Breast cancer classification application based on QGA-SVM

Author:

Dong Yumin1,Li Ziyi1,Chen Zhengquan1,Xu Yuewen1,Zhang Yunan1

Affiliation:

1. College of Computer and Information Science, Chongqing Normal University, Chongqing, China

Abstract

Early diagnosis of breast cancer plays an important role in improving survival rate. Physiological changes of breast tissue can be observed and measured through medical electrical impedance, and the results can be used as a preliminary diagnosis by doctors before treatment. In this paper, quantum genetic algorithm (QGA) and support vector machine (SVM) were combined to classify breast tissues to help clinicians in diagnosis. The algorithm uses QGA to optimize the parameters of SVM and improve the classification performance of SVM. In this experiment, the electrical impedance data measured from breast tissue provided by UCI [58] was used as the data set. Objectively speaking, the data volume of the data set is small and the representativeness is not strong enough. However, the experimental results show that QGA-SVM shows better classification performance, and it is better than SVM.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference56 articles.

1. Shawarib M.Z.A. , Latif A.E.A. , Al-Zatmah B.E.E.D. , Abu-Naser S.S. Breast Cancer Diagnosis and Survival Prediction UsingJNN, International Journal of Engineering and InformationSystems (IJEAIS) 4(10) (2020).

2. Deep learning forbreast cancer diagnosis from mammograms— a comparative study;Tsochatzidis;Journal of Imaging,2019

3. A support vectormachine-based ensemble algorithm for breast cancer diagnosis;Wang;European Journal of Operational Research,2018

4. Ahmed M.T. , Masud M.R. , Al Mamun A. Comparisons Among MultipleMachine Learning Based Classifiers for Breast Cancer Risk Stratification Using Electrical Impedance Spectroscopy, European Journal of Electrical Engineering and Computer Science 4(4) (2020).

5. Classification of breastcancer from electrical impedance measurements dataset in samples offreshly excised breast tissues;Verma;Platform: A Journal of Scienceand Technology,2021

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