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首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >Normalized gradient fields for nonlinear motion correction of DCE-MRI time series
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Normalized gradient fields for nonlinear motion correction of DCE-MRI time series

机译:用于DCE-MRI时间序列的非线性运动校正的归一化梯度场

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摘要

Dynamic MR image recordings (DCE-MRI) of moving organs using bolus injections create two different types of dynamics in the images: (i) spatial motion artifacts due to patient movements, breathing and physiological pulsations that we want to counteract and (ii) signal intensity changes during contrast agent wash-in and wash-out that we want to preserve. Proper image registration is needed to counteract the motion artifacts and for a reliable assessment of physiological parameters. In this work we present a partial differential equation-based method for deformable multimodal image registration using normalized gradients and the Fourier transform to solve the Euler-Lagrange equations in a multilevel hierarchy. This approach is particularly well suited to handle the motion challenges in DCE-MRI time series, being validated on ten DCE-MRI datasets from the moving kidney. We found that both normalized gradients and mutual information work as high-performing cost functionals for motion correction of this type of data. Furthermore, we demonstrated that normalized gradients have improvesd performance compared to mutual information as assessed by several performance measures. We conclude that normalized gradients can be a viable alternative to mutual information regarding registration accuracy, and with promising clinical applications to DCE-MRI recordings from moving organs.
机译:使用推注法对运动器官进行动态MR图像记录(DCE-MRI)会在图像中产生两种不同类型的动力学:(i)由于我们想抵消的患者运动,呼吸和生理脉动导致的空间运动伪像,以及(ii)发出信号我们要保留的造影剂洗入和洗出过程中强度变化。需要适当的图像配准以抵消运动伪影并进行生理参数的可靠评估。在这项工作中,我们提出了一种基于偏微分方程的可变形多峰图像配准方法,该方法使用归一化梯度和傅立叶变换来求解多级层次结构中的Euler-Lagrange方程。这种方法特别适合处理DCE-MRI时间序列中的运动挑战,已在来自移动肾脏的十个DCE-MRI数据集中进行了验证。我们发现归一化的梯度和互信息都可以作为这类数据运动校正的高性能成本函数。此外,我们证明了归一化梯度与通过多种性能指标评估的互信息相比具有更高的性能。我们得出的结论是,标准化的梯度可以替代关于配准精度的相互信息,并且可以用于运动器官的DCE-MRI记录,具有广阔的临床应用前景。

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