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首页> 外文期刊>Journal of Cheminformatics >rMSIcleanup: an open-source tool for matrix-related peak annotation in mass spectrometry imaging and its application to silver-assisted laser desorption/ionization
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rMSIcleanup: an open-source tool for matrix-related peak annotation in mass spectrometry imaging and its application to silver-assisted laser desorption/ionization

机译:RMSICLEANUP:质谱成像中的矩阵相关峰值注释的开源工具及其在银辅助激光解吸/电离中的应用

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Mass spectrometry imaging (MSI) has become a mature, widespread analytical technique to perform non-targeted spatial metabolomics. However, the compounds used to promote desorption and ionization of the analyte during acquisition cause spectral interferences in the low mass range that hinder downstream data processing in metabolomics applications. Thus, it is advisable to annotate and remove matrix-related peaks to reduce the number of redundant and non-biologically-relevant variables in the dataset. We have developed rMSIcleanup, an open-source R package to annotate and remove signals from the matrix, according to the matrix chemical composition and the spatial distribution of its ions. To validate the annotation method, rMSIcleanup was challenged with several images acquired using silver-assisted laser desorption ionization MSI (AgLDI MSI). The algorithm was able to correctly classify m/z signals related to silver clusters. Visual exploration of the data using Principal Component Analysis (PCA) demonstrated that annotation and removal of matrix-related signals improved spectral data post-processing. The results highlight the need for including matrix-related peak annotation tools such as rMSIcleanup in MSI workflows.
机译:质谱成像(MSI)已成为成熟,广泛的分析技术,用于执行非靶向空间代谢物学。然而,用于促进分析物的解吸和电离的化合物在采集期间导致低质量范围内的光谱干扰,其在代谢组应用中妨碍下游数据处理。因此,建议注释和删除与矩阵相关的峰值以减少数据集中的冗余和非生物相关变量的数量。我们开发了RMSICLEANUP,一种开源R包,根据基质化学成分和离子的空间分布,向矩阵注释和删除来自矩阵的信号。为了验证注释方法,RMSICleanup挑战,利用使用银辅助激光解吸电离MSI(AGLDI MSI)获取的若干图像。该算法能够正确分类与银集群相关的M / Z信号。使用主成分分析(PCA)对数据的视觉探索证明了与矩阵相关信号的注释和去除改进了频谱数据后处理。结果突出了包括MSI工作流程中的矩阵相关峰值注释工具(如RMSICleanup)的需要。

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