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Anatomy-Driven Modelling of Spatial Correlation for Regularisation of Arterial Spin Labelling Images

机译:空间相关性的解剖学驱动建模,用于动脉旋转标记图像的正则化

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Arterial spin labelling (ASL) allows blood flow to be measured in the brain and other organs of the body, which is valuable for both research and clinical use. Unfortunately, ASL suffers from an inherently low signal to noise ratio, necessitating methodological advances in ASL acquisition and processing. Spatial regularisation improves the effective signal to noise ratio, and is a common step in ASL processing. However, the standard spatial regularisation technique requires a manually-specified smoothing kernel of an arbitrary size, and can lead to loss of fine detail. Here, we present a Bayesian model of spatial correlation, which uses anatomical information from structural images to perform principled spatial regularisation, modelling the underlying signal and removing the need to set arbitrary smoothing parameters. Using data from a large cohort (N = 130) of preterm-born adolescents and age-matched controls, we show our method yields significant improvements in test-retest reproducibility, increasing the correlation coefficient by 14% relative to Gaussian smoothing and giving a corresponding improvement in statistical power. This novel technique has the potential to significantly improve single inversion time ASL studies, allowing more reliable detection of perfusion differences with a smaller number of subjects.
机译:动脉自旋标记(ASL)可以测量大脑和身体其他器官中的血流量,这对研究和临床使用都具有重要意义。不幸的是,ASL固有地具有较低的信噪比,因此必须在ASL采集和处理方面进行方法上的改进。空间正则化提高了有效信噪比,并且是ASL处理中的常见步骤。但是,标准空间正则化技术需要手动指定的任意大小的平滑核,并且可能导致细节损失。在这里,我们提出了一种空间相关性的贝叶斯模型,该模型使用结构图像中的解剖信息来执行有原则的空间正则化,对基础信号进行建模并消除了设置任意平滑参数的需要。使用来自一大群(N = 130)早产青少年和与年龄匹配的对照组的数据,我们证明了我们的方法在重测重现性方面取得了显着改善,相对于高斯平滑,相关系数提高了14%,并给出了相应的结果。统计能力的提高。这项新技术有可能显着改善单次反转时间的ASL研究,从而可以更可靠地检测较少数量的受试者的灌注差异。

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