Classifying breast cancer types based on fine needle aspiration biopsy data using random forest classifier

Breast cancer is a complex and heterogeneous disease due to its diverse morphological features, as well as different clinical outcome. As a result, breast cancer patients may response to different therapeutic options.Currently, difficulties in recognizing the breast cancer types lead to inefficie...

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Main Authors: Ahmad, Farzana Kabir, Yusoff, Nooraini
Format: Conference or Workshop Item
Language:English
Published: 2013
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Online Access:http://repo.uum.edu.my/9905/1/F.pdf
http://repo.uum.edu.my/9905/
http://www.mirlabs.net/isda13/committees.php
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spelling my.uum.repo.99052013-12-24T01:04:39Z http://repo.uum.edu.my/9905/ Classifying breast cancer types based on fine needle aspiration biopsy data using random forest classifier Ahmad, Farzana Kabir Yusoff, Nooraini T Technology (General) Breast cancer is a complex and heterogeneous disease due to its diverse morphological features, as well as different clinical outcome. As a result, breast cancer patients may response to different therapeutic options.Currently, difficulties in recognizing the breast cancer types lead to inefficient treatments.Generally, there are two types of breast cancer, known as malignant and benign.Therefore it is necessary to devise a clinically meaningful classification of the disease that can accurately classify breast cancer tissues into relevant classes.This study aims to classify breast cancer lesions which have been obtained from fine needle aspiration (FNA) procedure using random forest. Random forest is a classifier built based on the combination of decision trees and has been identified to perform well in comparison to other machine learning techniques.This method has been tested on approximately 700 data, which consists of 458 instances from benign cases and 241 instances belong to malignant cases.The performance of proposed method is measured based on sensitivity, specificity and accuracy.The experimental results show that, random forest achieved sensitivity of 75%, specificity of 70% and accuracy about 72%.Thus, it can be concluded that random forest can accurately classify breast cancer types given a small number of features and it works as a promising tool to differentiate malignant from benign tumor at early stage. 2013-12-08 Conference or Workshop Item PeerReviewed application/pdf en http://repo.uum.edu.my/9905/1/F.pdf Ahmad, Farzana Kabir and Yusoff, Nooraini (2013) Classifying breast cancer types based on fine needle aspiration biopsy data using random forest classifier. In: 13th International Conference on Intelligent Systems Design and Applications (ISDA), 08-10 December 2013, Univesiti Putra Malaysia, Malaysia. http://www.mirlabs.net/isda13/committees.php
institution Universiti Utara Malaysia
building UUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Utara Malaysia
content_source UUM Institutionali Repository
url_provider http://repo.uum.edu.my/
language English
topic T Technology (General)
spellingShingle T Technology (General)
Ahmad, Farzana Kabir
Yusoff, Nooraini
Classifying breast cancer types based on fine needle aspiration biopsy data using random forest classifier
description Breast cancer is a complex and heterogeneous disease due to its diverse morphological features, as well as different clinical outcome. As a result, breast cancer patients may response to different therapeutic options.Currently, difficulties in recognizing the breast cancer types lead to inefficient treatments.Generally, there are two types of breast cancer, known as malignant and benign.Therefore it is necessary to devise a clinically meaningful classification of the disease that can accurately classify breast cancer tissues into relevant classes.This study aims to classify breast cancer lesions which have been obtained from fine needle aspiration (FNA) procedure using random forest. Random forest is a classifier built based on the combination of decision trees and has been identified to perform well in comparison to other machine learning techniques.This method has been tested on approximately 700 data, which consists of 458 instances from benign cases and 241 instances belong to malignant cases.The performance of proposed method is measured based on sensitivity, specificity and accuracy.The experimental results show that, random forest achieved sensitivity of 75%, specificity of 70% and accuracy about 72%.Thus, it can be concluded that random forest can accurately classify breast cancer types given a small number of features and it works as a promising tool to differentiate malignant from benign tumor at early stage.
format Conference or Workshop Item
author Ahmad, Farzana Kabir
Yusoff, Nooraini
author_facet Ahmad, Farzana Kabir
Yusoff, Nooraini
author_sort Ahmad, Farzana Kabir
title Classifying breast cancer types based on fine needle aspiration biopsy data using random forest classifier
title_short Classifying breast cancer types based on fine needle aspiration biopsy data using random forest classifier
title_full Classifying breast cancer types based on fine needle aspiration biopsy data using random forest classifier
title_fullStr Classifying breast cancer types based on fine needle aspiration biopsy data using random forest classifier
title_full_unstemmed Classifying breast cancer types based on fine needle aspiration biopsy data using random forest classifier
title_sort classifying breast cancer types based on fine needle aspiration biopsy data using random forest classifier
publishDate 2013
url http://repo.uum.edu.my/9905/1/F.pdf
http://repo.uum.edu.my/9905/
http://www.mirlabs.net/isda13/committees.php
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score 13.209306