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首页> 外文期刊>Magnetic resonance in medicine: official journal of the Society of Magnetic Resonance in Medicine >ESPIRiT - An eigenvalue approach to autocalibrating parallel MRI: Where SENSE meets GRAPPA
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ESPIRiT - An eigenvalue approach to autocalibrating parallel MRI: Where SENSE meets GRAPPA

机译:ESPRiT-一种自动校准平行MRI的特征值方法:SENSE与GRAPPA相遇的地方

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Purpose Parallel imaging allows the reconstruction of images from undersampled multicoil data. The two main approaches are: SENSE, which explicitly uses coil sensitivities, and GRAPPA, which makes use of learned correlations in k-space. The purpose of this work is to clarify their relationship and to develop and evaluate an improved algorithm. Theory and Methods A theoretical analysis shows: (1) The correlations in k-space are encoded in the null space of a calibration matrix. (2) Both approaches restrict the solution to a subspace spanned by the sensitivities. (3) The sensitivities appear as the main eigenvector of a reconstruction operator computed from the null space. The basic assumptions and the quality of the sensitivity maps are evaluated in experimental examples. The appearance of additional eigenvectors motivates an extended SENSE reconstruction with multiple maps, which is compared to existing methods. Results The existence of a null space and the high quality of the extracted sensitivities are confirmed. The extended reconstruction combines all advantages of SENSE with robustness to certain errors similar to GRAPPA. Conclusion In this article the gap between both approaches is finally bridged. A new autocalibration technique combines the benefits of both.
机译:目的并行成像允许从欠采样的多线圈数据重建图像。两种主要方法是:SENSE(显式使用线圈敏感度)和GRAPPA(使用在k空间中学习的相关性)。这项工作的目的是阐明它们之间的关系,并开发和评估一种改进的算法。理论和方法理论分析表明:(1)将k空间中的相关性编码在校准矩阵的零空间中。 (2)两种方法都将解决方案限制在灵敏度范围内的子空间。 (3)灵敏度作为从零空间计算出的重构算子的主要特征向量出现。在实验示例中评估了灵敏度图的基本假设和质量。与现有方法相比,附加特征向量的出现促进了具有多个图的扩展SENSE重建。结果证实了无效空间的存在和所提取灵敏度的高质量。扩展的重构结合了SENSE的所有优点以及对某些类似于GRAPPA的错误的鲁棒性。结论本文最终弥合了这两种方法之间的鸿沟。一种新的自动校准技术结合了两者的优点。

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