Affine Registration of label maps in Label Space.

Journal of computing Pub Date : 2010-04-01
Yogesh Rathi, James Malcolm, Sylvain Bouix, Allen Tannenbaum, Martha E Shenton
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Abstract

Two key aspects of coupled multi-object shape analysis and atlas generation are the choice of representation and subsequent registration methods used to align the sample set. For example, a typical brain image can be labeled into three structures: grey matter, white matter and cerebrospinal fluid. Many manipulations such as interpolation, transformation, smoothing, or registration need to be performed on these images before they can be used in further analysis. Current techniques for such analysis tend to trade off performance between the two tasks, performing well for one task but developing problems when used for the other. This article proposes to use a representation that is both flexible and well suited for both tasks. We propose to map object labels to vertices of a regular simplex, e.g . the unit interval for two labels, a triangle for three labels, a tetrahedron for four labels, etc. This representation, which is routinely used in fuzzy classification, is ideally suited for representing and registering multiple shapes. On closer examination, this representation reveals several desirable properties: algebraic operations may be done directly, label uncertainty is expressed as a weighted mixture of labels (probabilistic interpretation), interpolation is unbiased toward any label or the background, and registration may be performed directly. We demonstrate these properties by using label space in a gradient descent based registration scheme to obtain a probabilistic atlas. While straightforward, this iterative method is very slow, could get stuck in local minima, and depends heavily on the initial conditions. To address these issues, two fast methods are proposed which serve as coarse registration schemes following which the iterative descent method can be used to refine the results. Further, we derive an analytical formulation for direct computation of the "group mean" from the parameters of pairwise registration of all the images in the sample set. We show results on richly labeled 2D and 3D data sets.

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标签空间中标签映射的仿射注册。
耦合多物体形状分析和图集生成的两个关键方面是选择表示方法和随后用于对齐样本集的配准方法。例如,典型的大脑图像可标记为三种结构:灰质、白质和脑脊液。在将这些图像用于进一步分析之前,需要对其进行许多处理,如插值、变换、平滑或配准。目前用于此类分析的技术往往会在两项任务之间权衡性能,在一项任务中表现良好,但在另一项任务中却会出现问题。本文建议使用一种既灵活又适合这两项任务的表示法。我们建议将对象标签映射到正则单纯形的顶点上,例如,单位间隔表示两个标签,三角形表示三个标签,四面体表示四个标签等。这种表示法通常用于模糊分类,非常适合表示和注册多种形状。仔细观察,我们会发现这种表示法有几个理想的特性:可以直接进行代数运算;标签的不确定性可以用标签的加权混合来表示(概率解释);插值对任何标签或背景都没有偏差;可以直接进行注册。我们通过在基于梯度下降的配准方案中使用标签空间来获得概率图集,证明了这些特性。这种迭代方法虽然简单明了,但速度非常慢,可能会陷入局部极小值,而且在很大程度上取决于初始条件。为了解决这些问题,我们提出了两种快速方法,作为粗配准方案,然后使用迭代下降法来完善结果。此外,我们还推导出一种分析方法,可根据样本集中所有图像的配对配准参数直接计算 "组平均值"。我们展示了丰富标注的二维和三维数据集的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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