Comparing the Functionality of Predicting Models for Breast Cancer Recurrence Based on Data Mining Techniques

Introduction: After applying breast cancer treatment methods, there is a possibility of recurrence of the disease. The aim of the present study was using data mining techniques in order to provide predicting models for breast cancer recurrence. Methods: 18 features of 809 patients were used in the...

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Main Authors: Elham Mirzakazemi, Mohammad Ghamgosar-Naseri
Format: Article
Language:fas
Published: Vesnu Publications 2017-10-01
Series:مدیریت اطلاعات سلامت
Subjects:
Online Access:http://him.mui.ac.ir/index.php/him/article/view/3088
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spelling doaj-d0c533599d234430b4a41fd364eb5e3b2020-11-24T22:05:34ZfasVesnu Publications مدیریت اطلاعات سلامت1735-78531735-98132017-10-01144144149923Comparing the Functionality of Predicting Models for Breast Cancer Recurrence Based on Data Mining TechniquesElham Mirzakazemi0Mohammad Ghamgosar-Naseri1Lecturer, Computer Software Engineering, Department of Computer and Electrical, Institute of Higher Education, Rasht Academic Center for Education, Culture and Research (ACECR), Rasht, IranLecturer, Applied Mathematics, Department of Computer and Electrical, Institute of Higher Education, Rasht Academic Center for Education, Culture and Research (ACECR), Rasht, IranIntroduction: After applying breast cancer treatment methods, there is a possibility of recurrence of the disease. The aim of the present study was using data mining techniques in order to provide predicting models for breast cancer recurrence. Methods: 18 features of 809 patients were used in the current descriptive study. The study consisted of two phases, preprocessing phase and model learning. Expectation Maximization (EM) and Classification and Regression (C and R) were used for the analysis of the first phase. In order to analyze the second phase, the five algorithm model including Neural Network, C and R, the decision tree algorithm C5.0, Bayes Net, and Support Vector Machine (SVM) was used. Results: The accuracy of the EM and C and R algorithms was 0.641 and 0.420, respectively, in the preprocessing phase. The accuracy of Neural Network, C and R, the decision tree algorithm C5.0, Bayes Net, and SVM algorithms was 0.858, 0.865, 0.870, 0.883, and 0.998, respectively, for the model learning phase. Conclusion: According to the findings, the model with the application of EM algorithm in the first phase and SVM algorithm in the second phase had the highest functionality. It was also important in determining the treatment process.http://him.mui.ac.ir/index.php/him/article/view/3088Data MiningRecurrenceBreast CancerAlgorithm
collection DOAJ
language fas
format Article
sources DOAJ
author Elham Mirzakazemi
Mohammad Ghamgosar-Naseri
spellingShingle Elham Mirzakazemi
Mohammad Ghamgosar-Naseri
Comparing the Functionality of Predicting Models for Breast Cancer Recurrence Based on Data Mining Techniques
مدیریت اطلاعات سلامت
Data Mining
Recurrence
Breast Cancer
Algorithm
author_facet Elham Mirzakazemi
Mohammad Ghamgosar-Naseri
author_sort Elham Mirzakazemi
title Comparing the Functionality of Predicting Models for Breast Cancer Recurrence Based on Data Mining Techniques
title_short Comparing the Functionality of Predicting Models for Breast Cancer Recurrence Based on Data Mining Techniques
title_full Comparing the Functionality of Predicting Models for Breast Cancer Recurrence Based on Data Mining Techniques
title_fullStr Comparing the Functionality of Predicting Models for Breast Cancer Recurrence Based on Data Mining Techniques
title_full_unstemmed Comparing the Functionality of Predicting Models for Breast Cancer Recurrence Based on Data Mining Techniques
title_sort comparing the functionality of predicting models for breast cancer recurrence based on data mining techniques
publisher Vesnu Publications
series مدیریت اطلاعات سلامت
issn 1735-7853
1735-9813
publishDate 2017-10-01
description Introduction: After applying breast cancer treatment methods, there is a possibility of recurrence of the disease. The aim of the present study was using data mining techniques in order to provide predicting models for breast cancer recurrence. Methods: 18 features of 809 patients were used in the current descriptive study. The study consisted of two phases, preprocessing phase and model learning. Expectation Maximization (EM) and Classification and Regression (C and R) were used for the analysis of the first phase. In order to analyze the second phase, the five algorithm model including Neural Network, C and R, the decision tree algorithm C5.0, Bayes Net, and Support Vector Machine (SVM) was used. Results: The accuracy of the EM and C and R algorithms was 0.641 and 0.420, respectively, in the preprocessing phase. The accuracy of Neural Network, C and R, the decision tree algorithm C5.0, Bayes Net, and SVM algorithms was 0.858, 0.865, 0.870, 0.883, and 0.998, respectively, for the model learning phase. Conclusion: According to the findings, the model with the application of EM algorithm in the first phase and SVM algorithm in the second phase had the highest functionality. It was also important in determining the treatment process.
topic Data Mining
Recurrence
Breast Cancer
Algorithm
url http://him.mui.ac.ir/index.php/him/article/view/3088
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