4.6 Article

Graph-based deconvolution analysis of multiplex sandwich microarray immunoassays: applications for environmental monitoring

Journal

ENVIRONMENTAL MICROBIOLOGY
Volume 13, Issue 6, Pages 1421-1432

Publisher

WILEY-BLACKWELL
DOI: 10.1111/j.1462-2920.2011.02442.x

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Funding

  1. Spanish Ministerio de Ciencia e Innovacion (MICINN) [ESP2006-08128, AYA2008-04013, FIS2008-05273]
  2. Comunidad de Madrid (Spain)

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The sandwich microarray immunoassay (SMI) is a powerful technique for the analysis and characterization of environmental samples, from the identification of microorganisms to specific bioanalytes. As the number of antibodies increases, however, unspecific binding and cross-reactivity can become a problem. To cope with such difficulties, we present here the concept of antibody graph associated to a sandwich antibody microarray. Antibody graphs give valuable information about the antibody cross-reactivity network and all the players involved in the sandwich format: capturing and tracer antibodies, the antigenic sample and the degree of cross-reactivity between antibodies. Making use of the information contained in the antibody graph, we have developed a deconvolution method that disentangles the antibody cross-reactivity events and gives qualitative information about the composition of the experimental sample under study. We have validated the method by using a 66 antibody-containing microarray to describe known antigenic mixtures as well as natural environmental samples characterized by 16S-RNA gene phylogenetic analysis. The application of our antibody graph and deconvolution method allowed us to discriminate between true specific antigen-antibody reactions and spurious signals on a microarray designed for environmental monitoring.

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