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A computational framework for the analysis of peptide microarray antibody binding data with application to HIV vaccine profiling.


ABSTRACT: We present an integrated analytical method for analyzing peptide microarray antibody binding data, from normalization through subject-specific positivity calls and data integration and visualization. Current techniques for the normalization of such data sets do not account for non-specific binding activity. A novel normalization technique based on peptide sequence information quickly and effectively reduced systematic biases. We also employed a sliding mean window technique that borrows strength from peptides sharing similar sequences, resulting in reduced signal variability. A smoothed signal aided in the detection of weak antibody binding hotspots. A new principled FDR method of setting positivity thresholds struck a balance between sensitivity and specificity. In addition, we demonstrate the utility and importance of using baseline control measurements when making subject-specific positivity calls. Data sets from two human clinical trials of candidate HIV-1 vaccines were used to validate the effectiveness of our overall computational framework.

SUBMITTER: Imholte GC 

PROVIDER: S-EPMC3999921 | biostudies-literature | 2013 Sep

REPOSITORIES: biostudies-literature

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A computational framework for the analysis of peptide microarray antibody binding data with application to HIV vaccine profiling.

Imholte Greg C GC   Sauteraud Renan R   Korber Bette B   Bailer Robert T RT   Turk Ellen T ET   Shen Xiaoying X   Tomaras Georgia D GD   Mascola John R JR   Koup Richard A RA   Montefiori David C DC   Gottardo Raphael R  

Journal of immunological methods 20130613 1-2


We present an integrated analytical method for analyzing peptide microarray antibody binding data, from normalization through subject-specific positivity calls and data integration and visualization. Current techniques for the normalization of such data sets do not account for non-specific binding activity. A novel normalization technique based on peptide sequence information quickly and effectively reduced systematic biases. We also employed a sliding mean window technique that borrows strength  ...[more]

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2016-05-27 | GSE81377 | GEO