Significance analysis of microarray for relative quantitation of LC/MS data in proteomics

被引:51
|
作者
Roxas, Bryan A. P. [1 ]
Li, Qingbo [1 ,2 ]
机构
[1] Univ Illinois, Ctr Pharmaceut Biotechnol, Chicago, IL 60607 USA
[2] Univ Illinois, Dept Microbiol & Immunol, Chicago, IL 60607 USA
关键词
D O I
10.1186/1471-2105-9-187
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Background: Although fold change is a commonly used criterion in quantitative proteomics for differentiating regulated proteins, it does not provide an estimation of false positive and false negative rates that is often desirable in a large- scale quantitative proteomic analysis. We explore the possibility of applying the Significance Analysis of Microarray ( SAM) method ( PNAS 98: 51165121) to a differential proteomics problem of two samples with replicates. The quantitative proteomic analysis was carried out with nanoliquid chromatography/ linear iron trap- Fourier transform mass spectrometry. The biological sample model included two Mycobacterium smegmatis unlabeled cell cultures grown at pH 5 and pH 7. The objective was to compare the protein relative abundance between the two unlabeled cell cultures, with an emphasis on significance analysis of protein differential expression using the SAM method. Results using the SAM method are compared with those obtained by fold change and the conventional t-test. Results: We have applied the SAM method to solve the two-sample significance analysis problem in liquid chromatography/ mass spectrometry ( LC/ MS) based quantitative proteomics. We grew the pH5 and pH7 unlabelled cell cultures in triplicate resulting in 6 biological replicates. Each biological replicate was mixed with a common N-15- labeled reference culture cells for normalization prior to SDS/ PAGE fractionation and LC/ MS analysis. For each biological replicate, one center SDS/ PAGE gel fraction was selected for triplicate LC/ MS analysis. There were 121 proteins quantified in at least 5 of the 6 biological replicates. Of these 121 proteins, 106 were significant in differential expression by the t- test ( p < 0.05) based on peptide- level replicates, 54 were significant in differential expression by SAM with Delta= 0.68 cutoff and false positive rate at 5%, and 29 were significant in differential expression by the t- test ( p < 0.05) based on protein- level replicates. The results indicate that SAM appears to overcome the false positives one encounters using the peptide- based t- test while allowing for identification of a greater number of differentially expressed proteins than the protein- based t- test. Conclusion: We demonstrate that the SAM method can be adapted for effective significance analysis of proteomic data. It provides much richer information about the protein differential expression profiles and is particularly useful in the estimation of false discovery rates and miss rates.
引用
收藏
页数:17
相关论文
共 50 条
  • [1] Significance analysis of microarray for relative quantitation of LC/MS data in proteomics
    Bryan AP Roxas
    Qingbo Li
    BMC Bioinformatics, 9
  • [2] Reproducibility assessment of relative quantitation strategies for LC-MS based proteomics
    Kim, Yeoun Jin
    Zhan, Ping
    Feild, Brian
    Ruben, Steven M.
    He, Tao
    ANALYTICAL CHEMISTRY, 2007, 79 (15) : 5651 - 5658
  • [3] MASPECTRAS: a platform for management and analysis of proteomics LC-MS/MS data
    Jürgen Hartler
    Gerhard G Thallinger
    Gernot Stocker
    Alexander Sturn
    Thomas R Burkard
    Erik Körner
    Robert Rader
    Andreas Schmidt
    Karl Mechtler
    Zlatko Trajanoski
    BMC Bioinformatics, 8
  • [4] MASPECTRAS: a platform for management and analysis of proteomics LC-MS/MS data
    Hartler, Juergen
    Thallinger, Gerhard G.
    Stocker, Gernot
    Sturn, Alexander
    Burkard, Thomas R.
    Koerner, Erik
    Rader, Robert
    Schmidt, Andreas
    Mechtler, Karl
    Trajanoski, Zlatko
    BMC BIOINFORMATICS, 2007, 8 (1)
  • [5] Differential expression analysis of Escherichia coli proteins using a novel software for relative quantitation of LC-MS/MS data
    Johansson, Carolina
    Samskog, Jenny
    Sundstrom, Lars
    Wadensten, Henrik
    Bjorkesten, Lennart
    Flensburg, John
    PROTEOMICS, 2006, 6 (16) : 4475 - 4485
  • [6] Visualization of LC-MS/MS proteomics data in MaxQuant
    Tyanova, Stefka
    Temu, Tikira
    Carlson, Arthur
    Sinitcyn, Pavel
    Mann, Matthias
    Cox, Juergen
    PROTEOMICS, 2015, 15 (08) : 1453 - 1456
  • [7] The APEX Quantitative Proteomics Tool: Generating protein quantitation estimates from LC-MS/MS proteomics results
    Braisted, John C.
    Kuntumalla, Srilatha
    Vogel, Christine
    Marcotte, Edward M.
    Rodrigues, Alan R.
    Wang, Rong
    Huang, Shih-Ting
    Ferlanti, Erik S.
    Saeed, Alexander I.
    Fleischmann, Robert D.
    Peterson, Scott N.
    Pieper, Rembert
    BMC BIOINFORMATICS, 2008, 9 (1)
  • [8] The APEX Quantitative Proteomics Tool: Generating protein quantitation estimates from LC-MS/MS proteomics results
    John C Braisted
    Srilatha Kuntumalla
    Christine Vogel
    Edward M Marcotte
    Alan R Rodrigues
    Rong Wang
    Shih-Ting Huang
    Erik S Ferlanti
    Alexander I Saeed
    Robert D Fleischmann
    Scott N Peterson
    Rembert Pieper
    BMC Bioinformatics, 9
  • [9] The effects of shared peptides on protein quantitation in label-free proteomics by LC/MS/MS
    Jin, Shuangshuang
    Daly, Donald S.
    Springer, David L.
    Miller, John H.
    JOURNAL OF PROTEOME RESEARCH, 2008, 7 (01) : 164 - 169
  • [10] Application of Survival Analysis Methodology to the Quantitative Analysis of LC-MS Proteomics Data
    Tekwe, Carmen D.
    Dabney, Alan R.
    Carroll, Raymond J.
    AMINO ACIDS, 2013, 45 (03) : 609 - 609