International Journal of Cloud Computing and Database Management

P-ISSN: 2707-5907, E-ISSN: 2707-5915
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2020, Vol. 1, Issue 2, Part A

Discovery of chronic kidney disease using ML with optimal predictors


Author(s): Ravichandra Babudasari

Abstract: Constant kidney malady (CKD) is a worldwide general medical issue with a rising pervasiveness. (GFR) Glomerular filtration rate is viewed as the best by and large file of kidney capacity, and low GFR is related with higher risk of kidney failure requiring dialysis and cardiovascular disease, hypertension, anaemia, and other metabolic complications. CKD results from a large number of systemic diseases that damage the kidney or from disorders that are intrinsic to the kidney. The machine learning techniques hold a predominant stand. This detection can be done very efficiently and feasibly by using Machine Learning. By utilizing the machine learning techniques like Logistic regression, Random forest, SVM (support vector machine), gradient boosting identifies vital relations and patterns from the analysis of data and predictions can be done from these acquisitions.

DOI: 10.33545/27075907.2020.v1.i2a.18

Pages: 36-38 | Views: 524 | Downloads: 147

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International Journal of Cloud Computing and Database Management
How to cite this article:
Ravichandra Babudasari. Discovery of chronic kidney disease using ML with optimal predictors. Int J Cloud Comput Database Manage 2020;1(2):36-38. DOI: 10.33545/27075907.2020.v1.i2a.18
International Journal of Cloud Computing and Database Management

International Journal of Cloud Computing and Database Management

International Journal of Cloud Computing and Database Management
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