GlobalAncova
Calculates a global test for differential gene expression
between groups
We give the following arguments in support of the
GlobalAncova approach: After appropriate normalisation,
gene-expression-data appear rather symmetrical and outliers are
no real problem, so least squares should be rather robust.
ANCOVA with interaction yields saturated data modelling e.g.
different means per group and gene. Covariate adjustment can
help to correct for possible selection bias. Variance
homogeneity and uncorrelated residuals cannot be expected.
Application of ordinary least squares gives unbiased, but no
longer optimal estimates (Gauss-Markov-Aitken). Therefore,
using the classical F-test is inappropriate, due to
correlation. The test statistic however mirrors deviations from
the null hypothesis. In combination with a permutation
approach, empirical significance levels can be approximated .
Author |
U. Mansmann, R. Meister, M. Hummel |
Maintainer |
R. Meister |
Vignettes (Documentation)
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Package Downloads
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Details
biocViews |
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Depends |
methods |
Suggests |
Biobase, globaltest, multtest, golubEsets, hu6800, vsn |
Imports |
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SystemRequirements |
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License |
GPL Version 2 or newer |
URL |
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