Journal of Engineering and Applied Sciences

Year: 2016
Volume: 11
Issue: 11
Page No. 2430 - 2439

A Review of the Automatic Methods of Cancer Detection in Terms of Accuracy, Speed, Error and the Number of Properties (Case Study: Breast Cancer)

Authors : Jalilvand Farnaz

Abstract: The purpose of this study is are view of the automatic methods of cancer detection in terms of accuracy, speed, error and the number of properties and we have selected the breast cancer as the subject of the case study. The data used in this academic study area courtesy of the UCI in California. This database is called the wisconsin breast cancer datasets and includes 699 data units divided into benign and malignant classes. Ten properties wereassigned to each datum. Four types of algorithms are used in this study, namely, classification algorithms, vector machine algorithms, neural networks algorithms and data mining algorithms. Each category was evaluated separately and the best method in each category was identified in terms of accuracy, speed, error and the number of properties.

How to cite this article:

Jalilvand Farnaz , 2016. A Review of the Automatic Methods of Cancer Detection in Terms of Accuracy, Speed, Error and the Number of Properties (Case Study: Breast Cancer). Journal of Engineering and Applied Sciences, 11: 2430-2439.

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