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A priori knowledge based frequency-domain quantification of prostate Magnetic Resonance Spectroscopy

机译:基于先验知识的前列腺磁共振波谱频域量化

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This paper proposes a frequency-domain Magnetic Resonance (MR) spectral processing method based on sparse representation for accurate quantification of prostate spectra. Generally, an observed prostate spectrum can be considered as a mixture of resonances of interest, a baseline and noise. As the resonances of interest often overlap and the baseline is unknown, their separation and quantification can be difficult. In the proposed method, based on the commonly used signal model of prostate spectra and some a priori knowledge of nonlinear model parameters, a dictionary is constructed which can sparsely represent the resonances of interest as well as the baseline in an input spectrum. The estimation of the resonances of interest is achieved by finding their sparse representations with respect this dictionary. A linear pursuit algorithm based on regularized FOCUSS (Focal Underdetermined System Solver) algorithm is proposed to estimate these sparse representations. The robustness and accuracy of prostate spectrum quantification of the proposed method are improved compared with two classical spectral processing methods: model-based time domain fitting and frequency-domain analysis based on peak integration when tested on simulation data. Quantification on in vivo prostate spectra is also demonstrated and the results appear encouraging.
机译:本文提出了一种基于稀疏表示的频域磁共振光谱处理方法,用于前列腺光谱的准确定量。通常,可以将观察到的前列腺光谱视为感兴趣的共振,基线和噪声的混合。由于感兴趣的共振常常重叠且基线未知,因此它们的分离和定量可能很困难。在所提出的方法中,基于常用的前列腺频谱信号模型和一些非线性模型参数的先验知识,构造了一个字典,该字典可以稀疏地表示输入频谱中感兴趣的共振以及基线。通过找到相对于该字典的稀疏表示,可以实现感兴趣的共振的估计。提出了一种基于正则化FOCUSS(Focal欠定系统求解器)算法的线性追踪算法来估计这些稀疏表示。与两种经典的光谱处理方法相比,该方法的前列腺光谱定量分析的鲁棒性和准确性得到了提高:在仿真数据上进行测试时,基于模型的时域拟合和基于峰值积分的频域分析。还证明了体内前列腺光谱的定量,结果似乎令人鼓舞。

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