4.6 Article

A Linear Discriminant Analysis and Classification Model for Breast Cancer Diagnosis

Journal

APPLIED SCIENCES-BASEL
Volume 12, Issue 22, Pages -

Publisher

MDPI
DOI: 10.3390/app122211455

Keywords

breast cancer; classification model; discriminant analysis; random forest; support vectors

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Although breast cancer is the most common malignancy among women globally, routine mammography for diagnosis is not available at all hospitals. In order to improve the accuracy of breast cancer diagnosis, researchers have developed a computerized method based on machine learning. This study demonstrates the effectiveness of machine learning algorithms in classifying and predicting breast cancer.
Although most cases are identified at a late stage, breast cancer is the most public malignancy amongst women globally. However, mammography for the analysis of breast cancer is not routinely available at all general hospitals. Prolonging the period between detection and treatment for breast cancer may raise the likelihood of proliferating the disease. To speed up the process of diagnosing breast cancer and lower the mortality rate, a computerized method based on machine learning was created. The purpose of this investigation was to enhance the investigative accuracy of machine-learning algorithms for breast cancer diagnosis. The use of machine-learning methods will allow for the classification and prediction of cancer as either benign or malignant. This investigation applies the machine learning algorithms of random forest (RF) and the support vector machine (SVM) with the feature extraction method of linear discriminant analysis (LDA) to the Wisconsin Breast Cancer Dataset. The SVM with LDA and RF with LDA yielded accuracy results of 96.4% and 95.6% respectively. This research has useful applications in the medical field, while it enhances the efficiency and precision of a diagnostic system. Evidence from this study shows that better prediction is crucial and can benefit from machine learning methods. The results of this study have validated the use of feature extraction for breast cancer prediction when compared to the existing literature.

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