基于概率特征的脑肿瘤MRI分类方法比较

L. Farhi, Adeel Yusuf
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引用次数: 12

摘要

脑肿瘤一直是各年龄段人群死亡的主要原因之一。提高患者生存率的方法之一是在早期阶段正确诊断癌症。有几种分类器可以对癌症图像进行高精度的分类。本文的目的是简要介绍文献中用于MRI图像中脑肿瘤分类的主要机器学习方法。为了对文献中使用的不同方法进行无偏比较,我们使用灰度共生矩阵概率特征(GLCM)作为输入特征来训练和测试模型。使用两种方法来确定特征约简对分类精度的重要性。在第一种方法中,从GLCM中提取的特征集应用于分类器进行性能比较。在第二种方法中,使用主成分分析(PCA)对提取的特征进行约简,然后将不相关的约简向量应用于相同的分类器。结果,观察到减少的不相关特征将所有分类器的准确率提高了10%至27%。
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Comparison of brain tumor MRI classification methods using probabilistic features
Brain tumor has remained one of the key causes of death in people of all ages. One way to increase survival rate amongst patients is to correctly diagnose cancer in its early stages. There are several classifiers which can classify cancer images with high accuracy. The goal of this paper was to present a brief survey of the main machine learning methods used in literature to classify brain tumor in MRI images. For an unbiased comparison between the different methods used in literature, gray level co-occurrence matrix probabilistic features(GLCM) were used as input features for training and testing the models. Two methodologies were used to establish the significance of feature reduction in classification accuracy. In the first methodology, the extracted feature set from GLCM was applied to the classifiers for comparison of performance. In the second methodology, principal component analysis (PCA) was used to reduce the extracted features and afterwards the uncorrelated reduced vector was applied to the same classifiers. As a result, it was observed that the reduced uncorrelated features improved the accuracy of all classifiers by 10 to 27%.
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