基于快速初始化的脑MRI分组配准方法。

Pei Dong, Xiaohuan Cao, Jun Zhang, Minjeong Kim, Guorong Wu, Dinggang Shen
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引用次数: 3

摘要

分组图像配准提供了一种针对图像种群的无偏配准解决方案,便于后续的种群分析。然而,在一组大的图像上执行分组配准通常在计算上是昂贵的。为了缓解这个问题,我们建议利用快速初始化技术来加速分组注册。我们的主要想法是生成一组模拟的大脑MRI样本,这些样本的组中心有已知的变形。这可以在训练阶段通过两个步骤来实现。首先,采用一定的分组配准方法,将一组训练脑磁共振图像配准到组中心;然后,为了扩大样本,我们对获得的变形场集(到群中心)进行主成分分析,以参数化变形场。这样,我们可以生成大量的变形场,以及使用不同参数进行PCA的各自的模拟样本。在应用阶段,当给定一组新的测试脑磁共振图像时,我们可以将它们与增强的训练样本混合。然后,对于每个测试图像,我们可以在增强的训练数据集中找到与其最近的样本,以便快速估计其变形场到训练集的组中心。这样,可以立即估计出测试图像集的一个暂定群中心,并得到每个测试图像对该估计群中心的变形场。通过对测试图像进行分组配准的快速初始化,我们最终可以使用现有的分组配准方法来快速改进分组配准结果。在ADNI数据集上的实验结果表明,与现有的分组配准方法相比,该方法显著提高了计算效率和配准精度。
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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Efficient Groupwise Registration for Brain MRI by Fast Initialization.

Groupwise image registration provides an unbiased registration solution upon a population of images, which can facilitate the subsequent population analysis. However, it is generally computationally expensive for performing groupwise registration on a large set of images. To alleviate this issue, we propose to utilize a fast initialization technique for speeding up the groupwise registration. Our main idea is to generate a set of simulated brain MRI samples with known deformations to their group center. This can be achieved in the training stage by two steps. First, a set of training brain MR images is registered to their group center with a certain existing groupwise registration method. Then, in order to augment the samples, we perform PCA on the set of obtained deformation fields (to the group center) to parameterize the deformation fields. In doing so, we can generate a large number of deformation fields, as well as their respective simulated samples using different parameters for PCA. In the application stage, when given a new set of testing brain MR images, we can mix them with the augmented training samples. Then, for each testing image, we can find its closest sample in the augmented training dataset for fast estimating its deformation field to the group center of the training set. In this way, a tentative group center of the testing image set can be immediately estimated, and the deformation field of each testing image to this estimated group center can be obtained. With this fast initialization for groupwise registration of testing images, we can finally use an existing groupwise registration method to quickly refine the groupwise registration results. Experimental results on ADNI dataset show the significantly improved computational efficiency and competitive registration accuracy, compared to state-of-the-art groupwise registration methods.

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