Patch-Based Discrete Registration of Clinical Brain Images.

Adrian V Dalca, Andreea Bobu, Natalia S Rost, Polina Golland
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引用次数: 45

Abstract

We introduce a method for registration of brain images acquired in clinical settings. The algorithm relies on three-dimensional patches in a discrete registration framework to estimate correspondences. Clinical images present significant challenges for computational analysis. Fast acquisition often results in images with sparse slices, severe artifacts, and variable fields of view. Yet, large clinical datasets hold a wealth of clinically relevant information. Despite significant progress in image registration, most algorithms make strong assumptions about the continuity of image data, failing when presented with clinical images that violate these assumptions. In this paper, we demonstrate a non-rigid registration method for aligning such images. The method explicitly models the sparsely available image information to achieve robust registration. We demonstrate the algorithm on clinical images of stroke patients. The proposed method outperforms state of the art registration algorithms and avoids catastrophic failures often caused by these images. We provide a freely available open source implementation of the algorithm.

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基于patch的临床脑图像离散配准。
我们介绍了一种在临床环境中获得的脑图像的配准方法。该算法依赖于离散配准框架中的三维补丁来估计对应关系。临床图像对计算分析提出了重大挑战。快速采集通常会导致图像切片稀疏、伪影严重、视场多变。然而,大型临床数据集拥有丰富的临床相关信息。尽管在图像配准方面取得了重大进展,但大多数算法对图像数据的连续性做了很强的假设,在处理违反这些假设的临床图像时失败了。在本文中,我们展示了一种非刚性配准方法来对准这些图像。该方法对稀疏可用的图像信息进行显式建模,实现鲁棒配准。我们在脑卒中患者的临床图像上演示了该算法。所提出的方法优于当前最先进的配准算法,并避免了这些图像经常引起的灾难性故障。我们提供了该算法的免费开源实现。
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