Comparison of Different Classifiers for Prediction of Breast Cancer Metastasis in Microarray Analysis

Background: In this research, we investigated the performance of some different classifiers for prediction of metastasis in breast cancer. Methods: We used the DNA microarrays of primary breast tumors of 78 young patients. Among these patients, 34 had developed distant metastases within 5 years (po...

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Main Authors: zahra Amini, Alireza Mehridehnavi
Format: Article
Language:fas
Published: Vesnu Publications 2014-09-01
Series:مجله دانشکده پزشکی اصفهان
Subjects:
Online Access:http://jims.mui.ac.ir/index.php/jims/article/view/3352
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spelling doaj-7aad02fa2a2844db8d6f600112df3cbe2020-11-25T01:12:53ZfasVesnu Publications مجله دانشکده پزشکی اصفهان1027-75951735-854X2014-09-0132292102810351646Comparison of Different Classifiers for Prediction of Breast Cancer Metastasis in Microarray Analysiszahra Amini0Alireza Mehridehnavi1PhD Student, Department of Bioelectric and Biomedical Engineering, School of Advanced Medical Technology, Isfahan University of Medical Sciences, Isfahan, IranAssociate Professor, Department of Bioelectric and Biomedical Engineering, School of Advanced Medical Technology, Isfahan University of Medical Sciences, Isfahan, IranBackground: In this research, we investigated the performance of some different classifiers for prediction of metastasis in breast cancer. Methods: We used the DNA microarrays of primary breast tumors of 78 young patients. Among these patients, 34 had developed distant metastases within 5 years (poor prognosis group) and 44 formed good prognosis group. For analysis, we applied three different classifiers including support vector machine (SVM), stepwise linear discriminant analysis (SWLDA) and K-nearest neighbors (KNN) classifier. Each of these classifiers used 231 selected genes as an input feature vector and their performances were estimated via using leave one out (LOO) method to classify patients into two groups namely, good and poor prognosis. Findings: The best results were obtained by support vector machine with linear kernel. This classifier achieved a sensitivity and specificity of 84% and 82%, respectively, for metastasis prediction. Conclusion: Our findings provide a strategy to specify patients who would benefit from adjuvant therapy.http://jims.mui.ac.ir/index.php/jims/article/view/3352MicroarraysPrediction of breast cancerSupport vector machine (SVM)Stepwise linear discriminant analysis (SWLDA)k-nearest neighbors (KNN) classifiers
collection DOAJ
language fas
format Article
sources DOAJ
author zahra Amini
Alireza Mehridehnavi
spellingShingle zahra Amini
Alireza Mehridehnavi
Comparison of Different Classifiers for Prediction of Breast Cancer Metastasis in Microarray Analysis
مجله دانشکده پزشکی اصفهان
Microarrays
Prediction of breast cancer
Support vector machine (SVM)
Stepwise linear discriminant analysis (SWLDA)
k-nearest neighbors (KNN) classifiers
author_facet zahra Amini
Alireza Mehridehnavi
author_sort zahra Amini
title Comparison of Different Classifiers for Prediction of Breast Cancer Metastasis in Microarray Analysis
title_short Comparison of Different Classifiers for Prediction of Breast Cancer Metastasis in Microarray Analysis
title_full Comparison of Different Classifiers for Prediction of Breast Cancer Metastasis in Microarray Analysis
title_fullStr Comparison of Different Classifiers for Prediction of Breast Cancer Metastasis in Microarray Analysis
title_full_unstemmed Comparison of Different Classifiers for Prediction of Breast Cancer Metastasis in Microarray Analysis
title_sort comparison of different classifiers for prediction of breast cancer metastasis in microarray analysis
publisher Vesnu Publications
series مجله دانشکده پزشکی اصفهان
issn 1027-7595
1735-854X
publishDate 2014-09-01
description Background: In this research, we investigated the performance of some different classifiers for prediction of metastasis in breast cancer. Methods: We used the DNA microarrays of primary breast tumors of 78 young patients. Among these patients, 34 had developed distant metastases within 5 years (poor prognosis group) and 44 formed good prognosis group. For analysis, we applied three different classifiers including support vector machine (SVM), stepwise linear discriminant analysis (SWLDA) and K-nearest neighbors (KNN) classifier. Each of these classifiers used 231 selected genes as an input feature vector and their performances were estimated via using leave one out (LOO) method to classify patients into two groups namely, good and poor prognosis. Findings: The best results were obtained by support vector machine with linear kernel. This classifier achieved a sensitivity and specificity of 84% and 82%, respectively, for metastasis prediction. Conclusion: Our findings provide a strategy to specify patients who would benefit from adjuvant therapy.
topic Microarrays
Prediction of breast cancer
Support vector machine (SVM)
Stepwise linear discriminant analysis (SWLDA)
k-nearest neighbors (KNN) classifiers
url http://jims.mui.ac.ir/index.php/jims/article/view/3352
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AT alirezamehridehnavi comparisonofdifferentclassifiersforpredictionofbreastcancermetastasisinmicroarrayanalysis
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