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Magnetic Resonance Spectroscopy Quantification Using Deep Learning

机译:使用深度学习的磁共振波谱定量

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Magnetic resonance spectroscopy (MRS) is an important technique in biomedical research and it has the unique capability to give a non-invasive access to the biochemical content (metabolites) of scanned organs. In the literature, the quantification (the extraction of the potential biomarkers from the MRS signals) involves the resolution of an inverse problem based on a parametric model of the metabolite signal. However, poor signal-to-noise ratio (SNR), presence of the macro-molecule signal or high correlation between metabolite spectral patterns can cause high uncertainties for most of the metabolites, which is one of the main reasons that prevents use of MRS in clinical routine. In this paper, quantification of metabolites in MR Spectroscopic imaging using deep learning is proposed. A regression framework based on the Convolu-tional Neural Networks (CNN) is introduced for an accurate estimation of spectral parameters. The proposed model learns the spectral features from a large-scale simulated data set with different variations of human brain spectra and SNRs. Experimental results demonstrate the accuracy of the proposed method, compared to state of the art standard quantification method (QUEST), on concentration of 20 metabolites and the macromolecule.
机译:磁共振波谱(MRS)是生物医学研究中的一项重要技术,它具有独特的功能,可以无创地访问扫描器官的生化成分(代谢产物)。在文献中,量化(从MRS信号中提取潜在的生物标志物)涉及基于代谢物信号的参数模型解决反问题。然而,差的信噪比(SNR),大分子信号的存在或代谢物谱图之间的高度相关性可能导致大多数代谢物的高度不确定性,这是阻止在MRS中使用MRS的主要原因之一。临床常规。本文提出了使用深度学习对MR光谱成像中代谢物进行定量的方法。引入了基于卷积神经网络(CNN)的回归框架,用于准确估计光谱参数。所提出的模型从具有不同人脑光谱和SNR变化的大规模模拟数据集中学习光谱特征。实验结果证明,与现有的标准定量方法(QUEST)相比,所提出方法在20种代谢物和大分子浓度方面的准确性。

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