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前瞻性 3D 脂肪导航(FatNav)运动校正用于 7T Terra MRI。

Prospective 3D Fat Navigator (FatNav) motion correction for 7T Terra MRI.

机构信息

Wolfson Brain Imaging Centre, University of Cambridge, Cambridge, UK.

Department of Psychology, Royal Holloway, University of London, London, UK.

出版信息

NMR Biomed. 2025 Jan;38(1):e5283. doi: 10.1002/nbm.5283. Epub 2024 Oct 26.

Abstract

Ultra-high field (7T) MRI allows scans at sub-millimetre resolution with exquisite signal-to-noise ratio (SNR). As 7T MRI becomes more widely used clinically, the challenge of patient motion must be overcome. Retrospective motion correction is used successfully for some protocols, but for acquisitions such as slice-by-slice scans only prospective motion correction can deliver the full potential of 7T MRI. We report the first implementation of prospective 3D Fat Navigator ("FatNav") motion correction for the Siemens 7T Terra MRI. We implemented a modular Sequence Building Block for FatNav and embedded it into the vendor's gradient-recalled echo (GRE) sequence. We modified the reconstruction pipeline to reconstruct FatNav images online, coregistering them and sending motion updates to the host sequence online. We tested five registration algorithms for performance and accuracy on synthetic FatNav data. We implemented the best three of these in our sequence and tested them online. We acquired T and T* weighted brain images of healthy volunteers correcting every other image for motion to visualise the effectiveness of online motion correction. Data were acquired with and without head immobilisation. We also tested performance while correcting every measurement for motion. Our implementation uses a 1.23 s 3D FatNav acquisition module and delivers motion updates in less than 3 s, which is sufficient for motion updates every few k-space lines in typical scans. Corrected images are crisper with fewer visible motion artefacts. This improved sharpness is reflected quantitatively by an increase in the variance of the image Laplacian which is 1.59 x better for corrected vs uncorrected images. Profiles across the cerebral falx are 33% steeper for corrected vs uncorrected images. Prospective FatNav improves GRE image quality in the brain. Our modular Sequence Building Block provides a simple method to integrate motion correction in 7T MRI pulse sequences.

摘要

超高场(7T)MRI 允许以亚毫米分辨率进行扫描,并具有出色的信噪比(SNR)。随着 7T MRI 在临床上的应用越来越广泛,必须克服患者运动的挑战。对于某些协议,使用回顾性运动校正取得了成功,但对于切片扫描等采集,只有前瞻性运动校正才能充分发挥 7T MRI 的潜力。我们报告了西门子 7T Terra MRI 首次实现前瞻性 3D 脂肪导航(“FatNav”)运动校正。我们为 FatNav 实现了一个模块化序列构建块,并将其嵌入到供应商的梯度回波(GRE)序列中。我们修改了重建管道,以便在线重建 FatNav 图像,对它们进行配准,并在线向主机序列发送运动更新。我们使用合成的 FatNav 数据测试了五种配准算法的性能和准确性。我们在序列中实现了其中最好的三种,并在线进行了测试。我们对健康志愿者的 T 和 T*加权脑图像进行了采集,对每幅图像进行运动校正,以可视化在线运动校正的效果。数据是在头部固定和不固定的情况下采集的。我们还测试了在每次测量都进行运动校正的情况下的性能。我们的实现使用了 1.23 秒的 3D FatNav 采集模块,并且在不到 3 秒的时间内提供运动更新,这足以在典型扫描中每几个 k 空间线提供一次运动更新。校正后的图像更清晰,运动伪影更少。校正前后图像的图像拉普拉斯方差增加了 1.59 倍,这反映了图像锐度的提高。校正后的图像与未校正的图像相比,大脑镰的轮廓线陡峭了 33%。前瞻性 FatNav 可改善大脑中的 GRE 图像质量。我们的模块化序列构建块为在 7T MRI 脉冲序列中集成运动校正提供了一种简单的方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cdc5/11602639/7c26279241ac/NBM-38-e5283-g005.jpg

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