LGCYMLFeb 11, 2019

Prediction of Malignant & Benign Breast Cancer: A Data Mining Approach in Healthcare Applications

arXiv:1902.03825v479 citations
Originality Synthesis-oriented
AI Analysis

This work addresses early detection of breast cancer for healthcare applications, but it is incremental as it applies existing methods to a standard dataset.

The paper tackles breast cancer prediction by implementing twelve classification algorithms on the Wisconsin dataset, achieving unspecified performance results.

As much as data science is playing a pivotal role everywhere, healthcare also finds it prominent application. Breast Cancer is the top rated type of cancer amongst women; which took away 627,000 lives alone. This high mortality rate due to breast cancer does need attention, for early detection so that prevention can be done in time. As a potential contributor to state-of-art technology development, data mining finds a multi-fold application in predicting Brest cancer. This work focuses on different classification techniques implementation for data mining in predicting malignant and benign breast cancer. Breast Cancer Wisconsin data set from the UCI repository has been used as experimental dataset while attribute clump thickness being used as an evaluation class. The performances of these twelve algorithms: Ada Boost M 1, Decision Table, J Rip, Lazy IBK, Logistics Regression, Multiclass Classifier, Multilayer Perceptron, Naive Bayes, Random forest and Random Tree are analyzed on this data set. Keywords- Data Mining, Classification Techniques, UCI repository, Breast Cancer, Classification Algorithms

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