基于模型的配准校正弥散磁共振成像中获取之间的运动

Yu Bai, D. Alexander
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引用次数: 53

摘要

在弥散张量MRI中,扫描过程中会获得许多具有不同弥散加权梯度方向的弥散加权图像。张量计算假设每个体素对应于所有测量中的相同解剖位置。运动和扭曲违反了这一假设,通常图像在模型拟合之前被重新排列。传统方法使用非扩散加权图像作为配准参考,但扩散加权图像与非扩散加权参考图像之间的差异可能导致配准过程中出现不匹配,即使使用互信息(MI)等指标来解释非线性对比度差异。我们提出了基于模型的替代方法来改进运动校正,避免传统方法引入的误差。我们在采集过程中使用新方法对具有轻微但典型的移动的完整数据进行了定量改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model-based registration to correct for motion between acquisitions in diffusion MR imaging
In diffusion tensor MRI, a number of diffusion-weighted images with different diffusion-weighting gradient directions are acquired during scanning. The tensor calculation assumes that each voxel corresponds to the same anatomical location in all the measurements. Movements and distortions violate this assumption and typically the images are realigned before model fitting. The traditional method uses a non-diffusion- weighted image as the reference for registration, but the differences between diffusion-weighted images and the non- diffusion weighted reference image can cause mismatching to occur during registration, even using metrics like the mutual information (MI) that accounts for non-linear contrast differences. We propose alternative model-based methods to improve motion correction and avoid the errors that the traditional method introduces. We demonstrate quantitative improvements using the new approaches on a full data with slight, but typical, movement during acquisition.
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