Literature DB >> 27231314

PyQuant: A Versatile Framework for Analysis of Quantitative Mass Spectrometry Data.

Christopher J Mitchell1, Min-Sik Kim2, Chan Hyun Na3, Akhilesh Pandey4.   

Abstract

Quantitative mass spectrometry data necessitates an analytical pipeline that captures the accuracy and comprehensiveness of the experiments. Currently, data analysis is often coupled to specific software packages, which restricts the analysis to a given workflow and precludes a more thorough characterization of the data by other complementary tools. To address this, we have developed PyQuant, a cross-platform mass spectrometry data quantification application that is compatible with existing frameworks and can be used as a stand-alone quantification tool. PyQuant supports most types of quantitative mass spectrometry data including SILAC, NeuCode, (15)N, (13)C, or (18)O and chemical methods such as iTRAQ or TMT and provides the option of adding custom labeling strategies. In addition, PyQuant can perform specialized analyses such as quantifying isotopically labeled samples where the label has been metabolized into other amino acids and targeted quantification of selected ions independent of spectral assignment. PyQuant is capable of quantifying search results from popular proteomic frameworks such as MaxQuant, Proteome Discoverer, and the Trans-Proteomic Pipeline in addition to several standalone search engines. We have found that PyQuant routinely quantifies a greater proportion of spectral assignments, with increases ranging from 25-45% in this study. Finally, PyQuant is capable of complementing spectral assignments between replicates to quantify ions missed because of lack of MS/MS fragmentation or that were omitted because of issues such as spectra quality or false discovery rates. This results in an increase of biologically useful data available for interpretation. In summary, PyQuant is a flexible mass spectrometry data quantification platform that is capable of interfacing with a variety of existing formats and is highly customizable, which permits easy configuration for custom analysis.
© 2016 by The American Society for Biochemistry and Molecular Biology, Inc.

Mesh:

Year:  2016        PMID: 27231314      PMCID: PMC4974355          DOI: 10.1074/mcp.O115.056879

Source DB:  PubMed          Journal:  Mol Cell Proteomics        ISSN: 1535-9476            Impact factor:   5.911


  31 in total

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3.  An experimental correction for arginine-to-proline conversion artifacts in SILAC-based quantitative proteomics.

Authors:  Dennis Van Hoof; Martijn W H Pinkse; Dorien Ward-Van Oostwaard; Christine L Mummery; Albert J R Heck; Jeroen Krijgsveld
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Review 4.  Data maximization by multipass analysis of protein mass spectra.

Authors:  Ravi Tharakan; Nathan Edwards; David R M Graham
Journal:  Proteomics       Date:  2010-03       Impact factor: 3.984

Review 5.  Proteogenomics.

Authors:  Santosh Renuse; Raghothama Chaerkady; Akhilesh Pandey
Journal:  Proteomics       Date:  2011-01-18       Impact factor: 3.984

6.  MSblender: A probabilistic approach for integrating peptide identifications from multiple database search engines.

Authors:  Taejoon Kwon; Hyungwon Choi; Christine Vogel; Alexey I Nesvizhskii; Edward M Marcotte
Journal:  J Proteome Res       Date:  2011-04-29       Impact factor: 4.466

7.  TSLP signaling network revealed by SILAC-based phosphoproteomics.

Authors:  Jun Zhong; Min-Sik Kim; Raghothama Chaerkady; Xinyan Wu; Tai-Chung Huang; Derese Getnet; Christopher J Mitchell; Shyam M Palapetta; Jyoti Sharma; Robert N O'Meally; Robert N Cole; Akinori Yoda; Albrecht Moritz; Marc M Loriaux; John Rush; David M Weinstock; Jeffrey W Tyner; Akhilesh Pandey
Journal:  Mol Cell Proteomics       Date:  2012-02-16       Impact factor: 5.911

8.  Analysis of quantitative proteomic data generated via multidimensional protein identification technology.

Authors:  Michael P Washburn; Ryan Ulaszek; Cosmin Deciu; David M Schieltz; John R Yates
Journal:  Anal Chem       Date:  2002-04-01       Impact factor: 6.986

9.  Neutron-encoded mass signatures for multiplexed proteome quantification.

Authors:  Alexander S Hebert; Anna E Merrill; Derek J Bailey; Amelia J Still; Michael S Westphall; Eric R Strieter; David J Pagliarini; Joshua J Coon
Journal:  Nat Methods       Date:  2013-02-24       Impact factor: 28.547

10.  MS3 eliminates ratio distortion in isobaric multiplexed quantitative proteomics.

Authors:  Lily Ting; Ramin Rad; Steven P Gygi; Wilhelm Haas
Journal:  Nat Methods       Date:  2011-10-02       Impact factor: 28.547

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3.  Proximity-Dependent Biotinylation to Elucidate the Interactome of TNK2 Nonreceptor Tyrosine Kinase.

Authors:  Raiha Tahir; Anil K Madugundu; Savita Udainiya; Jevon A Cutler; Santosh Renuse; Li Wang; Nicole A Pearson; Christopher J Mitchell; Nupam Mahajan; Akhilesh Pandey; Xinyan Wu
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4.  Systematic analysis of protein turnover in primary cells.

Authors:  Toby Mathieson; Holger Franken; Jan Kosinski; Nils Kurzawa; Nico Zinn; Gavain Sweetman; Daniel Poeckel; Vikram S Ratnu; Maike Schramm; Isabelle Becher; Michael Steidel; Kyung-Min Noh; Giovanna Bergamini; Martin Beck; Marcus Bantscheff; Mikhail M Savitski
Journal:  Nat Commun       Date:  2018-02-15       Impact factor: 14.919

5.  PANDA: A comprehensive and flexible tool for quantitative proteomics data analysis.

Authors:  Cheng Chang; Mansheng Li; Chaoping Guo; Yuqing Ding; Kaikun Xu; Mingfei Han; Fuchu He; Yunping Zhu
Journal:  Bioinformatics       Date:  2019-03-01       Impact factor: 6.937

6.  Impact of Increased FUT8 Expression on the Extracellular Vesicle Proteome in Prostate Cancer Cells.

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8.  pyQms enables universal and accurate quantification of mass spectrometry data.

Authors:  Johannes Leufken; Anna Niehues; L Peter Sarin; Florian Wessel; Michael Hippler; Sebastian A Leidel; Christian Fufezan
Journal:  Mol Cell Proteomics       Date:  2017-07-20       Impact factor: 5.911

  8 in total

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