Three-dimensional model-based segmentation of brain MRI

A. Kelemen, Gábor Székely, Guido Gerig
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引用次数: 69

Abstract

This paper presents a new technique for the automatic model-based segmentation of 3-D objects from volumetric image data. The development closely follows the seminal work of Cootes et al. (1994) but presents various new solutions to come up with a true 3-D technique rather than a slice-by-slice 2-D processing. The segmentation system includes both the building of statistical models and the automatic segmentation of new image data sets via a restricted elastic deformation of models. Geometric models are derived front a sample set of image data which have been segmented by experts. The surfaces of these binary objects are converted into a parametric surface net which is normalized to get an invariant object-centered coordinate system. Surface descriptions are expanded into series of spherical harmonics which provide parametric representations of object shapes. Gray-level information is represented by 1-D profiles normal to the surface. The alignment is based on the well-accepted stereotactic coordinate system since the driving application is the segmentation of brain objects. Shape statistics are calculated from the parametric shape representations rather than from the spatial coordinates of sets of points. After initializing the mean shape in a new data set on the basis of the alignment coordinates, the model elastically deforms in accordance to displacement forces across the surface but is restricted only by shape deformation constraints. The technique has been applied to segment left and right hippocampal structures from a large series of 3-D magnetic resonance scans taken from a schizophrenia study.
基于三维模型的脑MRI分割
本文提出了一种基于模型的三维物体体图像自动分割技术。这一发展紧跟Cootes等人(1994)的开创性工作,但提出了各种新的解决方案,以提出真正的3-D技术,而不是逐片的2-D处理。该分割系统既包括统计模型的建立,也包括通过模型的有限弹性变形对新图像数据集进行自动分割。在专家对图像数据进行分割的基础上,推导出图像的几何模型。将这些二元物体的表面转换成一个参数曲面网,并对其进行归一化,得到不变的以物体为中心的坐标系。表面描述被扩展成一系列球面谐波,提供物体形状的参数表示。灰度信息由垂直于表面的1-D轮廓表示。由于驱动应用是对大脑对象的分割,因此定位基于公认的立体定向坐标系。形状统计是从参数形状表示而不是从点集的空间坐标计算的。在基于对齐坐标的新数据集中初始化平均形状后,模型根据跨表面的位移力进行弹性变形,但仅受形状变形约束的限制。这项技术已被应用于从一项精神分裂症研究中获得的大量3d磁共振扫描中分割左右海马结构。
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