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mixOmics (version 5.0-4)

Omics Data Integration Project

Description

We provide statistical integrative techniques and variants to analyse highly dimensional data sets: regularized Canonical Correlation Analysis ('rCCA') and sparse Partial Least Squares variants ('sPLS') to unravel relationships between two heterogeneous data sets of size (n times p) and (n times q) where the p and q variables are measured on the same samples or individuals n. These data may come from high throughput technologies, such as 'omics' data (e.g. transcriptomics, metabolomics or proteomics data) that require an integrative or joint analysis. However, 'mixOmics' can also be applied to any other large data sets where p + q >> n. 'rCCA' is a regularized version of Canonical Correlation Analysis to deal with the large number of variables. 'sPLS' allows variable selection in a one step procedure and two frameworks are proposed: regression and canonical analysis. Numerous graphical outputs are provided to help interpreting the results. Recent methodological developments include: sparse PLS-Discriminant Analysis ('sPLS-DA'), Independent Principal Component Analysis ('IPCA'), multilevel analysis using variance decomposition of the data and integration of multiple data sets with regularized Generalised Canonical Correlation Analysis ('rGCCA') and variants (sparse 'GCCA'). More details can be found on our website.

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Version

Install

install.packages('mixOmics')

Monthly Downloads

290

Version

5.0-4

License

GPL (>= 2)

Maintainer

Last Published

April 28th, 2015

Functions in mixOmics (5.0-4)

estim.regul

Estimate the parameters of regularization for Regularized CCA
breast.tumors

Human Breast Tumors Data
color.jet

Color Palette for mixOmics
imgCor

Image Maps of Correlation Matrices between two Data Sets
multilevel

Multilevel analysis for repeated measurements (cross-over design)
ipca

Independent Principal Component Analysis
nearZeroVar

Identification of zero- or near-zero variance predictors
pca

Principal Components Analysis
mat.rank

Matrix Rank
network

Relevance Network for (r)CCA and (s)PLS regression
prostate

Human Prostate Tumors Data
cim

Clustered Image Maps (CIMs) ("heat maps")
plsda

Partial Least Squares Discriminant Analysis (PLS-DA).
predict

Predict Method for PLS, sPLS, PLS-DA or sPLS-DA
splsda

Sparse Partial Least Squares Discriminant Analysis (sPLS-DA)
plotVar

Plot of Variables
print

Print Methods for CCA, (s)PLS, PCA and Summary objects
plot.perf

Plot for model performance
plot3dIndiv

Plot of Individuals (Experimental Units) in three dimensions
rcc

Regularized Canonical Correlation Analysis
plot3dVar

Plot of Variables in three dimensions
internal-functions

Internal Functions
image.estim.regul

Plot the cross-validation score.
tune.multilevel

Tuning functions for multilevel analyses
vip

Variable Importance in the Projection (VIP)
nutrimouse

Nutrimouse Dataset
linnerud

Linnerud Dataset
vac18

Vaccine study Data
image

Plot the cross-validation score.
wrapper.sgcca

mixOmics wrapper for Sparse Generalised Canonical Correlation Analysis (sgcca)
perf

Compute evaluation criteria for PLS, sPLS, PLS-DA and sPLS-DA
plot.rcc

Canonical Correlations Plot
plotIndiv

Plot of Individuals (Experimental Units)
srbct

Small version of the small round blue cell tumors of childhood data
spca

Sparse Principal Components Analysis
tau.estim

Optimal shrinkage intensity parameters.
sipca

Independent Principal Component Analysis
yeast

Yeast metabolomic study
wrapper.rgcca

mixOmics wrapper for Regularised Generalised Canonical Correlation Analysis (rgcca)
vac18.simulated

Simulated data based on the vac18 study for multilevel analysis
nipals

Non-linear Iterative Partial Least Squares (NIPALS) algorithm
s.match

Plot of Paired Coordinates
selectVar

Output of selected variables
valid

Compute validation criterion for PLS, sPLS, PLS-DA and sPLS-DA
tune.pca

Tune the number of principal components in PCA
withinVariation

Within matrix decomposition for repeated measurements (cross-over design)
scatterutil

Graphical utility functions from ade4
liver.toxicity

Liver Toxicity Data
summary

Summary Methods for CCA and PLS objects
multidrug

Multidrug Resistence Data
tune.rcc

Estimate the parameters of regularization for Regularized CCA
spls

Sparse Partial Least Squares (sPLS)
pcatune

Tune the number of principal components in PCA
pheatmap.multilevel

Clustered heatmap
pls

Partial Least Squares (PLS) Regression