Survey for the Prediction of Chronic Kidney Disease using Machine Learning

Authors

  • Pooja Sharma  Department of computer Engineering, L.J Institute of Engineering and Technology (Gujarat Technology University), Ahmedabad, Gujarat, India
  • Prof. Saket J Swarndeep  Professor, L.J Institute of Engineering and Technology (Gujarat Technology University), Ahmedabad, Gujarat, India

DOI:

https://doi.org//10.32628/IJSRSET196629

Keywords:

Chronic Kidney Diseases prediction, Artificial Neural Network, Back Propagation

Abstract

According the 2010 global burden of disease study, Chronic Kidney Diseases (CKD) was ranked 18th in the list of causes of total no. of deaths worldwide. 10% of the population worldwide is affected by CKD. The prediction of CKD can become a boon for the population to predict the health. Various method and techniques are undergoing the research phase for developing the most accurate CKD prediction system. Using Machine Learning techniques is the most promising one in this area due to its computing function and Machine Learning rules. Existing Systems are working well in predicting the accurate result but still more attributes of data and complicity of health parameter make the root layer for the innovation of new approaches. This study focuses on a novel approach for improving the prediction of CKD. In recent time Neural network system has discovered its use in disease diagnoses, which is depended upon prediction from symptoms data set. Chronic kidney disease detection system using neural network is shown here. This system of neural network accepts disease-symptoms as input and it is trained according to various training algorithms. After neural network is trained using back propagation algorithms, this trained neural network system is used for detection of kidney disease in the human body.

References

  1. Madhuri Maru, “A Novel Approach for Improving Breast Cancer Risk Prediction using Machine Learning Algorithms : A Survey”, IJSRSET,2019.
  2. Matthew Mayo, KDnuggets; access on 15 November2019,https://www.kdnuggets.com/2019/0 4/poll-data-science-machine learning-methods- algorithms-use-2018-2019.html.
  3. Glosser.ca; access on 17 November 2019, https://en.wikipedia.org/wiki/Artificial_neural_netw ork#/media/File:Colored_neural_network.svg.
  4. Safae Sossi Alaoui, Brahim Aksasse, and Yousef Farhaoui,” Statistical and Predictive Analytics of Chronic Kidney Disease”, Springer Nature Switzerland AG 2019.
  5. Lakshmanaprabu S.K, Sachi Nandan Mohanty, Sheeba Rani S, Sujatha Krishnamoorthy, uthayakumar J, K.Shankar,” Online clinical decision support system using optimal deep neural networks”,ScienceDirect(2019).
  6. Nilesh Borisagar, Dipa Barad and Priyanka Raval, “Chronic Kidney Disease Prediction using Back Propagation Neural Network Algorithm”, Springer Nature Singapore Pte Ltd. 2017
  7. S. M. K. Chaitanya and P. Rajesh Kumar,” Detection of Chronic Kidney Disease by using Artificial Neural Networks and Gravitational Search Algorithm”,
  8. Springer Nature Singapore Pte Ltd. 2019
  9. Sirshendu Hore, Sankhadeep Chatterjee, Rahul Kr.Shaw,Nilanjan Dey and Jitendra Virmani,” Detection of Chronic Kidney Disease:A NN-GA- Based Approch”, Springer Nature Singapore Pte Ltd. 2018.
  10. Hanyu Zhang, Che-Lun Hung, William Cheng- Chung Chu, Ping-Fang Chiu, Chuan Yi Tang,”Chronic Kidney Disease Survival Prediction With Artificaial Neural Network”,IEEE 2018,
  11. Akruti Dave, Prof. Gayatri Pandi,” Analysis Of Heart Disease Prediction System Using Artificial Neural Network”, 2018 JETIR.
  12. EI-Houssainy A. Rady, Ayman S.Anwar,”Prediction Of Kidney Disease Stages Using Data Mining Algorithms”,Informatics in Medicine Unlocked(2019).

Downloads

Published

2019-12-30

Issue

Section

Research Articles

How to Cite

[1]
Pooja Sharma, Prof. Saket J Swarndeep, " Survey for the Prediction of Chronic Kidney Disease using Machine Learning, International Journal of Scientific Research in Science, Engineering and Technology(IJSRSET), Print ISSN : 2395-1990, Online ISSN : 2394-4099, Volume 6, Issue 6, pp.154-158, November-December-2019. Available at doi : https://doi.org/10.32628/IJSRSET196629