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Evaluation of the effect of arterial input function on cerebral blood flow in MR perfusion imaging

机译:MR灌注成像评估动脉输入功能对脑血流的影响

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Cerebral blood flow (CBF) calculation in perfusion weighted imaging starts with the selection of arterial input function (AIF). CBF indicates the initial value of the tissue residue function found by deconvolving the tissue perfusion curve with the AIF. Conventional approach of CBF calculation by deconvolution is singular value decomposition (SVD) method. This technique is not successful if the problem is ill-posed, which is the case when the singular values of the solution decrease rapidly. The ill-posed nature of the problem is generally resolved through the model independent method based on Tikhonov regularization. In this method, optimum value of the regularization parameter is selected either according to the L-curve criterion, LCC, or by the generalized cross validation method, GCV. In this study, besides Tikhonov regularization, a more deterministic method, state space model fitting was employed as an alternative approach and CBF values were found in well agreement with those found by Tikhonov regularization. AIF is delayed and dispersed during the transition from the major artery to the small arterial branches feeding the tissue. Since delay compensation is possible by time shifting, we focused on dispersion in this study. To be able to analyze the effects of dispersion on CBF computation, time curves of AIF and the tissue response were simulated. Different levels of dispersion were produced resulting in AIFs that simulate the transition from arteries to arterial branches at distant locations of the brain. The results of the simulation studies indicate that, if ignored, dispersion might result in underestimated CBF.
机译:灌注加权成像中的脑血流量(CBF)计算始于选择动脉输入功能(AIF)。 CBF表示通过将组织灌注曲线与AIF解卷积而发现的组织残留功能的初始值。通过反卷积计算CBF的常规方法是奇异值分解(SVD)方法。如果问题不适当地适用,则此技术将不成功,这是解决方案的奇异值快速下降的情况。通常通过基于Tikhonov正则化的模型独立方法来解决问题的不适性。在此方法中,可以根据L曲线标准LCC或通过通用交叉验证方法GCV选择正则化参数的最佳值。在这项研究中,除了Tikhonov正则化之外,还采用了更具确定性的方法,即采用状态空间模型拟合作为替代方法,发现CBF值与Tikhonov正则化所发现的吻合良好。 AIF在从大动脉过渡到向组织供血的小动脉分支的过渡过程中被延迟和分散。由于可以通过时移实现延迟补偿,因此在本研究中我们专注于色散。为了能够分析离散度对CBF计算的影响,模拟了AIF的时间曲线和组织反应。产生了不同程度的分散,从而产生了AIF,可以模拟大脑远处从动脉到动脉分支的过渡。仿真研究的结果表明,如果忽略,离散度可能导致CBF被低估。

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