Breast Cancer Prediction Using the Affinity Propagation Clustering with Regard to the Weights of Variables

By using data mining tools in the field of medical diagnosis, some limitations such as the high cost of some tests or their timing will be addressed. In addition, the existence of errors in some experiments has led researchers to be welcomed by categorization methods. In this regard, the present stu...

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Main Authors: Sina Dami, Zeinab Hatamchuri
Format: Article
Language:fas
Published: University of Qom 2020-09-01
Series:مدیریت مهندسی و رایانش نرم
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Online Access:https://jemsc.qom.ac.ir/article_1274_2dc216d915e4337aa3fc8ebac5df5dc5.pdf
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author Sina Dami
Zeinab Hatamchuri
author_facet Sina Dami
Zeinab Hatamchuri
author_sort Sina Dami
collection DOAJ
description By using data mining tools in the field of medical diagnosis, some limitations such as the high cost of some tests or their timing will be addressed. In addition, the existence of errors in some experiments has led researchers to be welcomed by categorization methods. In this regard, the present study, based on the combination of clustering and categorization methods, has proposed a new method for the diagnosis of breast cancer. In this operation, the combination is performed using an iterative algorithm and a dependency propagation clustering algorithm. This method produces weights for variables using an innovative algorithm and forms cluster clusters based on the dependency propagation algorithm. Then the number of clusters as a new variable is added to the data, and in the next step, the block algorithm is implemented on the modified dataset containing the main data and the number of clusters. According to the accuracy index, the weights production continues to reach the highest possible precision. According to the numerical experiments conducted in this study, the combination of the dependency emission clustering algorithm with an average accuracy of 36.98 was the most accurate. In addition, the Wilcoxon assumption test confirmed the superiority of the combined neural network compared to other methods.
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issn 2538-6239
2538-2675
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series مدیریت مهندسی و رایانش نرم
spelling doaj-art-952914e7f9b34b2896033124b4ee3cf82025-01-30T20:17:43ZfasUniversity of Qomمدیریت مهندسی و رایانش نرم2538-62392538-26752020-09-0162698110.22091/jemsc.2018.12741274Breast Cancer Prediction Using the Affinity Propagation Clustering with Regard to the Weights of VariablesSina Dami0Zeinab Hatamchuri1Dept. Computer Engineering, West Tehran Branch, Islamic Azad University, IranDept. Computer Engineering, West Tehran Branch,Islamic Azad University, IranBy using data mining tools in the field of medical diagnosis, some limitations such as the high cost of some tests or their timing will be addressed. In addition, the existence of errors in some experiments has led researchers to be welcomed by categorization methods. In this regard, the present study, based on the combination of clustering and categorization methods, has proposed a new method for the diagnosis of breast cancer. In this operation, the combination is performed using an iterative algorithm and a dependency propagation clustering algorithm. This method produces weights for variables using an innovative algorithm and forms cluster clusters based on the dependency propagation algorithm. Then the number of clusters as a new variable is added to the data, and in the next step, the block algorithm is implemented on the modified dataset containing the main data and the number of clusters. According to the accuracy index, the weights production continues to reach the highest possible precision. According to the numerical experiments conducted in this study, the combination of the dependency emission clustering algorithm with an average accuracy of 36.98 was the most accurate. In addition, the Wilcoxon assumption test confirmed the superiority of the combined neural network compared to other methods.https://jemsc.qom.ac.ir/article_1274_2dc216d915e4337aa3fc8ebac5df5dc5.pdfclusteringbreast cancerdependency propagation algorithmwilcoxon assumption test
spellingShingle Sina Dami
Zeinab Hatamchuri
Breast Cancer Prediction Using the Affinity Propagation Clustering with Regard to the Weights of Variables
مدیریت مهندسی و رایانش نرم
clustering
breast cancer
dependency propagation algorithm
wilcoxon assumption test
title Breast Cancer Prediction Using the Affinity Propagation Clustering with Regard to the Weights of Variables
title_full Breast Cancer Prediction Using the Affinity Propagation Clustering with Regard to the Weights of Variables
title_fullStr Breast Cancer Prediction Using the Affinity Propagation Clustering with Regard to the Weights of Variables
title_full_unstemmed Breast Cancer Prediction Using the Affinity Propagation Clustering with Regard to the Weights of Variables
title_short Breast Cancer Prediction Using the Affinity Propagation Clustering with Regard to the Weights of Variables
title_sort breast cancer prediction using the affinity propagation clustering with regard to the weights of variables
topic clustering
breast cancer
dependency propagation algorithm
wilcoxon assumption test
url https://jemsc.qom.ac.ir/article_1274_2dc216d915e4337aa3fc8ebac5df5dc5.pdf
work_keys_str_mv AT sinadami breastcancerpredictionusingtheaffinitypropagationclusteringwithregardtotheweightsofvariables
AT zeinabhatamchuri breastcancerpredictionusingtheaffinitypropagationclusteringwithregardtotheweightsofvariables