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首页> 外文期刊>Magnetic resonance in medicine: official journal of the Society of Magnetic Resonance in Medicine >Advantages of frequency-domain modeling in dynamic-susceptibility contrast magnetic resonance cerebral blood flow quantification.
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Advantages of frequency-domain modeling in dynamic-susceptibility contrast magnetic resonance cerebral blood flow quantification.

机译:频域建模在动态磁化强度对比磁共振脑血流定量分析中的优势。

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摘要

In dynamic-susceptibility contrast magnetic resonance perfusion imaging, the cerebral blood flow (CBF) is estimated from the tissue residue function obtained through deconvolution of the contrast concentration functions. However, the reliability of CBF estimates obtained by deconvolution is sensitive to various distortions including high-frequency noise amplification. The frequency-domain Fourier transform-based and the time-domain singular-value decomposition-based (SVD) algorithms both have biases introduced into their CBF estimates when noise stability criteria are applied or when contrast recirculation is present. The recovery of the desired signal components from amid these distortions by modeling the residue function in the frequency domain is demonstrated. The basic advantages and applicability of the frequency-domain modeling concept are explored through a simple frequency-domain Lorentzian model (FDLM); with results compared to standard SVD-based approaches. The performance of the FDLM method is model dependent, well representing residue functions in the exponential family while less accurately representing other functions.
机译:在动态敏感性对比磁共振灌注成像中,根据通过对比浓度函数反卷积获得的组织残差函数估算脑血流量(CBF)。但是,通过反卷积获得的CBF估计值的可靠性对包括高频噪声放大在内的各种失真敏感。当应用噪声稳定标准或存在对比循环时,基于频域傅立叶变换和基于时域奇异值分解(SVD)的算法都会在CBF估计中引入偏差。通过在频域中对残差函数建模,从这些失真中恢复了所需的信号分量。通过简单的频域洛伦兹模型(FDLM)探索了频域建模概念的基本优势和适用性。结果与基于SVD的标准方法相比。 FDLM方法的性能取决于模型,可以很好地表示指数族中的残差函数,而不太准确地表示其他函数。

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