Diagnosis of Breast Cancer Pathology on the Wisconsin Dataset with the Help of Data Mining Classification and Clustering Techniques

Author:

Mohammad Walid Theib1ORCID,Teete Ronza2,Al-Aaraj Heyam3,Rubbai Yousef Saleh Yousef1,Arabyat Majd Mowafaq4

Affiliation:

1. Al-Hussein Bin Talal University, Princess Aisha Bint Al Hussein College for Nursing and Health Sciences, Jordan

2. Al-Hussein Bin Talal University, Princess Aisha College for Nursing and Allied Science, Nursing Department, Jordan

3. Al-Hussein Bin Talal University, Princess Aisha Bint Al-Hussein College of Nursing and Health Sciences, Ma’an, Jordan

4. University of Petra, Jordan University of Science and Technology, Jordan

Abstract

Breast cancer must be addressed by a multidisciplinary team aiming at the patient’s comprehensive treatment. Recent advances in science make it possible to evaluate tumor staging and point out the specific treatment. However, these advances must be combined with the availability of resources and the easy operability of the technique. This study is aimed at distinguishing and classifying benign and malignant cells, which are tumor types, from the data on the Wisconsin Diagnostic Breast Cancer (WDBC) dataset by applying data mining classification and clustering techniques with the help of the Weka tool. In addition, various algorithms and techniques used in data mining were measured with success percentages, and the most successful ones on the dataset were determined and compared with each other.

Publisher

Hindawi Limited

Subject

Biomedical Engineering,Bioengineering,Medicine (miscellaneous),Biotechnology

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