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Signal Deconvolution and Noise Factor Analysis Based on a Combination of Time–Frequency Analysis and Probabilistic Sparse Matrix Factorization

机译:时频分析与概率稀疏矩阵分解相结合的信号去卷积与噪声因子分析

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摘要

Nuclear magnetic resonance (NMR) spectroscopy is commonly used to characterize molecular complexity because it produces informative atomic-resolution data on the chemical structure and molecular mobility of samples non-invasively by means of various acquisition parameters and pulse programs. However, analyzing the accumulated NMR data of mixtures is challenging due to noise and signal overlap. Therefore, data-cleansing steps, such as quality checking, noise reduction, and signal deconvolution, are important processes before spectrum analysis. Here, we have developed an NMR measurement informatics tool for data cleansing that combines short-time Fourier transform (STFT; a time–frequency analytical method) and probabilistic sparse matrix factorization (PSMF) for signal deconvolution and noise factor analysis. Our tool can be applied to the original free induction decay (FID) signals of a one-dimensional NMR spectrum. We show that the signal deconvolution method reduces the noise of FID signals, increasing the signal-to-noise ratio (SNR) about tenfold, and its application to diffusion-edited spectra allows signals of macromolecules and unsuppressed small molecules to be separated by the length of the * relaxation time. Noise factor analysis of NMR datasets identified correlations between SNR and acquisition parameters, identifying major experimental factors that can lower SNR.
机译:核磁共振(NMR)光谱通常用于表征分子的复杂性,因为它通过各种采集参数和脉冲程序可无创地提供有关样品的化学结构和分子迁移率的信息性原子分辨率数据。但是,由于噪声和信号重叠,分析混合物的累积NMR数据具有挑战性。因此,数据清洗步骤(例如质量检查,降噪和信号反卷积)是频谱分析之前的重要过程。在这里,我们开发了一种用于数据清洗的NMR测量信息学工具,该工具结合了短时傅立叶变换(STFT;一种时频分析方法)和概率稀疏矩阵分解(PSMF)来进行信号去卷积和噪声因子分析。我们的工具可以应用于一维NMR光谱的原始自由感应衰变(FID)信号。我们表明,信号去卷积方法将FID信号的噪声降低,将信噪比(SNR)增大了十倍左右,并将其应用于扩散编辑谱中,从而可以将大分子和未抑制的小分子的信号按长度分开*放松时间。 NMR数据集的噪声因子分析确定了SNR与采集参数之间的相关性,确定了可降低SNR的主要实验因子。

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