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UNSUPERVISED EXTRACTION OF THE AORTIC DISSECTION MEMBRANE BASED ON A MULTISCALE PIECEWISE RIDGE MODEL

机译:基于多尺度分段脊模型的主动脉夹层膜的无监督提取

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This contribution expounds an unsupervised technique for successfully retrieving fine structures, such as the aortic dissection membrane, from noisy, artifact-afflicted medical image data. A model of the fine structure as a ridge-like element is employed at several scales and orientations. Towards this end, we piecewise approximate the structure's idealized intensity pattern and shape in 2D by a second derivative of a Gaussian function in cross-sectional direction and by a Gaussian in longitudinal direction. The filter responses selected at each pixel undergo a Fuzzy c-means clustering aiming at determining cluster centers and class probability distributions for discrimination between desired structures and artifacts. We remodel the obtained distribution functions in order to obtain a normalized, complete partition. With an average distance of 0.65 mm between automatic segmentation and ground truth in 12 CTA datasets of aortic dissection, our novel approach proves more accurate than previous methods.
机译:这种贡献阐述了成功地检索精细结构,例如主动脉夹层膜,嘈杂的伪影医学图像数据的无监督技术。在几个刻度和方向上采用作为脊状元件的细结构的模型。朝向该目的,我们通过在横截面方向上的高斯函数的第二导数和纵向的高斯函数的第二导数分段近似结构的理想化强度图案和形状。在每个像素处选择的滤波器响应经历模糊的C-MERIAL聚类,其旨在确定集群中心和类概率分布,用于期望结构和伪像之间的判别。我们重新汇编所获得的分布函数,以便获得标准化的完整分区。在16个CTA数据集之间的自动分割和地面真理之间平均距离为0.65毫米,我们的新方法可以比以前的方法更准确。

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