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一种用于二维扩散弛豫数据分析的新型改进方法——二维平行因子-拉普拉斯分解。

A novel improved method for analysis of 2D diffusion-relaxation data--2D PARAFAC-Laplace decomposition.

作者信息

Tønning Erik, Polders Daniel, Callaghan Paul T, Engelsen Søren B

机构信息

Quality & Technology, Department of Food Science, Faculty of Life Sciences, University of Copenhagen, Rolighedsvej 30, DK-1958 Frederiksberg C, Denmark.

出版信息

J Magn Reson. 2007 Sep;188(1):10-23. doi: 10.1016/j.jmr.2007.05.018. Epub 2007 Jun 8.

Abstract

This paper demonstrates how the multi-linear PARAFAC model can with advantage be used to decompose 2D diffusion-relaxation correlation NMR spectra prior to 2D-Laplace inversion to the T(2)-D domain. The decomposition is advantageous for better interpretation of the complex correlation maps as well as for the quantification of extracted T(2)-D components. To demonstrate the new method seventeen mixtures of wheat flour, starch, gluten, oil and water were prepared and measured with a 300 MHz nuclear magnetic resonance (NMR) spectrometer using a pulsed gradient stimulated echo (PGSTE) pulse sequence followed by a Carr-Purcell-Meiboom-Gill (CPMG) pulse echo train. By varying the gradient strength, 2D diffusion-relaxation data were recorded for each sample. From these double exponentially decaying relaxation data the PARAFAC algorithm extracted two unique diffusion-relaxation components, explaining 99.8% of the variation in the data set. These two components were subsequently transformed to the T(2)-D domain using 2D-inverse Laplace transformation and quantitatively assigned to the oil and water components of the samples. The oil component was one distinct distribution with peak intensity at D=3 x 10(-12) m(2) s(-1) and T(2)=180 ms. The water component consisted of two broad populations of water molecules with diffusion coefficients and relaxation times centered around correlation pairs: D=10(-9) m(2) s(-1), T(2)=10 ms and D=3 x 10(-13) m(2) s(-1), T(2)=13 ms. Small spurious peaks observed in the inverse Laplace transformation of original complex data were effectively filtered by the PARAFAC decomposition and thus considered artefacts from the complex Laplace transformation. The oil-to-water ratio determined by PARAFAC followed by 2D-Laplace inversion was perfectly correlated with known oil-to-water ratio of the samples. The new method of using PARAFAC prior to the 2D-Laplace inversion proved to have superior potential in analysis of diffusion-relaxation spectra, as it improves not only the interpretation, but also the quantification.

摘要

本文展示了多线性平行因子分析(PARAFAC)模型如何能有效地用于在二维拉普拉斯反演到T(2)-D域之前,对二维扩散-弛豫相关核磁共振谱进行分解。这种分解有利于更好地解释复杂的相关图谱,以及对提取的T(2)-D成分进行定量分析。为了证明该新方法,制备了17种由小麦粉、淀粉、面筋、油和水组成的混合物,并用一台300兆赫核磁共振(NMR)光谱仪进行测量,使用脉冲梯度刺激回波(PGSTE)脉冲序列,随后是Carr-Purcell-Meiboom-Gill(CPMG)脉冲回波串。通过改变梯度强度,记录了每个样品的二维扩散-弛豫数据。从这些双指数衰减的弛豫数据中,PARAFAC算法提取出两个独特的扩散-弛豫成分,解释了数据集中99.8%的变化。随后,使用二维逆拉普拉斯变换将这两个成分转换到T(2)-D域,并定量地分配给样品中的油和水成分。油成分是一个明显的分布,在D = 3×10(-12)平方米每秒处有峰值强度,T(2)=180毫秒。水成分由两组广泛的水分子组成,其扩散系数和弛豫时间以相关对为中心:D = 10(-9)平方米每秒,T(2)=10毫秒和D = 3×10(-13)平方米每秒,T(2)=13毫秒。在原始复杂数据的逆拉普拉斯变换中观察到的小的伪峰,通过PARAFAC分解被有效地滤除,因此被认为是复杂拉普拉斯变换产生的伪像。由PARAFAC然后进行二维拉普拉斯反演确定的油与水的比例与样品已知的油与水的比例完全相关。在二维拉普拉斯反演之前使用PARAFAC的新方法在扩散-弛豫光谱分析中被证明具有卓越的潜力,因为它不仅改善了解释,还提高了定量分析能力。

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