Package: GlobalAncova 4.23.0

Manuela Hummel

GlobalAncova: Global test for groups of variables via model comparisons

The association between a variable of interest (e.g. two groups) and the global pattern of a group of variables (e.g. a gene set) is tested via a global F-test. 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. Alternatively, an approximation yields asymptotic p-values. The framework is generalized to groups of categorical variables or even mixed data by a likelihood ratio approach. Closed and hierarchical testing procedures are supported. This work was supported by the NGFN grant 01 GR 0459, BMBF, Germany and BMBF grant 01ZX1309B, Germany.

Authors:U. Mansmann, R. Meister, M. Hummel, R. Scheufele, with contributions from S. Knueppel

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NEWS

# Install 'GlobalAncova' in R:
install.packages('GlobalAncova', repos = c('https://bioc.r-universe.dev', 'https://cloud.r-project.org'))

Peer review:

Datasets:

On BioConductor:GlobalAncova-4.23.0(bioc 3.20)GlobalAncova-4.22.0(bioc 3.19)

This package does not link to any Github/Gitlab/R-forge repository. No issue tracker or development information is available.

bioconductor-package

16 exports 3.03 score 71 dependencies 1 dependents 14 mentions

Last updated 2 months agofrom:bac6c172af

Exports:GABroadGAGOgGlobalAncovagGlobalAncova.hierarchicalGlobalAncovaGlobalAncova.closedGlobalAncova.decomppair.comparePlot.allPlot.featuresPlot.genesPlot.hierarchyPlot.sequentialPlot.subjectsresultssigEndnodes

Dependencies:annotateAnnotationDbiaskpassBiobaseBiocGenericsBiostringsbitbit64blobcachemclicolorspacecorpcorcpp11crayoncurlDBIdendextendfansifarverfastmapGenomeInfoDbGenomeInfoDbDataggplot2globaltestgluegraphgridExtraGSEABasegtablehttrIRangesisobandjsonliteKEGGRESTlabelinglatticelifecyclemagrittrMASSMatrixmemoisemgcvmimemunsellnlmeopensslpillarpkgconfigplogrpngR6RColorBrewerrlangRSQLiteS4VectorsscalessurvivalsystibbleUCSC.utilsutf8vctrsVGAMviridisviridisLitewithrXMLxtableXVectorzlibbioc

GlobalAncova

Rendered fromGlobalAncova.rnwusingutils::Sweaveon Jul 03 2024.

Last update: 2021-01-28
Started: 2013-11-01

GlobalAncovaDecomp

Rendered fromGlobalAncovaDecomp.rnwusingutils::Sweaveon Jul 03 2024.

Last update: 2013-11-01
Started: 2013-11-01

Readme and manuals

Help Manual

Help pageTopics
Simulated binary databindata
Gene expression datacolon.normal
Covariate information for the colon datacolon.pheno
Gene expression datacolon.tumour
Class '"GAhier"'GAhier GAhier-class Plot.hierarchy Plot.hierarchy,GAhier-method results results,GAhier-method show,GAhier-method sigEndnodes sigEndnodes,GAhier-method
Generalized GlobalAncova group testgGlobalAncova
Hierarchical testing procedure using generalized GlobalAncovagGlobalAncova.hierarchical
Global test for differential gene expressionGlobalAncova GlobalAncova,matrix,formula,formula,ANY,missing,missing,missing-method GlobalAncova,matrix,formula,missing,ANY,missing,missing,character-method GlobalAncova,matrix,missing,missing,missing,ANY,ANY,missing-method
Gene set testing of gene set databases using GlobalAncovaGABroad GAGO
Methods for Function GlobalAncovaGlobalAncova-methods
Closed testing procedure for testing several groups of genes using GlobalAncovaGlobalAncova.closed GlobalAncova.closed,matrix,list,formula,formula,ANY,missing,missing,missing-method GlobalAncova.closed,matrix,list,formula,missing,ANY,missing,missing,character-method GlobalAncova.closed,matrix,list,missing,missing,missing,ANY,ANY,missing-method
Methods for Function GlobalAncova.closedGlobalAncova.closed-methods
GlobalAncova with sequential and type III sum of squares decomposition and adjustment for global covariatesGlobalAncova.decomp
Pairwise comparisons of factor levels within GlobalAncovapair.compare
Cancer related pathwayspathways
Covariate information for the van t'Veer dataphenodata
Combined visualization of sequential decomposition and influence of single genes on the GlobalAncova statisticPlot.all
Features Plot for generalized Global AncovaPlot.features
Genes Plot for Global AncovaPlot.genes Plot.genes,matrix,formula,formula,ANY,missing,missing,missing-method Plot.genes,matrix,formula,missing,ANY,missing,missing,character-method Plot.genes,matrix,missing,missing,missing,ANY,ANY,missing-method
Methods for Function Plot.genesPlot.genes-methods
Visualization of sequential decompositionPlot.sequential
Subjects Plot for GlobalAncovaPlot.subjects Plot.subjects,matrix,formula,formula,ANY,missing,missing,missing-method Plot.subjects,matrix,formula,missing,ANY,missing,missing,character-method Plot.subjects,matrix,missing,missing,missing,ANY,ANY,missing-method
Methods for Function Plot.subjectsPlot.subjects-methods
Gene expression datavantVeer