使用集成分类器的脑肿瘤分类

M. Venkata Subbarao, G. Challa Ram, D. Girish Kumar, Sudheer Kumar Terlapu
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引用次数: 3

摘要

在医学分析和治疗中,首要的步骤是确定肿瘤是否存在于大脑和患处。对此,脑肿瘤(BT)分类有助于医生了解肿瘤的分期。本文提出了一种基于集成分类器的BT分类方法。为了训练分类器,从MRI图像中提取了17个冗余噪声特征。在训练阶段,将这些特征输入到各种EC分类器中进行学习。在测试阶段,使用训练好的模型来识别MRI图像的类别。在不同的训练速率下,分析了所提出的EC分类器的性能。分析了不同训练速率下不同磁共振图像数据集的性能。实验结果表明,EC分类器的性能优于大多数传统的机器学习分类器,如随机预测、逻辑回归和朴素贝叶斯分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Brain Tumor Classification using Ensemble Classifiers
In Medical analysis and treatment the primary step is to identify the presence of tumor in brain and the effected area. In this regard, Brain Tumor (BT) classification helps the doctor to know the stage of tumor. This paper presents BT classification using a set of ensemble classifiers (EC). To train the classifier 17 redundant noise features are extracted from the MRI images. In training phase, these features are fed to variety of EC classifiers for learning. In testing phase, the trained model is used to identify the class of MRI image. Performance of proposed EC classifiers are analyzed under different training rates. Performance is analyzed for different MR image data sets under different training rates. Experimental results depicted that EC classifiers performance is superior than most of the traditional machine learning (ML) classifiers such as random forecasting, logistic regression, and naive bayes classifiers.
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