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Simultaneous Fine and Coarse Diffeomorphic Registration: Application to Atrophy Measurement in Alzheimer's Disease

机译:同时精细和粗微异形配准:在阿尔茨海默氏病萎缩测量中的应用。

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In this paper, we present a fine and coarse approach for the multiscale registration of 3D medical images using Large Deformation Diffeomorphic Metric Mapping (LDDMM). This approach has particularly interesting properties since it estimates large, smooth and invertible optimal deformations having a rich descriptive power for the quantification of temporal changes in the images. First, we show the importance of the smoothing kernel and its influence on the final solution. We then propose a new strategy for the spatial regularization of the deformations, which uses simultaneously fine and coarse smoothing kernels. We have evaluated the approach on both 2D synthetic images as well as on 3D MR longitudinal images out of the Alzheimer's Disease Neuroimaging Initiative (ADNI) study. Results highlight the regularizing properties of our approach for the registration of complex shapes. More importantly, the results also demonstrate its ability to measure shape variations at several scales simultaneously while keeping the desirable properties of LDDMM. This opens new perspectives for clinical applications.
机译:在本文中,我们为使用大变形微形态度量映射(LDDMM)进行3D医学图像的多尺度配准提供了一种精细和粗糙的方法。该方法具有特别有趣的属性,因为它估计了大,平滑和可逆的最佳变形,这些变形具有丰富的描述能力,可以量化图像中的时间变化。首先,我们展示了平滑内核的重要性及其对最终解决方案的影响。然后,我们提出了一种用于变形的空间正则化的新策略,该策略同时使用了精细和粗糙的平滑核。我们已经从阿尔茨海默氏病神经影像学计划(ADNI)研究中对2D合成图像和3D MR纵向图像进行了评估。结果突出了我们用于复杂形状配准的方法的正则化属性。更重要的是,结果还证明了它能够同时在几个尺度上测量形状变化的能力,同时又保持了LDDMM的理想特性。这为临床应用打开了新的视野。

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