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Multi-kernel SVM based classification for brain tumor segmentation of MRI multi-sequence

机译:基于多核SVM的MRI多序列脑肿瘤分割分类

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In this paper, the multi-kernel SVM (Support Vector Machine) classification, integrated with a fusion process, is proposed to segment brain tumor from multi-sequence MRI images (T2, PD, FLAIR). The objective is to quantify the evolution of a tumor during a therapeutic treatment. As the procedure develops, a manual learning process about the tumor is carried out just on the first MRI examination. Then the follow-up on coming examinations adapts the learning automatically and delineates the tumor. Our method consists of two steps. The first one classifies the tumor region using a multi-kernel SVM which performs on multi-image sources and obtains relative multi-result. The second one ameliorates the contour of the tumor region using both the distance and the maximum likelihood measures. Our method has been tested on real patient images. The quantification evaluation proves the effectiveness of the proposed method.
机译:在本文中,提出了与融合过程集成的多核SVM(支持向量机)分类,从多序列MRI图像(T2,Pd,Flair)分段脑肿瘤。目的是在治疗治疗过程中量化肿瘤的演变。随着程序的发展,关于肿瘤的手动学习过程是在第一次MRI检查中进行的。然后,即将到来的考试的后续行动会自动调整学习并划定肿瘤。我们的方法由两个步骤组成。第一个使用多核SVM对肿瘤区域进行分类,该多核SVM在多图像源上执行并获得相对多结果。第二个可以使用距离和最大似然度来改善肿瘤区域的轮廓。我们的方法已经在真实的患者图像上进行了测试。量化评估证明了该方法的有效性。

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