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Reconstructing Liver Shape and Position from MR Image Slices Using an Active Shape Model

机译:使用活动形状模型重建肝脏形状和来自MR图像切片的位置

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We present an algorithm for fully automatic reconstruction of 3D position, orientation and shape of the human liver from a sparsely covering set of n 2D MR slice images. Reconstructing the shape of an organ from slice images can be used for scan planning, for surgical planning or other purposes where 3D anatomical knowledge has to be inferred from sparse slices. The algorithm is based on adapting an active shape model of the liver surface to a given set of slice images. The active shape model is created from a training set of liver segmentations from a group of volunteers. The training set is set up with semi-manual segmentations of T1-weighted volumetric MR images. Searching for the optimal shape model that best fits to the image data is done by maximizing a similarity measure based on local appearance at the surface. Two different algorithms for the active shape model search are proposed and compared: both algorithms seek to maximize the a-posteriori probability of the grey level appearance around the surface while constraining the surface to the space of valid shapes. The first algorithm works by using grey value profile statistics in normal direction. The second algorithm uses average and variance images to calculate the local surface appearance on the fly. Both algorithms are validated by fitting the active shape model to abdominal 2D slice images and comparing the shapes, which have been reconstructed, to the manual segmentations and to the results of active shape model searches from 3D image data. The results turn out to be promising and competitive to active shape model segmentations from 3D data.
机译:我们介绍了一种算法,用于从稀疏覆盖的N 2D MR切片图像稀疏覆盖物肝肝的3D位置,方向和形状的算法。从切片图像重建器官的形状可用于扫描规划,用于手术规划或其他目的,其中3D解剖知识必须从稀疏切片推断出3D解剖学知识。该算法基于使肝脏表面的活动形状模型适应于给定的一组切片图像。主动形状模型由一组志愿者的肝脏分段训练组成。训练集设置为T1加权体积MR图像的半手动分段。搜索最佳形状模型,通过最大化基于局部局部外观的相似度量来完成最佳适合图像数据。提出和比较了两个不同的算法,并进行了比较:这两种算法都试图最大化灰度水平外观的灰度外观的概率,同时将表面约束到有效形状的空间。第一个算法通过在正常方向上使用灰度概述统计来工作。第二种算法使用平均和方差图像来计算局部表面外观。通过将主动形状模型拟合到腹部2D片图像并将已经重建的形状与3D图像数据进行了比较了已经重建的形状,并将已经重建的形状进行了比较,这两种算法都通过与3D图像数据进行比较。结果结果是从3D数据的主动形状​​模型分段有前途和竞争。

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