Litcius/Paper detail

Malignant and Benign Breast Cancer Classification using Machine Learning Algorithms

Sharmin Ara, Annesha Das, Ashim Dey

2021141 citationsDOI

Abstract

At the moment, the most prevalent form of cancer diagnosed in women across the globe is breast cancer. It develops in the breast tissue and is one of the most frequent causes of women's death. This cancer can be cured if it is diagnosed at preliminary stage. Malignant and benign are two types of tumor found in case of breast cancer. Malignant tumors are deadly as their rate of growth is much higher than benign tumors. So, early identification of tumor type is pivotal for the appropriate treatment of a patient having breast cancer. In this work, Wisconsin Breast Cancer Dataset has been used which was collected from UCI repository. Our goal is to analyze the dataset and evaluate the performance of various machine learning algorithms for predicting breast cancer. Here, Support Vector Machine, Logistic Regression, K-Nearest Neighbors, Decision Tree, Naive Bayes and Random Forest classifiers have been implemented for classifying tumors into benign and malignant. The accuracy of each algorithm is calculated and compared to find the most suitable one. Based on the analysis, Random Forest and Support Vector Machine outperform other classifiers with accuracy of 96.5%. These classifiers can be used to build an automatic diagnostic system for preliminary diagnosis of breast cancer.

Topics & Concepts

Breast cancerRandom forestNaive Bayes classifierMachine learningArtificial intelligenceDecision treeSupport vector machineLogistic regressionCancerAlgorithmStatistical classificationComputer scienceIdentification (biology)MedicineInternal medicineBiologyBotanyAI in cancer detectionGene expression and cancer classificationArtificial Intelligence in Healthcare
Malignant and Benign Breast Cancer Classification using Machine Learning Algorithms | Litcius