Diagnosis of Chronic Kidney Disease Based on Support Vector Machine by Feature Selection Methods

被引:0
作者
Huseyin Polat
Homay Danaei Mehr
Aydin Cetin
机构
[1] Gazi University,Department of Computer Engineering, Faculty of Technology
来源
Journal of Medical Systems | 2017年 / 41卷
关键词
Feature selection; Support vector machine; Chronic kidney disease; Machine learning;
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学科分类号
摘要
As Chronic Kidney Disease progresses slowly, early detection and effective treatment are the only cure to reduce the mortality rate. Machine learning techniques are gaining significance in medical diagnosis because of their classification ability with high accuracy rates. The accuracy of classification algorithms depend on the use of correct feature selection algorithms to reduce the dimension of datasets. In this study, Support Vector Machine classification algorithm was used to diagnose Chronic Kidney Disease. To diagnose the Chronic Kidney Disease, two essential types of feature selection methods namely, wrapper and filter approaches were chosen to reduce the dimension of Chronic Kidney Disease dataset. In wrapper approach, classifier subset evaluator with greedy stepwise search engine and wrapper subset evaluator with the Best First search engine were used. In filter approach, correlation feature selection subset evaluator with greedy stepwise search engine and filtered subset evaluator with the Best First search engine were used. The results showed that the Support Vector Machine classifier by using filtered subset evaluator with the Best First search engine feature selection method has higher accuracy rate (98.5%) in the diagnosis of Chronic Kidney Disease compared to other selected methods.
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  • [1] Go AS(2004)Chronic kidney disease and the risks of death, cardiovascular events, and hospitalization N. Engl. J. Med. 32 856-867
  • [2] Chertow GM(2007)Integrating data mining with case-based reasoning for chronic diseases prognosis and diagnosis Expert Syst. Appl. 39 131-4445
  • [3] Fan D(2015)A soft computing approach to kidney diseases evaluation J. Med. Syst. 40 4438-2075
  • [4] McCulloch CE(2013)An end stage kidney disease predictor based on an artificial neural networks ensemble Expert Syst. Appl. 48 2069-3247
  • [5] Hsu C-y(2016)Clinical risk assessment of patients with chronic kidney disease by using clinical data and multivariate models Int. Urol. Nephrol. 36 3240-237
  • [6] Huang M-J(2009)Support vector machines combined with feature selection for breast cancer diagnosis Expert Syst. Appl. 23 230-57
  • [7] Chen M-Y(2013)Genetic algorithm wrapped Bayesian network feature selection applied to differential diagnosis of erythemato-squamous diseases Digital Signal Processing. 50 52-763
  • [8] Lee S-C(2015)Feature selection of gene expression data for cancer classification: a review Procedia Computer Science. 34 754-1053
  • [9] José N(2008)Feature selection for the SVM: an application to hypertension diagnosis Expert Syst. Appl. 2 1048-17
  • [10] Rosário Martins M(2011)Filter versus wrapper feature subset selection in large dimensionality micro array: a review International Journal of Computer Science and Information Technologies. 1 13-53