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Hierarchical alignment of breast DCE-MR images by groupwise registration and robust feature matching

机译:通过分组配准和强大的特征匹配来对乳腺DCE-MR图像进行分层对齐

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摘要

>Purpose: Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) shows high sensitivity in detecting breast cancer. However, its performance could be affected by patient motion during the imaging. To overcome this problem, it is necessary to correct patient motion by deformable registration, before using the DCE-MRI to detect breast cancer. However, deformable registration of DCE-MR images is challenging due to the dramatic contrast change over time (especially between the precontrast and postcontrast images). Most existing methods typically register each postcontrast image onto the precontrast image independently, without considering the dynamic contrast change after agent uptake. This could lead to the inconsistency among the aligned postcontrast images in the precontrast image space, which will eventually result in worse performance in cancer detection. In this paper, the authors present a novel hierarchical registration framework to address this problem.>Methods: First, the authors propose a hierarchical registration framework to deploy the groupwise registration for simultaneous registration of all postcontrast images onto their group-mean image and further aligning the group-mean image of postcontrast images onto the precontrast image space for final alignment of all precontrast and postcontrast images. In this way, the postcontrast images (with similar intensity patterns) can be jointly aligned onto the precontrast image for increasing their overall consistency after registration. Second, in order to improve the registration between the precontrast image and the group-mean image of the postcontrast images, the authors propose using the contrast-invariant attribute vectors to guide the robust feature matching during the registration.>Results: Our proposed hierarchical registration framework has been comprehensively evaluated and compared with affine registration and widely used deformable registration methods in both pairwise and groupwise registration formulation. The experimental results on both real and simulated images show that our method can obtain not only more accurate but also more consistent registration results than any of all other registration algorithms.>Conclusions: The authors have proposed a novel groupwise registration method to achieve accurate and consistent alignment for breast DCE-MR images. In the future, the authors will further evaluate our proposed method with more clinical datasets.
机译:>目的:动态对比增强磁共振成像(DCE-MRI)在检测乳腺癌中显示出高灵敏度。但是,其性能可能会受到成像过程中患者运动的影响。为了克服这个问题,在使用DCE-MRI检测乳腺癌之前,必须通过可变形的套准纠正患者的运动。但是,DCE-MR图像的可变形配准具有挑战性,因为随着时间的流逝,对比度会发生剧烈变化(尤其是在对比前和对比后的图像之间)。大多数现有方法通常将每个对比后图像独立地配准到对比前图像上,而无需考虑药物吸收后的动态对比变化。这可能导致在对比前图像空间中对齐的对比后图像之间不一致,最终将导致癌症检测的性能下降。在本文中,作者提出了一个新颖的分层配准框架来解决此问题。>方法:首先,作者提出了一种分层配准框架来部署分组注册,以将所有对比后图像同时注册到他们的组中。 -均值图像,并进一步将对比后图像的组均值图像对齐到对比前图像空间上,以最终对齐所有对比前和对比后图像。通过这种方式,可以将对比后的图像(具有相似的强度模式)联合对齐到对比前的图像上,以增加配准后的总体一致性。其次,为了改善在对比前图像和对比后图像的组均值图像之间的配准,作者建议使用对比不变属性矢量来指导配准期间的鲁棒特征匹配。>结果:我们对拟议的分层配准框架进行了全面评估,并与仿射配准进行了比较,并在成对和成组配准公式中广泛使用了可变形的配准方法。在真实和模拟图像上的实验结果表明,与所有其他配准算法相比,我们的方法不仅可以获得更准确的结果,而且还可以获得更一致的配准结果。>结论:作者提出了一种新颖的分组配准方法方法来实现乳房DCE-MR图像的准确一致的对准。将来,作者将通过更多的临床数据集进一步评估我们提出的方法。

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