Radiology, Division of Image Processing, Leiden University Medical Center, Leiden, The Netherlands.
Philips, Best, The Netherlands.
NMR Biomed. 2022 Sep;35(9):e4746. doi: 10.1002/nbm.4746. Epub 2022 May 9.
Background suppression (BGS) in arterial spin labeling (ASL) magnetic resonance imaging leads to a higher temporal signal-to-noise ratio (tSNR) of the perfusion images compared with ASL without BGS. The performance of the BGS, however, depends on the tissue relaxation times and on inhomogeneities of the scanner's magnetic fields, which differ between subjects and are unknown at the moment of scanning. Therefore, we developed a feedback loop (FBL) mechanism that optimizes the BGS for each subject in the scanner during acquisition. We implemented the FBL for 2D pseudo-continuous ASL scans with an echo-planar imaging readout. After each dynamic scan, the acquired ASL images were automatically sent to an external computer and processed with a Python processing tool. Inversion times were optimized on the fly using 80 iterations of the Nelder-Mead method, by minimizing the signal intensity in the label image while maximizing the signal intensity in the perfusion image. The performance of this method was first tested in a four-component phantom. The regularization parameter was then tuned in six healthy subjects (three males, three females, age 24-62 years) and set as λ = 4 for all other experiments. The resulting ASL images, perfusion images, and tSNR maps obtained from the last 20 iterations of the FBL scan were compared with those obtained without BGS and with standard BGS in 12 healthy volunteers (five males, seven females, age 24-62 years) (including the six volunteers used for tuning of λ). The FBL resulted in perfusion images with a statistically significantly higher tSNR (2.20) compared with standard BGS (1.96) ( , two-sided paired t-test). Minimizing signal in the label image furthermore resulted in control images, from which approximate changes in perfusion signal can directly be appreciated. This could be relevant to ASL applications that require a high temporal resolution. Future work is needed to minimize the number of initial acquisitions during which the performance of BGS is reduced compared with standard BGS, and to extend the technique to 3D ASL.
背景抑制(BGS)在动脉自旋标记(ASL)磁共振成像中导致与没有 BGS 的 ASL 相比,灌注图像的时间信号噪声比(tSNR)更高。然而,BGS 的性能取决于组织弛豫时间和扫描仪磁场的不均匀性,这些在不同的受试者之间是不同的,并且在扫描时是未知的。因此,我们开发了一种反馈循环(FBL)机制,该机制在采集过程中针对每个受试者在扫描仪中优化 BGS。我们使用具有回波平面成像读出的 2D 伪连续 ASL 扫描来实现 FBL。在每次动态扫描后,采集的 ASL 图像自动发送到外部计算机,并使用 Python 处理工具进行处理。使用 Nelder-Mead 方法的 80 次迭代来优化反转时间,通过在标签图像中最小化信号强度,同时在灌注图像中最大化信号强度来实现。首先在四组件幻影中测试了这种方法的性能。然后在六个健康受试者(三个男性,三个女性,年龄 24-62 岁)中调整正则化参数,并将其设置为所有其他实验的 λ=4。然后将从 FBL 扫描的最后 20 次迭代中获得的 ASL 图像、灌注图像和 tSNR 图与没有 BGS 和标准 BGS 获得的图像进行比较在 12 个健康志愿者(五个男性,七个女性,年龄 24-62 岁)(包括用于调整 λ 的六个志愿者)。FBL 导致灌注图像的 tSNR (2.20)与标准 BGS (1.96)相比具有统计学显著更高( ,双侧配对 t 检验)。最小化标签图像中的信号进一步导致控制图像,从中可以直接看出灌注信号的近似变化。这可能与需要高时间分辨率的 ASL 应用相关。未来的工作需要减少与标准 BGS 相比 BGS 性能降低的初始采集数量,并将该技术扩展到 3D ASL。