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MetaboLyzer: A Novel Statistical Workflow for Analyzing Postprocessed LC-MS Metabolomics Data

机译:MetaboLyzer:用于分析后处理的LC-MS代谢组学数据的新型统计工作流程

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Metabolomics, the global study of small molecules in a particular system, has in the past few years risen to become a primary -omics platform for the study of metabolic processes. With the ever-increasing pool of quantitative data yielded from metabolomic research, specialized methods and tools with which to analyze and extract meaningful conclusions from these data are becoming more and more crucial. Furthermore, the depth of knowledge and expertise required to undertake a metabolomics oriented study is a daunting obstacle to investigators new to the field. As such, we have created a new statistical analysis workflow, MetaboLyzer, which aims to both simplify analysis for investigators new to metabolomics, as well as provide experienced investigators the flexibility to conduct sophisticated analysis. MetaboLyzer's workflow is specifically tailored to the unique characteristics and idiosyncrasies of postprocessed liquid chromatography--mass spectrometry (LC-MS)-based metabolomic data sets. It utilizes a wide gamut of statistical tests, procedures, and methodologies that belong to classical biostatistics, as well as several novel statistical techniques that we have developed specifically for metabolomics data. Furthermore, MetaboLyzer conducts rapid putative ion identification and putative biologically relevant analysis via incorporation of four major small molecule databases: KEGG, HMDB, Lipid Maps, and BioCyc. MetaboLyzer incorporates these aspects into a comprehensive workflow that outputs easy to understand statistically significant and potentially biologically relevant information in the form of heatmaps, volcano plots, 3D visualization plots, correlation maps, and metabolic pathway hit histograms. For demonstration purposes, a urine metabolomics data set from a previously reported radiobiology study in which samples were collected from mice exposed to γ radiation was analyzed. MetaboLyzer was able to identify 243 statistically significant ions out of a total of 1942. Numerous putative metabolites and pathways were found to be biologically significant from the putative ion identification workflow.
机译:代谢组学是对特定系统中小分子的全球研究,在过去的几年中已经发展成为代谢过程研究的主要组学平台。随着代谢组学研究产生的定量数据不断增加,用于分析和从这些数据中提取有意义的结论的专门方法和工具变得越来越重要。此外,进行以代谢组学为导向的研究所需的知识和专业知识的深度,对刚进入该领域的研究者来说是一个巨大的障碍。因此,我们创建了一个新的统计分析工作流程MetaboLyzer,旨在简化对代谢组学新手的研究人员的分析,并为经验丰富的研究人员提供进行复杂分析的灵活性。 MetaboLyzer的工作流程专门针对基于液相色谱-质谱(LC-MS)的后代代谢组学数据集的独特特征和特质而量身定制。它利用了大量属于经典生物统计学的统计测试,程序和方法,以及我们专门为代谢组学数据开发的几种新颖的统计技术。此外,MetaboLyzer通过整合四个主要的小分子数据库:KEGG,HMDB,脂质图和BioCyc,进行了快速的假定离子鉴定和生物学上相关的假定分析。 MetaboLyzer将这些方面整合到一个全面的工作流程中,以热图,火山图,3D可视化图,相关图和代谢途径命中直方图的形式输出易于理解的具有统计意义的潜在生物相关信息。出于演示目的,分析了以前报道的放射生物学研究中的尿液代谢组学数据,该数据中收集了暴露于γ辐射的小鼠的样品。 MetaboLyzer能够鉴定出总共1942种物质中的243种具有统计意义的离子。从推定的离子鉴定工作流程中发现了许多推定的代谢物和途径具有生物学意义。

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