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AUTOMATED SEGMENTATION OF BRAIN LESIONS BY COMBINING INTENSITY AND SPATIAL INFORMATION

机译:通过组合强度和空间信息自动分割脑病变

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Quantitative analysis of brain lesions in large clinical trials is becoming more and more important. We present a new automated method, that combines intensity based lesion segmentation with a false positive elimination method based on the spatial distribution of lesions. A Support Vector Regressor (S VR) is trained on expert-defined lesion masks using image histograms as features, in order to obtain an initial lesion segmentation. A lesion probability map that represents the spatial distribution of true and false positives on the intensity based segmentation is constructed using the segmented lesions and manual masks. A k-Nearest Neighbor (kNN) classifier based on the lesion probability map is applied to refine the segmentation.
机译:大型临床试验中脑病变的定量分析变得越来越重要。 我们提出了一种新的自动化方法,其将基于强度的病变分割与基于病变的空间分布的假阳性消除方法相结合。 支持向量回归线(S VR)在专家定义的病变掩码上培训,使用图像直方图作为特征,以获得初始病变分段。 使用分段的病变和手动掩模构建表示基于强度基的分割的真实和误报的空间分布的病变概率图。 应用基于病变概率图的K最近邻居(KNN)分类器来完善分段。

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