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A new nested ensemble technique for automated diagnosis of breast cancer

为乳癌的自动化诊断的一种新嵌套的整体技术

作     者:Abdar, Moloud Zomorodi-Moghadam, Mariam Zhou, Xujuan Gururajan, Raj Tao, Xiaohui Barua, Prabal D. Gururajan, Rashmi 

作者机构:Univ Quebec Montreal Dept Informat Montreal PQ Canada Ferdowsi Univ Mashhad Dept Comp Engn Mashhad Razavi Khorasan Iran Univ Southern Queensland Sch Management & Enterprise Toowoomba Qld Australia Univ Southern Queensland Fac Hlth Engn & Sci Toowoomba Qld Australia Queensland Hlth Royal Brisbane & Womens Hosp Brisbane Qld Australia 

出 版 物:《PATTERN RECOGNITION LETTERS》 (模式识别快报)

年 卷 期:2020年第132卷

页      面:123-131页

核心收录:

学科分类:08[工学] 0812[工学-计算机科学与技术(可授工学、理学学位)] 

基  金:Commonwealth Innovation Connections Grant  Australia [RC54960] 

主  题:Data mining and machine learning Breast cancer Nested ensemble technique BayesNet classifier Naive Bayes classifier 

摘      要:Nowadays, breast cancer is reported as one of most common cancers amongst women. Early detection of this cancer is an essential to aid in informing subsequent treatments. This study investigates automated breast cancer prediction using machine learning and data mining techniques. We proposed the nested ensemble approach which used the Stacking and Vote (Voting) as the classifiers combination techniques in our ensemble methods for detecting the benign breast tumors from malignant cancers. Each nested ensemble classifier contains Classifiers and MetaClassifiers. MetaClassifiers can have more than two different classification algorithms. In this research, we developed the two-layer nested ensemble classifiers. In our two-layer nested ensemble classifiers the MetaClassifiers have two or three different classification algorithms. We conducted the experiments on Wisconsin Diagnostic Breast Cancer (WDBC) dataset and K-fold Cross Validation technique are used for the model evaluation. We compared the proposed two-layer nested ensemble classifiers with single classifiers (i.e., BayesNet and Naive Bayes) in terms of the classification accuracy, precision, recall, F 1 measure, ROC and computational times of training single and nested ensemble classifiers. We also compared our best model with previous works reported in the literatures in terms of accuracy. The results demonstrate that the proposed two-layer nested ensemble models outperformance the single classifiers and most of the previous works. Both SV-BayesNet-3MetaClassifier and SV-Naive Bayes-3-MetaClassifier achieved accuracy 98.07% (K = 10). However, SV-Naive Bayes-3-MetaClassifier is more efficiency as it needs less time to build the model. (c) 2018 Elsevier B.V. All rights reserved.

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