A Novel Feature Selection Method for Classification of Medical Data Using Filters, Wrappers, and Embedded Approaches

Author:

Bashir Saba1ORCID,Khattak Irfan Ullah2,Khan Aihab2,Khan Farhan Hassan3,Gani Abdullah4ORCID,Shiraz Muhammad1ORCID

Affiliation:

1. Department of Computer Science, Federal Urdu University of Arts Sciences and Technology, Islamabad, Pakistan

2. Department of Computing and Technology, Iqra University, Islamabad, Pakistan

3. Knowledge & Data Science Research Center (KDRC), Department of Computer Engineering, College of E & ME, National University of Sciences & Technology (NUST), Islamabad, Pakistan

4. Faculty of Computing and Informatics, University Malaysia Sabah, Jalan UMS, Kota Kinabalu 88400, Malaysia

Abstract

Feature selection is the process of identifying the most relevant features from the given data having a large feature space. Microarray datasets are comprised of high-quality features and very few samples of data. Feature selection is performed on such datasets to identify the optimal feature subset. The major goal of feature selection is to improve the accuracy by identifying a minimal feature subset. For this purpose, the proposed research focused on analyzing and identifying effective feature selection algorithms. A novel framework is proposed which utilizes different feature selection methods from filters, wrappers, and embedded algorithms. Furthermore, classification is then performed on selected features to classify the data using a support vector machine (SVM) classifier. Two publically available benchmark datasets are used, i.e., the Microarray dataset and the Cleveland Heart Disease dataset, for experimentation and analysis, and they are archived from the UCI data repository. The performance of SVM is analyzed using accuracy, sensitivity, specificity, and f-measure. The accuracy of 94.45% and 91% is achieved on each dataset, respectively.

Publisher

Hindawi Limited

Subject

Multidisciplinary,General Computer Science

Reference52 articles.

1. Identification and Progression of Heart Disease Risk Factors in Diabetic Patients from Longitudinal Electronic Health Records

2. The Global Burden of Chronic Diseases

3. The Euro Heart Failure survey program, a survey on the quality of care among patients with heart failure in Europe. Part 1: patient characteristics and diagnosis;J. G. Cleland;European Heart Journal,2003

4. Heart disease and stroke statistics–2012;V. L. Roger;A report from the American Heart Association,2012

5. Clinical characteristics and major comorbidities in heart failure patients more than 85 years of age compared with younger age groups

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