核磁共振后处理中Lorentzian峰重构的特征选择

Hyung-Won Koh, S. Maddula, J. Lambert, R. Hergenröder, L. Hildebrand
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引用次数: 6

摘要

近年来,核磁共振波谱(NMR)在代谢组学分析领域得到了越来越广泛的应用。因此,由于所获得的数据的复杂性和非平凡性,分析和解释仍然具有挑战性。对获得的数据的进一步分析仍然主要是基于人工分配、人工分析和专家知识,因此非常耗时。实现自动化后处理方法的常见方法通常基于分箱,这在任何情况下都会导致信息丢失。本文提出了一种将一维核磁共振谱重建为一组不同的洛伦兹峰线的方法,作为一种令人印象深刻的特征选择和数据简化方法,并评估了在现实世界以及不同的模拟光谱上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Selection by Lorentzian Peak Reconstruction for ^1NMR Post-Processing
In recent years, nuclear magnetic resonance spectroscopy (NMR) has become more and more popular in the field of metabolomic analysis. Analyzing and interpreting the obtained data is thus still challenging due to its complex and nontrivial characteristics. Further analysis of the obtained data is still mainly based on manual assignment, manual analysis and expert knowledge, and therefore time consuming. Common approaches towards automated post processing methods are often based on binning, which leads to loss of information in any case. This paper addresses an approach for reconstructing a one-dimensional NMR spectrum into a set of distinct lorentzian peak lines as an impressive feature selection and data reduction method and evaluates the performance on a real-world as well as on different simulated spectra.
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