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Textural Based SVM for MS Lesion Segmentation in FLAIR MRIs

机译:基于纹理的SVM在FLAIR MRI中用于MS病变分割

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In this paper, a new technique is proposed for automatic segmentation of multiple sclerosis (MS) lesions from brain magnetic resonance imaging (MRI). The technique uses textural features to describe the blocks of each MRI slice along with position and neighborhood features. A trained support vector machine (SVM) is used to discriminate between the blocks in regions of MS lesions and the blocks in non-MS lesion regions based on mainly the textural features with aid of the other features. The MRI slice blocks’ classification is used to provide an initial segmentation. A comprehensive post processing module is then utilized to refine and improve the quality of the initial segmentation. The main contribution of the proposed technique described in this paper is the use of textural features to detect MS lesions in a fully automated process without the need to manually define regions of interest (ROIs). In addition, the post processing module is generic enough to be applied to the results of any other MS segmentation technique to improve the segmentation quality. This technique is evaluated using ten real MRI data-sets with 10% used in the training of the textural-based SVM. The average results for the performance evaluation of the presented technique were 0.79 for dice similarity, 0.68 for sensitivity and 0.9 for the percentage of the detected lesion load. These results indicate that the proposed method would be useful in clinical practice for the detection of MS lesions from MRI.
机译:本文提出了一种从脑磁共振成像(MRI)中自动分割多发性硬化症(MS)病变的新技术。该技术使用纹理特征来描述每个MRI切片的块以及位置和邻域特征。训练有素的支持向量机(SVM)用于主要基于纹理特征并借助其他特征来区分MS病变区域中的块和非MS病变区域中的块。 MRI切片块的分类用于提供初始分割。然后利用综合的后处理模块来完善和提高初始分割的质量。本文中描述的拟议技术的主要贡献在于,使用纹理特征可以在全自动过程中检测MS病变,而无需手动定义关注区域(ROI)。另外,后处理模块足够通用,可以应用于任何其他MS分割技术的结果,以提高分割质量。使用十个真实的MRI数据集对这项技术进行了评估,其中10%用于基于纹理的SVM的训练。提出的技术的性能评估的平均结果是骰子相似度为0.79,灵敏度为0.68,检测到的病变负荷百分比为0.9。这些结果表明,所提出的方法在临床实践中可用于从MRI检测MS病变。

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