data.checkDistribution |
Data check distribution |
data.imputation |
Data imputation |
data.normalization |
Data normalization |
DiffExp.limma |
DiffExp.limma |
drawHeatmap |
Generate heatmaps |
ExecuteCC |
Execute Consensus Clustering |
ExecuteCNMF |
Execute Consensus NMF (Nonnegative matrix factorization) |
ExecuteiCluster |
Execute iCluster (Integrative clustering of multiple genomic data) |
ExecuteSNF |
Execute SNF(Similarity Network Fusion ) |
ExecuteSNF.CC |
Execute the combined SNF (Similarity Network Fusion) and Consensus clustering |
ExecuteWSNF |
Execute the WSNF(Weighted Similarity Network Fusion) |
FSbyCox |
Biological feature (such as gene) selection based on Cox regression model. |
FSbyMAD |
Biological feature (such as gene) selection based on the most variant Median Absolute Deviation (MAD). |
FSbyPCA |
Biological feature (such as gene) dimension reduction and extraction based on Principal Component Analysis. |
FSbyVar |
Biological feature (such as gene) selection based on the most variance. |
GeneExp |
Dataset: Gene expression |
miRNAExp |
Dataset: miRNA expression |
Ranking |
Dataset: A default ranking of features for the fuction ExecuteWSNF() |
saveFigure |
This function save the figure in the current plot. |
sigclustTest |
A statistical method for testing the significance of clustering results. |
silhouette_SimilarityMatrix |
Compute or Extract Silhouette Information from Clustering based on similarity matrix. |
spectralAlg |
This is an internal function but need to be exported for the function ExecuteSNF.CC() call. |
status |
Dataset: Survival status |
survAnalysis |
Survival analysis(Survival curves, Log-rank test) and compute Silhouette information for cancer subtypes |
time |
Dataset: Survival time |