混合物的自动核磁共振指纹识别

IF 1.9 3区 化学 Q3 CHEMISTRY, MULTIDISCIPLINARY
Thomas Specht, Justus Arweiler, Johannes Stüber, Kerstin Münnemann, Hans Hasse, Fabian Jirasek
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引用次数: 0

摘要

核磁共振(NMR)光谱是一种强大的定性和定量分析工具。然而,对于复杂的混合物来说,从核磁共振光谱中确定物种可能会很繁琐,有时甚至是不可行的。另一方面,从核磁共振光谱中识别和量化混合物中的结构基团要比对成分进行同样的分析容易得多。我们将这种基于基团的方法称为 "核磁共振指纹识别"。在这项工作中,我们展示了 NMR 指纹识别甚至可以自动执行,无需专业知识,只需基于标准 NMR 图谱,即 13C、1H 和 13C DEPT NMR 图谱。我们的方法基于支持向量分类 (SVC) 的机器学习方法,该方法是在数以千计来自开源数据库的标记纯成分 NMR 图谱上训练出来的。我们使用测试混合物演示了自动 NMR 指纹识别的适用性,这些混合物的光谱是使用简单的台式 NMR 光谱仪采集的。核磁共振指纹识别的结果与基本真实值非常吻合,而基本真实值是通过样品的重量制备得知的。为方便该方法的应用,我们提供了一个互动网站(https://nmr-fingerprinting.de),可在该网站上传光谱信息并返回 NMR 指纹。核磁共振指纹图谱可用于多种用途,例如,使用基团贡献法进行过程监控或热力学建模,或仅仅作为物种分析的第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automated nuclear magnetic resonance fingerprinting of mixtures

Automated nuclear magnetic resonance fingerprinting of mixtures

Nuclear magnetic resonance (NMR) spectroscopy is a powerful tool for qualitative and quantitative analysis. However, for complex mixtures, determining the speciation from NMR spectra can be tedious and sometimes even unfeasible. On the other hand, identifying and quantifying structural groups in a mixture from NMR spectra is much easier than doing the same for components. We call this group-based approach “NMR fingerprinting.” In this work, we show that NMR fingerprinting can even be performed in an automated way, without expert knowledge, based only on standard NMR spectra, namely, 13C, 1H, and 13C DEPT NMR spectra. Our approach is based on the machine-learning method of support vector classification (SVC), which was trained here on thousands of labeled pure-component NMR spectra from open-source data banks. We demonstrate the applicability of the automated NMR fingerprinting using test mixtures, of which spectra were taken using a simple benchtop NMR spectrometer. The results from the NMR fingerprinting agree remarkably well with the ground truth, which was known from the gravimetric preparation of the samples. To facilitate the application of the method, we provide an interactive website (https://nmr-fingerprinting.de), where spectral information can be uploaded and which returns the NMR fingerprint. The NMR fingerprinting can be used in many ways, for example, for process monitoring or thermodynamic modeling using group-contribution methods—or simply as a first step in species analysis.

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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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