ISSN: 3048-6815

Comparative Study of Machine Learning Techniques for Prediction of Kidney Disease

Abstract

As kidney chronic disease is nowadays widely increasing which either caused by kidney disease or reduce the function of the kidney, it also affects the cardiac problems- scientifically which can lead to sudden heart attacks at the end-stage. Early diagnosis and adequate therapies can only help in stopping this disease, where dialysis and kidney transplantation is the only way to save the life of the patient. Detecting kidney disease through machine learning and through data mining techniques which can reveal the hidden problem of the kidney. Therefore, the current article is based on the comparative study using various Machine Learning techniques to detect kidney disease. This survey supports to find the accuracy of algorithms which are more useful to find the kidney disease in early stage. The comparative study of all the algorithms and by implementing the models on different platforms, and it is analyzed that which is the best algorithm to predict CKD (Chronic Kidney Disease). The machine learning techniques are compared like Probabilistic Neural Network (PNN), Multilayer Perceptron Algorithm (MLP), Logistic Regression (LOGR), Regression Tree (RPART), Support Vector Machine (SVM) and Radial Basis Function (RBF).

References

  1. Rady, El-Houssainy A., and Ayman S. Anwar. "Prediction of kidney disease stages using data mining algorithms." Informatics in Medicine Unlocked (2019): 100178.
  2. Aljaaf, Ahmed J., et al. "Early Prediction of Chronic Kidney Disease Using Machine Learning Supported by Predictive Analytics." 2018 IEEE Congress on Evolutionary Computation (CEC). IEEE, 2018.
  3. Rahman, Tahsin M., et al. "Early Detection of Kidney Disease Using ECG Signals Through Machine Learning Based Modelling." 2019 International Conference on Robotics, Electrical and Signal Processing Techniques (ICREST). IEEE, 2019.
  4. Kemal, A. D. E. M. "Diagnosis of Chronic Kidney Disease using Random Subspace Method with Particle Swarm Optimization." UluslararasıMühendislikAraştırmaveGeliştirmeDergisi 10.3: 1-5.
  5. Solanki, Ashok kumar Vijaysinh. "Data mining techniques using WEKA classification for sickle cell disease." International Journal of Computer Science and Information Technologies 5.4 (2014): 5857 5860.
  6. Aher, Sunita B., and L. M. R. J. Lobo. "A comparative study of association rule algorithms for course recommender system in e-learning." International Journal of Computer Applications 39.1 (2012): 48-52.
  7. Mazid, Mohammed M., ABM Shawkat Ali, and Kevin S. Tickle. "Finding a unique association rule mining algorithm based on data characteristics." 2008 International Conference on Electrical and Computer Engineering. IEEE, 2008.
  8. Kayaalp, Fatih, Muhammet Sinan Basarslan, and Kemal Polat. "A Hybrid classification example in describing chronic kidney disease." 2018 Electric Electronics, Computer Science, Biomedical Engineerings' Meeting (EBBT). IEEE, 2018.
  9. Ranjan, Sourav, et al. "CHRONIC KIDNEY DISEASE RISK PREDICTION BASED ON MACHINE LEARNING TECHNIQUE USING CLOUD PLATFORM."
  10. Sunil, D., and B. P. Sowmya. "Chronic Kidney Disease Analysis using Data Mining." (2017).
  11. Alasker, Haya, et al. "Detection of kidney disease using various intelligent classifiers." 2017 3rd International Conference on Science in Information Technology (ICSITech). IEEE, 2017.
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How to Cite

Manika Saharan, Pradeep Upadhyay, (2025-04-28 16:54:20.553). Comparative Study of Machine Learning Techniques for Prediction of Kidney Disease. JANOLI International Journal of Artificial Intelligence and its Applications, Volume hJAEiqNzZqWjtpPaXKzr, Issue 1.