Package: ClusterSignificance 1.40.0

Jason T Serviss

ClusterSignificance: The ClusterSignificance package provides tools to assess if class clusters in dimensionality reduced data representations have a separation different from permuted data

The ClusterSignificance package provides tools to assess if class clusters in dimensionality reduced data representations have a separation different from permuted data. The term class clusters here refers to, clusters of points representing known classes in the data. This is particularly useful to determine if a subset of the variables, e.g. genes in a specific pathway, alone can separate samples into these established classes. ClusterSignificance accomplishes this by, projecting all points onto a one dimensional line. Cluster separations are then scored and the probability of the seen separation being due to chance is evaluated using a permutation method.

Authors:Jason T. Serviss [aut, cre], Jesper R. Gadin [aut]

ClusterSignificance_1.40.0.tar.gz
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manual.pdf |manual.html
card.svg |card.png
ClusterSignificance/json (API)
NEWS

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

Bug tracker:https://github.com/jasonserviss/clustersignificance/issues

Datasets:
  • mlpMatrix - Simulated data used to demonstrate the Mlp method.
  • pcpMatrix - Simulated data used to demonstrate the Pcp method.

On BioConductor:ClusterSignificance-1.41.0(bioc 3.24)ClusterSignificance-1.40.0(bioc 3.23)

clusteringclassificationprincipalcomponentstatisticalmethod

4.60 score 5 scripts 440 downloads 2 mentions 10 exports 5 dependencies

Last updated from:dedee07ed0 (on RELEASE_3_23). Checks:1 ERROR, 5 NOTE, 4 OK. Indexed: no.

TargetResultTimeFilesSyslog
bioc-checksERROR156
linux-devel-x86_64NOTE253
source / vignettesOK215
linux-release-x86_64NOTE147
macos-release-arm64NOTE106
macos-oldrel-arm64OK97
windows-develNOTE119
windows-releaseNOTE79
windows-oldrelOK81
wasm-releaseOK116

Exports:classifyconf.intgetDatainitializemlppcppermuteplotpvalueshow

Dependencies:pracmaprincurveRColorBrewerRcppscatterplot3d

ClusterSignificance Vignette

Rendered fromClusterSignificance-vignette.Rmdusingknitr::rmarkdownon May 29 2026.

Last update: 2018-07-16
Started: 2016-04-06

Readme and manuals

Help Manual

Help pageTopics
The ClusterSignificance package provides tools to assess if clusters have a separation different from random or permuted data.ClusterSignificance-package ClusterSignificance
Classification of the one dimensional points in a Pcp or Mlp object..ClassifiedPoints ClassifiedPoints ClassifiedPoints-class classify classify,Mlp-method classify,Pcp-method getData,ClassifiedPoints-method initialize,ClassifiedPoints-method plot,ClassifiedPoints,missing-method show,ClassifiedPoints-method
Projection of points into one dimension..Mlp getData,Mlp-method initialize,Mlp-method Mlp mlp mlp,matrix-method Mlp-class plot,Mlp,missing-method show,Mlp-method
Simulated data used to demonstrate the Mlp method.mlpMatrix
Projection of points into one dimension..Pcp getData getData,Pcp-method initialize,Pcp-method Pcp pcp pcp,matrix-method Pcp-class plot,Pcp,missing-method show,Pcp-method
Simulated data used to demonstrate the Pcp method.pcpMatrix
Permutation test.PermutationResults c,PermutationResults-method conf.int conf.int,PermutationResults-method getData,PermutationResults-method initialize,PermutationResults-method PermutationResults-class permute permute,matrix-method plot,PermutationResults,missing-method pvalue pvalue,PermutationResults-method show,PermutationResults-method