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首页> 外文期刊>NeuroImage >Simulating deformations of MR brain images for validation of atlas-based segmentation and registration algorithms.
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Simulating deformations of MR brain images for validation of atlas-based segmentation and registration algorithms.

机译:模拟MR脑部图像的变形,以验证基于图集的分割和配准算法。

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摘要

Simulated deformations and images can act as the gold standard for evaluating various template-based image segmentation and registration algorithms. Traditional deformable simulation methods, such as the use of analytic deformation fields or the displacement of landmarks followed by some form of interpolation, are often unable to construct rich (complex) and/or realistic deformations of anatomical organs. This paper presents new methods aiming to automatically simulate realistic inter- and intra-individual deformations. The paper first describes a statistical approach to capturing inter-individual variability of high-deformation fields from a number of examples (training samples). In this approach, Wavelet-Packet Transform (WPT) of the training deformations and their Jacobians, in conjunction with a Markov random field (MRF) spatial regularization, are used to capture both coarse and fine characteristics of the training deformations in a statistical fashion. Simulated deformations can then be constructed by randomly sampling the resultant statistical distribution in an unconstrained or a landmark-constrained fashion. The paper also describes a model for generating tissue atrophy or growth in order to simulate intra-individual brain deformations. Several sets of simulated deformation fields and respective images are generated, which can be used in the future for systematic and extensive validation studies of automated atlas-based segmentation and deformable registration methods. The code and simulated data are available through our Web site.
机译:模拟的变形和图像可以作为评估各种基于模板的图像分割和配准算法的黄金标准。传统的可变形模拟方法,例如使用解析变形场或地标的位移,再加上某种形式的插值,通常无法构造出解剖器官的丰富(复杂)和/或实际变形。本文提出了旨在自动模拟现实的个体内部和个体内部变形的新方法。本文首先介绍了一种统计方法,可从多个示例(训练样本)中捕获高形变场的个体间差异。在这种方法中,训练变形的小波包变换(WPT)及其雅可比行列式与Markov随机场(MRF)空间正则化一起用于以统计方式捕获训练变形的粗略特征和精细特征。然后可以通过以不受约束或受地标约束的方式随机采样所得统计分布来构造模拟变形。本文还描述了一种用于产生组织萎缩或生长以模拟个体内部大脑变形的模型。生成了几组模拟的变形场和相应的图像,可在将来用于基于图集的自动分割和可变形配准方法的系统且广泛的验证研究。可通过我们的网站获得代码和模拟数据。

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