首页> 外文会议>MICCAI 2011;International conference on medical image computing and computer-assisted intervention >Fully Automatic Segmentation of Brain Tumor Images Using Support Vector Machine Classification in Combination with Hierarchical Conditional Random Field Regularization
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Fully Automatic Segmentation of Brain Tumor Images Using Support Vector Machine Classification in Combination with Hierarchical Conditional Random Field Regularization

机译:支持向量机分类与分层条件随机场正则化相结合的脑肿瘤图像全自动分割

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Delineating brain tumor boundaries from magnetic resonance images is an essential task for the analysis of brain cancer. We propose a fully automatic method for brain tissue segmentation, which combines Support Vector Machine classification using multispectral intensities and textures with subsequent hierarchical regularization based on Conditional Random Fields. The CRF regularization introduces spatial constraints to the powerful SVM classification, which assumes voxels to be independent from their neighbors. The approach first separates healthy and tumor tissue before both regions are subclassified into cere-brospinal fluid, white matter, gray matter and necrotic, active, edema region respectively in a novel hierarchical way. The hierarchical approach adds robustness and speed by allowing to apply different levels of regularization at different stages. The method is fast and tailored to standard clinical acquisition protocols. It was assessed on 10 multispectral patient datasets with results outperforming previous methods in terms of segmentation detail and computation times.
机译:从磁共振图像划定脑肿瘤边界是分析脑癌的重要任务。我们提出了一种用于脑组织分割的全自动方法,该方法将使用多光谱强度和纹理的支持向量机分类与基于条件随机场的后续分层正则化相结合。 CRF正则化将空间约束引入到强大的SVM分类中,该分类假定体素与其邻居无关。该方法首先将健康和肿瘤组织分开,然后以新颖的分层方式将这两个区域分别细分为脑脊液,白质,灰质和坏死,活动性水肿区域。分层方法允许在不同阶段应用不同级别的正则化,从而提高了健壮性和速度。该方法快速且适合标准临床采集方案。在10个多光谱患者数据集上进行了评估,其结果在细分细节和计算时间方面均优于以前的方法。

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