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Segmentation of Multiple Sclerosis Lesions Using Support Vector Machines

机译:支持向量机分割多发性硬化症

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In this paper we present preliminary results to automatically segment multiple sclerosis (MS) lesions in multispectral magnetic resonance datasets using support vector machines (SVM). A total of eighteen studies (each composed of T1-, T2-weighted and FLAIR images) acquired from a 3T GE Signa scanner was analyzed. A neuroradiologist used a computer-assisted technique to identify all MS lesions in each study. These results were used later in the training and testing stages of the SVM classifier. A preprocessing stage including anisotropic diffusion filtering, non-uniformity intensity correction, and intensity tissue normalization was applied to the images. The SVM kernel used in this study was the radial basis function (RBF). The kernel parameter (γ) and the penalty value for the errors (C) were determined by using a very loose stopping criterion for the SVM decomposition. Overall, a 5-fold cross-validation accuracy rate of was achieved in the automatic classification of MS lesion voxels using the proposed S VM-RBF classifier.
机译:在本文中,我们介绍了使用支持向量机(SVM)自动分割多光谱磁共振数据集中的多发性硬化(MS)病变的初步结果。总共分析了从3T GE Signa扫描仪获得的18项研究(每项研究均由T1,T2加权和FLAIR图像组成)。一位神经放射科医生使用计算机辅助技术来识别每项研究中的所有MS病变。这些结果稍后将在SVM分类器的训练和测试阶段中使用。将包括各向异性扩散滤波,非均匀强度校正和强度组织归一化的预处理阶段应用于图像。在这项研究中使用的SVM内核是径向基函数(RBF)。通过使用非常宽松的SVM分解停止标准来确定内核参数(γ)和错误的惩罚值(C)。总体而言,使用提出的S VM-RBF分类器对MS病变体素进行自动分类时,交叉验证的准确率达到了5倍。

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