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A Hybrid Approach to Shape-Based Interpolation of Stereotactic Atlases of the Human Brain

机译:一种基于形状的人脑立体定位图谱插值的混合方法

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Stereotactic human brain atlases, either in print or electronic form, are useful not only in functional neurosurgery, but also in neuroradiology, human brain mapping, and neuroscience education. The existing atlases represent structures on 2D plates taken at variable, often large intervals, which limit their applications. To overcome this problem, we propose a hybrid interpolation approach to build high-resolution brain atlases from the existing ones. In this approach, all section regions of each object are grouped into two types of components: simple and complex. A NURBS-based method is designed for interpolation of the simple components, and a distance map-based method for the complex components. Once all individual objects in the atlas are interpolated, the results are combined hierarchically in a bottom-up manner to produce the interpolation of the entire atlas. In the procedure, different knowledgebased and heuristic strategies are used to preserve various topological relationships. The proposed approach has been validated quantitatively and used for interpolation of two stereotactic brain atlases: the Talairach-Tournoux atlas and Schaltenbrand-Wahren atlas. The interpolations produced are of high resolution and feature high accuracy, 3D consistency, smooth surface, and preserved topology. They potentially open new applications for electronic stereotactic brain atlases, such as atlas reformatting, accurate 3D display, and 3D nonlinear warping against normal and pathological scans. The proposed approach is also potentially useful in other applications, which require interpolation and 3D modeling from sparse and/or variable intersection interval data. An example of 3D modeling of an infarct from MR diffusion images is presented.
机译:印刷或电子形式的立体定向人脑图谱不仅可用于功能性神经外科,而且可用于神经放射学,人脑作图和神经科学教育。现有的地图集代表二维板在不同时间(通常间隔较大)上拍摄的结构,这限制了它们的应用。为了克服这个问题,我们提出了一种混合插值方法来从现有的大脑地图集中构建高分辨率的大脑地图集。在这种方法中,每个对象的所有截面区域都分为两种类型的组件:简单组件和复杂组件。设计了一种基于NURBS的方法来对简单组件进行插值,针对复杂组件设计了一种基于距离图的方法。对地图集中的所有单个对象进行插值后,结果将以自下而上的方式进行分层组合,以生成整个地图集的插值。在该过程中,使用了不同的基于知识的启发式策略来保留各种拓扑关系。所提出的方法已经过定量验证,可用于内插两个立体定向脑图集:Talairach-Tournoux图集和Schaltenbrand-Wahren图集。产生的插值具有高分辨率,并具有高精度,3D一致性,光滑的表面和保留的拓扑。他们有可能为电子立体脑图谱打开新的应用程序,例如图谱重新格式化,精确的3D显示以及针对正常和病理扫描的3D非线性变形。所提出的方法在其他应用中也可能有用,这些应用需要根据稀疏和/或可变交集间隔数据进行插值和3D建模。提出了根据MR扩散图像对梗塞进行3D建模的示例。

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