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    BMC Bioinformatics. 2010 Jun 28;11:354.

    Nonparametric methods for the analysis of single-color pathogen microarrays.

    Source

    Center for Infection and Immunity Mailman School of Public Health Columbia University New York, NY, USA.

    Abstract

    BACKGROUND:

    The analysis of oligonucleotide microarray data in pathogen surveillance and discovery is a challenging task. Target template concentration, nucleic acid integrity, and host nucleic acid composition can each have a profound effect on signal distribution. Exploratory analysis of fluorescent signal distribution in clinical samples has revealed deviations from normality, suggesting that distribution-free approaches should be applied.

    RESULTS:

    Positive predictive value and false positive rates were examined to assess the utility of three well-established nonparametric methods for the analysis of viral array hybridization data: (1) Mann-Whitney U, (2) the Spearman correlation coefficient and (3) the chi-square test. Of the three tests, the chi-square proved most useful.

    CONCLUSIONS:

    The acceptance of microarray use for routine clinical diagnostics will require that the technology be accompanied by simple yet reliable analytic methods. We report that our implementation of the chi-square test yielded a combination of low false positive rates and a high degree of predictive accuracy.

    PMID:
    20584331
    [PubMed - indexed for MEDLINE]
    PMCID:
    PMC2909221
    Free PMC Article

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