), “MenAfriNet: A Network Supporting Case-Based Meningitis Surveillance and Vaccine Evaluation in the Meningitis Belt of Africa” The Journal of Infectious Diseases®2019;220(S4):S148–54, https://academic.oup.com/jid/article/220/Supplement_4/S148/5610784. DOI: https://doi.org/10.1093/infdis/jiz308
Copyright (c) 2023 FUDMA JOURNAL OF SCIENCES
This work is licensed under a Creative Commons Attribution 4.0 International License.
FUDMA Journal of Sciences