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Signal preprocessing, multivariate analysis and software tools for MA(LDI)-TOF mass spectrometry imaging for biological applications

机译:用于生物应用的MA(LDI)-TOF质谱成像的信号预处理,多变量分析和软件工具

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摘要

Mass spectrometry imaging (MSI) is a label-free analytical technique capable of molecularly characterizing biological samples, including tissues and cell lines. The constant development of analytical instrumentation and strategies over the previous decade makes MSI a key tool in clinical research. Nevertheless, most MSI studies are limited to targeted analysis or the mere visualization of a few molecular species (proteins, peptides, metabolites, or lipids) in a region of interest without fully exploiting the possibilities inherent in the MSI technique, such as tissue classification and segmentation or the identification of relevant biomarkers from an untargeted approach. MSI data processing is challenging due to several factors. The large volume of mass spectra involved in a MSI experiment makes choosing the correct computational strategies critical. Furthermore, pixel to pixel variation inherent in the technique makes choosing the correct preprocessing steps critical. The primary aim of this review was to provide an overview of the data-processing steps and tools that can be applied to an MSI experiment, from preprocessing the raw data to the more advanced strategies for image visualization and segmentation. This review is particularly aimed at researchers performing MSI experiments and who are interested in incorporating new data-processing features, improving their computational strategy, and/or desire access to data-processing tools currently available. (c) 2016 Wiley Periodicals, Inc. Mass Spec Rev 37:281-306, 2018
机译:质谱成像(MSI)是一种无标记的分析技术,其能够分子表征生物样品,包括组织和细胞系。过去十年的分析仪器和策略的不断发展使MSI成为临床研究中的关键工具。然而,大多数MSI研究仅限于目标分析或仅仅在感兴趣区域中的少数分子种类(蛋白质,肽,代谢物或脂质)的可视化,而不完全利用MSI技术所固有的可能性,例如组织分类和从未确定的方法中分割或识别相关的生物标志物。由于几个因素,MSI数据处理是具有挑战性的。 MSI实验中涉及的大量质谱使得选择正确的计算策略至关重要。此外,技术中固有的像素变化的像素使得选择正确的预处理步骤至关重要。本次审查的主要目的是提供可以应用于MSI实验的数据处理步骤和工具的概述,从预处理原始数据到更高级的图像可视化和分段策略。本次审查特别针对执行MSI实验的研究人员,并且有兴趣纳入新的数据处理功能,提高其计算策略和/或愿望访问当前可用的数据处理工具。 (c)2016 Wiley期刊,Inc。大规模规格申请37:281-306,2018

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