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首页> 外文期刊>Nova Hedwigia: Zeitschrift fur Kryptogamenkunde >Cerebral blood flow estimation from perfusion-weighted MRI using FT-based MMSE filtering method
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Cerebral blood flow estimation from perfusion-weighted MRI using FT-based MMSE filtering method

机译:基于基于FT的MMSE滤波方法的灌注加权MRI估计脑血流量

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摘要

Introduction: Perfusion-weighted MRI can be used for estimating blood flow parameters using bolus tracking technique based on dynamic susceptibility contrast MRI. In order to extract flow parameters, several deconvolution techniques have been proposed, of which the singular value decomposition (SVD) and Fourier transform (FT)-based techniques are more popular and widely used. In this work, an FT-based method has been proposed that involves derivation of an optimal shaped filter (defined as a filter function) estimated using minimum mean-squared error (MMSE) technique in the frequency domain. The proposed technique has been compared with the well-established SVD technique using simulation experiments. Simulation Methods: Simulation was performed in multiple steps. An arterial input function (AIF) was first defined based on a certain blood flow value. The T2~* signal change was then derived from this AIF, and noise was added to the signal. Then, a unique and optimal shaped filter function Φ(f) was derived in order to obtain the best estimate of scaled residue function. One way is by minimizing the mean-squared error between the noiseless and noisy scaled residue function, i.e., using an MMSE method. The effect of low and moderate noise and distorted AIF on cerebral blood flow (CBF) estimates was obtained by using FT-based MMSE method. Results were compared with the SVD technique. In this work, SVD technique was assumed to be the standard reference deconvolution technique. Results and Discussion: For low-noise condition, the FT-based technique was more stable than the SVD technique, while for moderate noise, both techniques consistently underestimated CBF. SVD technique was found to be more stable in presence of AIF distortions. However, SVD technique was found to be unstable due to AIF delay compared to the FT-based MMSE method. The shaped filter function was found to be sensitive to effect of AIF distortions.
机译:简介:基于动态磁化率对比MRI的推注跟踪技术,可以使用灌注加权MRI估计血流参数。为了提取流量参数,已经提出了几种去卷积技术,其中基于奇异值分解(SVD)和基于傅立叶变换(FT)的技术更为流行和广泛使用。在这项工作中,已经提出了一种基于FT的方法,该方法涉及推导使用频域中的最小均方误差(MMSE)技术估算的最佳成形滤波器(定义为滤波器函数)。通过仿真实验,将所提出的技术与成熟的SVD技术进行了比较。模拟方法:模拟分多个步骤进行。首先基于一定的血流值定义动脉输入功能(AIF)。然后,从该AIF得出T2〜*信号变化,并将噪声添加到信号中。然后,导出唯一且最佳的成形滤波器函数Φ(f),以获得缩放残差函数的最佳估计。一种方法是通过最小化无噪和有噪缩放残差函数之间的均方误差,即使用MMSE方法。通过使用基于FT的MMSE方法,获得了中低噪声和AIF失真对脑血流量(CBF)估计的影响。将结果与SVD技术进行比较。在这项工作中,SVD技术被假定为标准参考反卷积技术。结果与讨论:对于低噪声条件,基于FT的技术比SVD技术更稳定,而对于中等噪声,这两种技术始终低估了CBF。发现在AIF失真的情况下SVD技术更稳定。但是,与基于FT的MMSE方法相比,SVD技术由于AIF延迟而不稳定。发现整形滤波器功能对AIF失真的影响敏感。

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