首页> 外文会议>International conference on medical image computing and computer-assisted intervention;MICCAI 2010 >Spatial Decision Forests for MS Lesion Segmentation in Multi-Channel MR Images
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Spatial Decision Forests for MS Lesion Segmentation in Multi-Channel MR Images

机译:多通道MR图像中MS病变分割的空间决策森林

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A new algorithm is presented for the automatic segmentation of Multiple Sclerosis (MS) lesions in 3D MR images. It builds on the discriminative random decision forest framework to provide a voxel-wise probabilistic classification of the volume. Our method uses multi-channel MR intensities (Tl, T2, Flair), spatial prior and long-range comparisons with 3D regions to discriminate lesions. A symmetry feature is introduced accounting for the fact that some MS lesions tend to develop in an asymmetric way. Quantitative evaluation of the data is carried out on publicly available labeled cases from the MS Lesion Segmentation Challenge 2008 dataset and demonstrates improved results over the state of the art.
机译:提出了一种新的算法,用于在3D MR图像中自动分割多发性硬化(MS)病变。它建立在可区分的随机决策森林框架上,以提供体量的体积概率分类。我们的方法使用多通道MR强度(T1,T2,Flair),与3D区域的空间先验和远距离比较来区分病变。引入了对称特征,说明了一些MS病变倾向于以不对称方式发展的事实。数据的定量评估是在2008年MS病灶分割挑战数据集中公开标记的病例中进行的,证明了现有技术水平上的改进结果。

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