Generic Disease Prediction using Symptoms with Supervised Machine Learning
DOI:
https://doi.org/10.32628/CSEIT1952297Keywords:
Naive Bayes, Decision Tree, Random ForestAbstract
Data Mining and Machine Learning plays most inspiring area of research that become most popular in health organization. It also plays a vital part to uncover new patterns in medicinal science and services association which thusly accommodating for all the parties associated with this field. This project intend to form a diagnostic model of the common diseases based on the symptoms by using data mining technique such as classification in health domain. In this project, we are going to use algorithms like Random forest, Naive Bayes which can be utilized for health care diagnosis. Performances of the classifiers are compared to each other to find out highest accuracy. This also helps us to find out persons who are affected by the infection. The test based on the outcomes of the diseases.
References
- Onisko A, Druzdzel M.J and Wasyluk H, A Bayesian Network Model for Diagnosis of Liver Disorders. In Proceedings of the Eleventh Conference on Biocybernetics and Biomedical Engineering, 2, 1999, 842-846.
- Lin R.H, an Intelligent Model for Liver Disease Diagnosis. Artificial Intelligence in Medicine, 47 (1), 2009, 53-62.
- Rajeswari P and Reena G, Analysis of Liver Disorder using Data mining Algorithm. Global Journal of Computer Science and Technology, 10 (14), 2010, 48-52
- Ramana B.V, Babu M.S.P and Venkateswarlu N.B, A Critical Study of Selected Classification Algorithms for Liver Disease Diagnosis. Global Journal of Database Management Systems, 3 (2), 2011, 101-114.
- home.etf.rs/~vm/os/dmsw/Random%20Forest.pptx, last accessed 10/8/2015.
- Jehad Ali et.al, “Random forest and decision trees“, IJCSI,Vol 9,No 3,pp272-278(2012).
- Saaol times, Monthly magazine” Modifiable risk factors of heart disease”, pp 6-10, July (2015).
- Khan MG, “Heart disease diagnosis and therapy“, a practical approach, 2nd Edition Springer, pp544(2015).
- Khan MG, “Heart disease diagnosis and therapy “, a practical approach,2nd Edition Springer,pp544(2015).
- M.A. Jabbar, B L Deekshatulu, Priti chandra, ”classification of heart disease using artificial neural network and feature subset selection”, GJCST,Vol13, issue 3,2013.
Downloads
Published
Issue
Section
License
Copyright (c) IJSRCSEIT

This work is licensed under a Creative Commons Attribution 4.0 International License.