On the statistical analysis of the GS-NS0 cell proteome: Imputation, clustering and variability testing

We have undertaken two-dimensional gel electrophoresis proteomic profiling on a series of cell lines with different recombinant antibody production rates. Due to the nature of gel-based experiments not all protein spots are detected across all samples in an experiment, and hence datasets are invaria...

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Main Authors: Ahmad, Norhaiza, Zhang, Jian, Brown, Phillip J., James, David C., Birch, John R., Racher, Andrew J., Smales, C. Mark
Format: Article
Published: Elsevier BV 2006
Online Access:http://eprints.utm.my/id/eprint/9046/
http://dx.doi.org/10.1016/j.bbapap.2006.05.002
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spelling my.utm.90462009-07-27T03:29:40Z http://eprints.utm.my/id/eprint/9046/ On the statistical analysis of the GS-NS0 cell proteome: Imputation, clustering and variability testing Ahmad, Norhaiza Zhang, Jian Brown, Phillip J. James, David C. Birch, John R. Racher, Andrew J. Smales, C. Mark We have undertaken two-dimensional gel electrophoresis proteomic profiling on a series of cell lines with different recombinant antibody production rates. Due to the nature of gel-based experiments not all protein spots are detected across all samples in an experiment, and hence datasets are invariably incomplete. New approaches are therefore required for the analysis of such graduated datasets. We approached this problem in two ways. Firstly, we applied a missing value imputation technique to calculate missing data points. Secondly, we combined a singular value decomposition based hierarchical clustering with the expression variability test to identify protein spots whose expression correlates with increased antibody production. The results have shown that while imputation of missing data was a useful method to improve the statistical analysis of such data sets, this was of limited use in differentiating between the samples investigated, and highlighted a small number of candidate proteins for further investigation. Elsevier BV 2006 Article PeerReviewed Ahmad, Norhaiza and Zhang, Jian and Brown, Phillip J. and James, David C. and Birch, John R. and Racher, Andrew J. and Smales, C. Mark (2006) On the statistical analysis of the GS-NS0 cell proteome: Imputation, clustering and variability testing. Biochimica et Biophysica Acta - Proteins and Proteomics, 1764 (7). pp. 1179-1187. ISSN 1570-9639 http://dx.doi.org/10.1016/j.bbapap.2006.05.002 10.1016/j.bbapap.2006.05.002
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
description We have undertaken two-dimensional gel electrophoresis proteomic profiling on a series of cell lines with different recombinant antibody production rates. Due to the nature of gel-based experiments not all protein spots are detected across all samples in an experiment, and hence datasets are invariably incomplete. New approaches are therefore required for the analysis of such graduated datasets. We approached this problem in two ways. Firstly, we applied a missing value imputation technique to calculate missing data points. Secondly, we combined a singular value decomposition based hierarchical clustering with the expression variability test to identify protein spots whose expression correlates with increased antibody production. The results have shown that while imputation of missing data was a useful method to improve the statistical analysis of such data sets, this was of limited use in differentiating between the samples investigated, and highlighted a small number of candidate proteins for further investigation.
format Article
author Ahmad, Norhaiza
Zhang, Jian
Brown, Phillip J.
James, David C.
Birch, John R.
Racher, Andrew J.
Smales, C. Mark
spellingShingle Ahmad, Norhaiza
Zhang, Jian
Brown, Phillip J.
James, David C.
Birch, John R.
Racher, Andrew J.
Smales, C. Mark
On the statistical analysis of the GS-NS0 cell proteome: Imputation, clustering and variability testing
author_facet Ahmad, Norhaiza
Zhang, Jian
Brown, Phillip J.
James, David C.
Birch, John R.
Racher, Andrew J.
Smales, C. Mark
author_sort Ahmad, Norhaiza
title On the statistical analysis of the GS-NS0 cell proteome: Imputation, clustering and variability testing
title_short On the statistical analysis of the GS-NS0 cell proteome: Imputation, clustering and variability testing
title_full On the statistical analysis of the GS-NS0 cell proteome: Imputation, clustering and variability testing
title_fullStr On the statistical analysis of the GS-NS0 cell proteome: Imputation, clustering and variability testing
title_full_unstemmed On the statistical analysis of the GS-NS0 cell proteome: Imputation, clustering and variability testing
title_sort on the statistical analysis of the gs-ns0 cell proteome: imputation, clustering and variability testing
publisher Elsevier BV
publishDate 2006
url http://eprints.utm.my/id/eprint/9046/
http://dx.doi.org/10.1016/j.bbapap.2006.05.002
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