Groupwise Morphometric Analysis Based on High Dimensional Clustering.

Dong Hye Ye, Kilian M Pohl, Harold Litt, Christos Davatzikos
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引用次数: 3

Abstract

In this paper, we propose an efficient groupwise morphometric analysis to characterize morphological variations between healthy and pathological states. The proposed framework extends the work of Baloch [4] in which a manifold for each anatomy was constructed by collecting lossless [transformation, residual] descriptors with various transformation parameters, and the optimal set of transformation parameters was estimated individually by minimizing group variance. However, full parameter exploration is not desired as it can result in transformation leading to inaccurate anatomical models. In addition, a single fixed template introduces a priori bias to subsequent statistical analysis. In order to overcome these limitations, we use an affinity propagation clustering method to find the spatially close cluster center for each subject. Then, a subject is normalized to the template via the cluster center to restrict our analysis only to those descriptors that reflect reasonable warps. In addition, a mean template is selected by finding a cluster center that minimizes the sum of pairwise shape distance to reduce the fixed template bias. Our method is applied to 2D synthetic data and 3D real Cardiac MR Images. Experimental results show improvement in quantifying and localizing shape changes.

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基于高维聚类的群体形态计量分析。
在本文中,我们提出了一种有效的成组形态计量分析来表征健康和病理状态之间的形态变化。所提出的框架扩展了Baloch[4]的工作,其中通过收集具有各种变换参数的无损[变换,残差]描述符来构建每个解剖结构的流形,并且通过最小化组方差来单独估计变换参数的最优集合。然而,全参数探索是不可取的,因为它可能导致转换,导致不准确的解剖模型。此外,单个固定模板会给后续的统计分析带来先验偏差。为了克服这些限制,我们使用亲和传播聚类方法来找到每个受试者在空间上接近的聚类中心。然后,通过聚类中心将主题规范化为模板,以将我们的分析仅限于那些反映合理扭曲的描述符。此外,通过找到最小化成对形状距离之和的聚类中心来选择平均模板,以减少固定模板偏差。我们的方法应用于2D合成数据和3D真实心脏MR图像。实验结果表明,在量化和定位形状变化方面有所改进。
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