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Performance analysis of Gabor-Wavelet based features in classification of high grade malignant brain tumors

机译:基于Gabor-Wavelet的特征在高级别恶性脑肿瘤分类中的性能分析

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Incorporating machine learning based concepts and knowledge in medical science domain elaborates the inter-disciplinary research areas. Using such the identification of the disease is accomplished at initial state of its generation with better accuracy as compared to naked eye. In past, lot of feature extraction approaches were proposed to extract the features in spectral domain. Among all approaches, two major approaches was Gabor filter based feature extraction and Wavelet based feature extraction mechanism. But it leads to the kiosk that which feature extraction mechanism is better for classification perspective. This paper focuses on machine learning based approach for performance analysis for the grade of malignant tumor types using a diverse feature set based on Gabor and Wavelet transformation. Further, various feature selection (FS) algorithms are taken into consideration for selection of the best feature set among the feature vector. For experimental purpose, several state-of-art classifiers are used for analysis of the performance for the classification of malignant brain tumors in magnetic resonance (MR) images. In experimentation several high grade malignant brain tumors like Central Neuro Cytoma (CNC), Glioblastoma Multiforme (GBM), Gliomas, Intra Ventricular Malignant Mass, and Metastasis are taken into consideration having 30 images of each tumor type. The classification accuracies achieved using various combinations of FS-Classifler's are presented in detail.
机译:将基于机器学习的概念和知识整合到医学领域中,可以阐明跨学科研究领域。与裸眼相比,使用这种疾病的识别是在疾病的初始状态下以更高的准确性完成的。过去,提出了许多特征提取方法来提取光谱域中的特征。在所有方法中,两种主要方法是基于Gabor滤波器的特征提取和基于小波的特征提取机制。但这会导致信息亭中的特征提取机制更适合分类。本文重点研究基于机器学习的方法,该方法使用基于Gabor和Wavelet变换的多种功能集对恶性肿瘤类型的等级进行性能分析。此外,在特征向量中选择最佳特征集时考虑了各种特征选择(FS)算法。出于实验目的,使用了几种最新的分类器来分析磁共振(MR)图像中对恶性脑肿瘤进行分类的性能。在实验中,考虑了多种高度恶性脑肿瘤,例如中枢神经细胞瘤(CNC),多形胶质母细胞瘤(GBM),胶质瘤,心室内恶性肿块和转移,每种肿瘤类型都有30张图像。详细介绍了使用FS-Classifler的各种组合实现的分类精度。

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