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A Statistical Model for Simultaneous Template Estimation, Bias Correction, and Registration of 3D Brain Images

机译:同时模板估计,偏压校正和3D脑图像登记的统计模型

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Template estimation plays a crucial role in computational anatomy since it provides reference frames for performing statistical analysis of the underlying anatomical population variability. While building models for template estimation, variability in sites and image acquisition protocols need to be accounted for. To account for such variability, we propose a generative template estimation model that makes simultaneous inference of both bias fields in individual images, deformations for image registration, and variance hyperparameters. In contrast, existing maximum a posterori based methods need to rely on either bias-invariant similarity measures or robust image normalization. Results on synthetic and real brain MRI images demonstrate the capability of the model to capture heterogeneity in intensities and provide a reliable template estimation from registration.
机译:模板估计在计算解剖中起着至关重要的作用,因为它提供了用于对底层解剖群体变异性进行统计分析的参考帧。在构建模板估计的模型时,需要考虑站点和图像采集协议的可变性。为了考虑这种可变性,我们提出了一种生成模板估计模型,其在单个图像中同时推动各个图像中的偏置字段,图像配准的变形以及方差超参数。相比之下,现有的最大基于Postori的方法需要依赖于偏差不变的相似度测量或强大的图像标准化。合成和实际脑MRI图像的结果证明了模型的能力,以捕获强度的异质性并提供从注册的可靠模板估计。

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