Speedy Component Resolution Using Spatially Encoded Diffusion NMR Data

IF 1.9 3区 化学 Q3 CHEMISTRY, MULTIDISCIPLINARY Magnetic Resonance in Chemistry Pub Date : 2024-10-16 DOI:10.1002/mrc.5488
Benjamin Lorandel, Hugo Rocha, Oksana Cazimajou, Rituraj Mishra, Aurélie Bernard, Paul Bowyer, Mathias Nilsson, Jean-Nicolas Dumez
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Abstract

Diffusion-ordered NMR spectroscopy (DOSY) is a powerful tool to analyse mixtures. Spatially encoded (SPEN) DOSY enables recording a full DOSY dataset in just one scan by performing spatial parallelisation of the gradient dimension. The simplest and most widely used approach to processing DOSY data is to fit each peak in the spectrum with a single or multiple exponential decay. However, when there is peak overlap, and/or when the diffusion decays of the contributing components are too similar, this method has limitations. Multivariate analysis of DOSY data, which is an attractive alternative, consists of decomposing the experimental data, into compound-specific diffusion decays and 1D NMR spectra. Multivariate analysis has been very successfully used for conventional DOSY data, but its use for SPEN DOSY data has only recently been reported. Here, we present a comparison, for SPEN DOSY data, of two widely used algorithms, SCORE and OUTSCORE, that aim at unmixing the spectra of overlapped species through a least square fit or a cross-talk minimisation, respectively. Data processing was performed with the General NMR Analysis Toolbox (GNAT), with custom-written code elements that now expands the capabilities, and makes it possible to import and process SPEN DOSY data. This comparison is demonstrated on three different two-component mixtures, each with different characteristics in terms of signal overlap, diffusion coefficient similarity, and component concentration.

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利用空间编码扩散核磁共振数据快速分辨成分
扩散有序核磁共振光谱(DOSY)是分析混合物的强大工具。空间编码(SPEN)DOSY 通过对梯度维度进行空间平行化处理,只需一次扫描即可记录完整的 DOSY 数据集。处理 DOSY 数据的最简单和最广泛使用的方法是用单个或多个指数衰减拟合光谱中的每个峰值。然而,当存在峰值重叠和/或贡献成分的扩散衰变过于相似时,这种方法就会受到限制。DOSY 数据的多元分析是一种有吸引力的替代方法,它将实验数据分解为特定化合物的扩散衰变和一维 NMR 光谱。多变量分析已成功用于传统的 DOSY 数据,但将其用于 SPEN DOSY 数据的报道最近才有。在此,我们针对 SPEN DOSY 数据比较了两种广泛使用的算法 SCORE 和 OUTSCORE,这两种算法的目的分别是通过最小平方拟合或交叉最小化来解除重叠物种光谱的混合。数据处理是通过通用核磁共振分析工具箱(GNAT)进行的,其中的定制代码元素扩展了其功能,使其能够导入和处理 SPEN DOSY 数据。这种比较在三种不同的双组分混合物上进行了演示,每种混合物在信号重叠、扩散系数相似性和组分浓度方面都具有不同的特征。
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来源期刊
CiteScore
4.70
自引率
10.00%
发文量
99
审稿时长
1 months
期刊介绍: MRC is devoted to the rapid publication of papers which are concerned with the development of magnetic resonance techniques, or in which the application of such techniques plays a pivotal part. Contributions from scientists working in all areas of NMR, ESR and NQR are invited, and papers describing applications in all branches of chemistry, structural biology and materials chemistry are published. The journal is of particular interest not only to scientists working in academic research, but also those working in commercial organisations who need to keep up-to-date with the latest practical applications of magnetic resonance techniques.
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