Literature DB >> 32865396

Five Easy Metrics of Data Quality for LC-MS-Based Global Metabolomics.

Xinyu Zhang1, Jiyang Dong2, Daniel Raftery1.   

Abstract

Data quality in global metabolomics is of great importance for biomarker discovery and system biology studies. However, comprehensive metrics and methods to evaluate and compare the data quality of global metabolomics data sets are lacking. In this work, we combine newly developed metrics, along with well-known measures, to comprehensively and quantitatively characterize the data quality across two similar liquid chromatography coupled with mass spectrometry (LC-MS) platforms, with the goal of providing an efficient and improved ability to evaluate the data quality in global metabolite profiling experiments. A pooled human serum sample was run 50 times on two high-resolution LC-QTOF-MS platforms to provide profile and centroid MS data. These data were processed using Progenesis QI software and then analyzed using five important data quality measures, including retention time drift, the number of compounds detected, missing values, and MS reproducibility (2 measures). The detected compounds were fit to a γ distribution versus compound abundance, which was normalized to allow comparison of different platforms. To evaluate missing values, characteristic curves were obtained by plotting the compound detection percentage versus extraction frequency. To characterize reproducibility, the accumulative coefficient of variation (CV) versus the percentage of total compounds detected and intraclass correlation coefficient (ICC) versus compound abundance were investigated. Key findings include significantly better performance using profile mode data compared to centroid mode as well quantitatively better performance from the newer, higher resolution instrument. A summary table of results gives a snapshot of the experimental results and provides a template to evaluate the global metabolite profiling workflow. In total, these measures give a good overall view of data quality in global profiling and allow comparisons of data acquisition strategies and platforms as well as optimization of parameters.

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Year:  2020        PMID: 32865396      PMCID: PMC7943071          DOI: 10.1021/acs.analchem.0c01493

Source DB:  PubMed          Journal:  Anal Chem        ISSN: 0003-2700            Impact factor:   6.986


  32 in total

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Journal:  Anal Chim Acta       Date:  2011-11-04       Impact factor: 6.558

2.  Protocol for quality control in metabolic profiling of biological fluids by U(H)PLC-MS.

Authors:  Helen G Gika; Chrysostomi Zisi; Georgios Theodoridis; Ian D Wilson
Journal:  J Chromatogr B Analyt Technol Biomed Life Sci       Date:  2015-11-10       Impact factor: 3.205

3.  XCMS: processing mass spectrometry data for metabolite profiling using nonlinear peak alignment, matching, and identification.

Authors:  Colin A Smith; Elizabeth J Want; Grace O'Maille; Ruben Abagyan; Gary Siuzdak
Journal:  Anal Chem       Date:  2006-02-01       Impact factor: 6.986

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Journal:  Nat Protoc       Date:  2011-05-05       Impact factor: 13.491

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Journal:  Metabolites       Date:  2016-11-03

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Authors:  David S Wishart; Yannick Djoumbou Feunang; Ana Marcu; An Chi Guo; Kevin Liang; Rosa Vázquez-Fresno; Tanvir Sajed; Daniel Johnson; Carin Li; Naama Karu; Zinat Sayeeda; Elvis Lo; Nazanin Assempour; Mark Berjanskii; Sandeep Singhal; David Arndt; Yonjie Liang; Hasan Badran; Jason Grant; Arnau Serra-Cayuela; Yifeng Liu; Rupa Mandal; Vanessa Neveu; Allison Pon; Craig Knox; Michael Wilson; Claudine Manach; Augustin Scalbert
Journal:  Nucleic Acids Res       Date:  2018-01-04       Impact factor: 16.971

Review 7.  Guidelines and considerations for the use of system suitability and quality control samples in mass spectrometry assays applied in untargeted clinical metabolomic studies.

Authors:  David Broadhurst; Royston Goodacre; Stacey N Reinke; Julia Kuligowski; Ian D Wilson; Matthew R Lewis; Warwick B Dunn
Journal:  Metabolomics       Date:  2018-05-18       Impact factor: 4.290

8.  Towards quality assurance and quality control in untargeted metabolomics studies.

Authors:  Richard D Beger; Warwick B Dunn; Abbas Bandukwala; Bianca Bethan; David Broadhurst; Clary B Clish; Surendra Dasari; Leslie Derr; Annie Evans; Steve Fischer; Thomas Flynn; Thomas Hartung; David Herrington; Richard Higashi; Ping-Ching Hsu; Christina Jones; Maureen Kachman; Helen Karuso; Gary Kruppa; Katrice Lippa; Padma Maruvada; Jonathan Mosley; Ioanna Ntai; Claire O'Donovan; Mary Playdon; Daniel Raftery; Daniel Shaughnessy; Amanda Souza; Timothy Spaeder; Barbara Spalholz; Fariba Tayyari; Baljit Ubhi; Mukesh Verma; Tilman Walk; Ian Wilson; Keren Witkin; Daniel W Bearden; Krista A Zanetti
Journal:  Metabolomics       Date:  2019-01-03       Impact factor: 4.290

9.  Non-targeted UHPLC-MS metabolomic data processing methods: a comparative investigation of normalisation, missing value imputation, transformation and scaling.

Authors:  Riccardo Di Guida; Jasper Engel; J William Allwood; Ralf J M Weber; Martin R Jones; Ulf Sommer; Mark R Viant; Warwick B Dunn
Journal:  Metabolomics       Date:  2016-04-15       Impact factor: 4.290

10.  Missing Value Imputation Approach for Mass Spectrometry-based Metabolomics Data.

Authors:  Runmin Wei; Jingye Wang; Mingming Su; Erik Jia; Shaoqiu Chen; Tianlu Chen; Yan Ni
Journal:  Sci Rep       Date:  2018-01-12       Impact factor: 4.379

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2.  Toxoplasma gondii induces metabolic disturbances in the hippocampus of BALB/c mice.

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Authors:  Nathan Hwangbo; Xinyu Zhang; Daniel Raftery; Haiwei Gu; Shu-Ching Hu; Thomas J Montine; Joseph F Quinn; Kathryn A Chung; Amie L Hiller; Dongfang Wang; Qiang Fei; Lisa Bettcher; Cyrus P Zabetian; Elaine Peskind; Gail Li; Daniel E L Promislow; Alexander Franks
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4.  ProMetIS, deep phenotyping of mouse models by combined proteomics and metabolomics analysis.

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5.  Metaboprep: an R package for pre-analysis data description and processing.

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6.  Predictive Modeling of Alzheimer's and Parkinson's Disease Using Metabolomic and Lipidomic Profiles from Cerebrospinal Fluid.

Authors:  Nathan Hwangbo; Xinyu Zhang; Daniel Raftery; Haiwei Gu; Shu-Ching Hu; Thomas J Montine; Joseph F Quinn; Kathryn A Chung; Amie L Hiller; Dongfang Wang; Qiang Fei; Lisa Bettcher; Cyrus P Zabetian; Elaine R Peskind; Ge Li; Daniel E L Promislow; Marie Y Davis; Alexander Franks
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7.  PeakBot: Machine learning based chromatographic peak picking.

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8.  Effects of Dufulin on Oxidative Stress and Metabolomic Profile of Tubifex.

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Journal:  Metabolites       Date:  2021-06-11

9.  Data Processing Thresholds for Abundance and Sparsity and Missed Biological Insights in an Untargeted Chemical Analysis of Blood Specimens for Exposomics.

Authors:  Dinesh Kumar Barupal; Sadjad Fakouri Baygi; Robert O Wright; Manish Arora
Journal:  Front Public Health       Date:  2021-06-10

10.  Physiological extremes of the human blood metabolome: A metabolomics analysis of highly glycolytic, oxidative, and anabolic athletes.

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