Literature Review Discussion of Machine Learning Algorithms for Predicting Chronic

Year : 2024 | Volume :15 | Issue : 03 | Page : –
By

Rajesh Yadav,

  1. Assistant Professor, Department of Computer Science, South Indian Education Society College of Arts, Science and Commerce (Empowered Autonomous), Mumbai, Maharashtra, India

Abstract

Being one of the most serious and most occurring diseases in our era, chronic kidney disease requires a fast and correct diagnosis. The usage of machine learning in medicine has now grown to such a level that it could be a means of diagnosis. The doctor can be the first one to get the ailment by using machine learning classifier algorithms. This has been the data science sector’s new horizons, just as a lot of other industries have been covered, healthcare in the first place. Now, most of the chronic diseases are no longer a mystery to healthcare workers who can foretell it using data analytics. Multiple machine learning (ML) algorithms are likely to be the future of healthcare. Not only do they identify chronic diseases, but they also forecast them at an early stage. This literature survey will focus on the effectiveness of various machine learning algorithms, such as KNN, SVM, Random Forest, RNN, etc., in predicting CKD.

Keywords: Data analytics, Machine learning algorithms, chronic kidney disease (CKD), disease prediction.

[This article belongs to Journal of Computer Technology & Applications (jocta)]

How to cite this article:
Rajesh Yadav. Literature Review Discussion of Machine Learning Algorithms for Predicting Chronic. Journal of Computer Technology & Applications. 2024; 15(03):-.
How to cite this URL:
Rajesh Yadav. Literature Review Discussion of Machine Learning Algorithms for Predicting Chronic. Journal of Computer Technology & Applications. 2024; 15(03):-. Available from: https://journals.stmjournals.com/jocta/article=2024/view=177282

References

  1. Islam MA, Majumder MZ, Hussein MA. Chronic kidney disease prediction based on machine learning algorithms. Journal of pathology informatics. 2023 Jan 1;14:100189.
  2. Emon MU, Islam R, Keya MS, Zannat R. Performance analysis of chronic kidney disease through machine learning approaches. In2021 6th International Conference on Inventive Computation Technologies (ICICT) 2021 Jan 20 (pp. 713-719). IEEE.
  3. Chittora P, Chaurasia S, Chakrabarti P, Kumawat G, Chakrabarti T, Leonowicz Z, Jasiński M, Jasiński Ł, Gono R, Jasińska E, Bolshev V. Prediction of chronic kidney disease-a machine learning perspective. IEEE access. 2021 Jan 22;9:17312-34.
  4. Sathiya Priya S and Suresh Kumar M. Chronic kidney disease prediction using machine learning. International Journal of Computer Science and Information Security (IJCSIS). 2018;16(4):308-311.
  5. Almansour NA, Syed HF, Khayat NR, Altheeb RK, Juri RE, Alhiyafi J, Alrashed S, Olatunji SO. Neural network and support vector machine for the prediction of chronic kidney disease: A comparative study. Computers in biology and medicine. 2019 Jun 1;109:101-11.
  6. Devika R, Avilala SV, Subramaniyaswamy V. Comparative study of classifier for chronic kidney disease prediction using naive bayes, KNN and random forest. In2019 3rd International conference on computing methodologies and communication (ICCMC) 2019 Mar 27 (pp. 679-684). IEEE.
  7. Anandajayam P, Aravindkumar S, Arun P, Ajith A. Prediction of chronic disease by machine learning. In2019 IEEE International Conference on System, Computation, Automation and Networking (ICSCAN) 2019 Mar 29 (pp. 1-6). IEEE.
  8. Xiao J, Ding R, Xu X, Guan H, Feng X, Sun T, Zhu S, Ye Z. Comparison and development of machine learning tools in the prediction of chronic kidney disease progression. Journal of translational medicine. 2019 Dec;17:1-3.
  9. Ahmed MR, Mahmud SH, Hossin MA, Jahan H, Noori SR. A cloud based four-tier architecture for early detection of heart disease with machine learning algorithms. In2018 IEEE 4th international conference on computer and communications (ICCC) 2018 Dec 7 (pp. 1951-1955). IEEE.
  10. Sinha P, Sinha P. Comparative study of chronic kidney disease prediction using KNN and SVM. International Journal of Engineering Research and Technology. 2015 Dec;4(12):608-12.
  11. Vijayarani S, Dhayanand S, Phil M. Kidney disease prediction using SVM and ANN algorithms. International Journal of Computing and Business Research (IJCBR). 2015 Mar;6(2):1-2.
  12. NHS Choices. Overview – Chronic kidney disease. 2024. Available from: https://www.nhs.uk/conditions/kidney-disease/

Regular Issue Subscription Review Article
Volume 15
Issue 03
Received 08/09/2024
Accepted 12/09/2024
Published 07/10/2024

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