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Hybrid RGSA and Support Vector Machine Framework for Three-Dimensional Magnetic Resonance Brain Tumor Classification

机译:用于三维磁共振脑肿瘤分类的混合RGSA和支持向量机框架

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摘要

A novel hybrid approach for the identification of brain regions using magnetic resonance images accountable for brain tumor is presented in this paper. Classification of medical images is substantial in both clinical and research areas. Magnetic resonance imaging (MRI) modality outperforms towards diagnosing brain abnormalities like brain tumor, multiple sclerosis, hemorrhage, and many more. The primary objective of this work is to propose a three-dimensional (3D) novel brain tumor classification model using MRI images with both micro- and macroscale textures designed to differentiate the MRI of brain under two classes of lesion, benign and malignant. The design approach was initially preprocessed using 3D Gaussian filter. Based on VOI (volume of interest) of the image, features were extracted using 3D volumetric Square Centroid Lines Gray Level Distribution Method (SCLGM) along with 3D run length and cooccurrence matrix. The optimal features are selected using the proposed refined gravitational search algorithm (RGSA). Support vector machines, over backpropagation network, and k-nearest neighbor are used to evaluate the goodness of classifier approach. The preliminary evaluation of the system is performed using 320 real-time brain MRI images. The system is trained and tested by using a leave-one-case-out method. The performance of the classifier is tested using the receiver operating characteristic curve of 0.986 (±002). The experimental results demonstrate the systematic and efficient feature extraction and feature selection algorithm to the performance of state-of-the-art feature classification methods.
机译:本文提出了一种新颖的混合方法,该方法使用负责脑肿瘤的磁共振图像来识别大脑区域。医学图像的分类在临床和研究领域都是重要的。磁共振成像(MRI)方式在诊断脑部异常(例如脑部肿瘤,多发性硬化症,出血等)方面表现出色。这项工作的主要目的是提出一种三维(3D)新型脑肿瘤分类模型,该模型使用具有微观和宏观纹理的MRI图像设计,以区分两种病变(良性和恶性)下的MRI。最初使用3D高斯滤波器对设计方法进行了预处理。基于图像的VOI(目标体积),使用3D体积方形质心线灰度分布方法(SCLGM)以及3D游程长度和共现矩阵提取特征。使用建议的精确重力搜索算法(RGSA)选择最佳特征。支持向量机,反向传播网络和k近邻算法用于评估分类器方法的优越性。使用320个实时脑部MRI图像对系统进行初步评估。该系统是通过留一事例法进行培训和测试的。使用0.986(±002)的接收器工作特性曲线测试分类器的性能。实验结果证明了系统和有效的特征提取和特征选择算法对最新特征分类方法的性能。

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