3D statistical shape models for medical image segmentation

C. Lorenz, N. Krahnstoever
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引用次数: 41

Abstract

A novel method that allows the development of surface point-based three-dimensional statistical shape models is presented. The method can be applied to shapes of arbitrary topology. Given a set of medical objects, a statistical shape model can be obtained by principal component analysis. This technique requires that a set of complex shaped objects is represented as a set of vectors that on the one hand uniquely determine the shapes of the objects and on the other hand are suitable for a statistical analysis. The correspondence between the vector components and the respective shape features has to be the same in order for all shape parameter vectors to be considered. We present a novel approach to the correspondence problem for complex three-dimensional objects. The underlying idea is to develop a template shape and to fit this template to all objects to be analyzed. The method is successfully applied to obtain a statistical shape model for the lumbar vertebrae. The obtained shape model is well suited to support image segmentation tasks.
用于医学图像分割的三维统计形状模型
提出了一种基于曲面点的三维统计形状模型的开发方法。该方法可应用于任意拓扑形状。给定一组医学对象,通过主成分分析可以得到统计形状模型。该技术要求将一组复杂形状的对象表示为一组向量,这些向量一方面唯一地确定对象的形状,另一方面适合于统计分析。矢量分量和各自形状特征之间的对应关系必须相同,以便考虑所有形状参数矢量。提出了一种解决复杂三维物体对应问题的新方法。其基本思想是开发一个模板形状,并使该模板适合所有要分析的对象。该方法成功地应用于腰椎的统计形状模型。得到的形状模型可以很好地支持图像分割任务。
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