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Open AccessJournal ArticleDOI

Two Level Diagnosis of Breast Cancer using Data Mining

Rajkamal KaurGrewal, +1 more
- 26 Mar 2014 - 
- Vol. 89, Iss: 18, pp 41-47
TLDR
Evaluate the performance based on correct and incorrect element of data classification using J48 classification algorithm and shows that classification accuracy, sensitivity and specificity of J48 is good.
Abstract
Cancer is a dreadful disease. Mostly women affected with breast cancer disease. Mainly problem in medical science is to diagnosis of breast cancer at early stage. So the early detection of breast cancer is important for saving life. In this work, develop method for diagnosis of breast cancer at two levels. At the first level diagnosis is based Wisconsin Breast Cancer dataset (pathological test result) and classified into malignant and benign class. At the second level diagnosis based on pathological and physiological parameters of malignant breast cancer dataset and classified into five breast cancer disease as: Ductal Carcinoma in Situ(DCIS), Lobular Carcinoma in Situ(LCIS), Invasive Ductal Carcinoma(IDC), Invasive Lobular Carcinoma(ILC) and Mucinous Carcinoma(MC). In this paper evaluate the performance based on correct and incorrect element of data classification using J48 classification algorithm. The experiment result shows that classification accuracy, sensitivity and specificity of J48 is good.

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Application of data mining techniques to predict length of stay of stroke patients

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Developing A Web based System for Breast Cancer Prediction using XGboost Classifier

TL;DR: A web based diagnosis system for which the comparative study of the supervised machine learning classifiers is done to get to know which classifier is giving the best accuracy, and dataset from the Wisconsin breast cancer database is taken.
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TL;DR: There is lack of effective analysis tools to discover hidden relationships and trends in data, which can be achieved by various data mining algorithms, which will be discussed in this survey.
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Proceedings ArticleDOI

Diagnosis of Invasive Ductal Carcinoma using image processing techniques

TL;DR: An algorithm to diagnose invasive Ductal Carcinoma by the analysis and processing of cytology images using MATLAB is proposed which finds applications in automated screening programs.
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