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- R package and Methods: IPCA and sparse IPCA functions have been implemented (as well as their associated S3 functions). IPCA stands for Principal Component Analysis with Independent Loadings. It is a combination of the advantages of both PCA and Independent Component Analysis (ICA). PCA is a powerful exploratory tool if the biological question is related to the highest variance. ICA was recently proposed in the literature as an alternative to PCA as it optimizes an independence condition that can give more meaningful components. A preprint can be available upon request.
- R package and Data: The Liver Toxicity study data has been updated to provide geneBank IDs and gene titles
- R package and Data: Two other data sets have been added: Prostate Tumor study (gene expression) and Metabolomic study of Yeast (metabolomics).
- Web interface: We are making good progress on our associated web-interface (now deployed on http://mixomics.qfab.org). Few illustrative examples are also available, and you can download the illustrative examples and run any type of analysis trough the interface. We are currently developing a ‘next level analysis’ to provide pathway enrichment analyses and give the functional annotation of the selected genes using the iHOP database. Do not hesitate to give us some feedback!
- ‘sletter: we now have a newsletter, to subscribe, send an email to mixomics[at]math.univ-toulouse.fr with no subject in the body.
- New S3 method
network
and cim
for results from PLS model
- New code for the
valid
function to PLS-DA and SPLS-DA models validation
- The S3 method
plot.valid
was modified to display graphical results from valid
function for PLS-DA and SPLS-DA models
cim
and network
functions were modified to obtain the similarity matrix in return value
- The S3 method
plotVar
was modified to obtain the coordinates for X and Y variables in return value
- The
predict
function has been modified to simultaneously run either several or all prediction methods available to predict the classes of the test data from PLS-DA and SPLS-DA models
- New function
pca
and spca
are now available to perform Principal Component Analysis (PCA) and sparse PCA for variable selection
- The S3 methods
plotVar, plot3dVar, plotIndiv, plot3dIndiv
were modified to generate graphical results for pca
and spca
- New function
plot.valid
to display the results of the valid
function
- New code for
imgCor
function for a nicer representation of the correlation matrices
- In
predict
function the argument 'method'
were replaced by method = c("max.dist", "class.dist", "centroids.dist", "mahalanobis.dist")
- The arguments
dendrogram
, ColSideColors
and RowSideColors
were added to the cim
function
valid
function can also been performed with missing values
- Functions
pls
, plsda
, spls
and splsda
were modified to identify zero- or near-zero variance predictors
- The functions
plotVar
and plot3dVar
were modified to represent only the X variables in the case of PLS-DA and SPLS-DA
- The
pca
function has been improved so that the S3 methods plotIndiv
, plot3dIndiv
, plotVar
and plot3dVar
can be used with these new classe
- Currently improving the
pca
and nipals
for further graphical outputs
plsda
and splsda
have been further improved so that all the S3 functions predict, print, plotIndiv, plot3dIndiv
can be used with these new classes
- Several prediction methods are now available to predict the classes of test data with
plsda
andsplsda
, see argument 'method'
(max.dist, class.dist, centroids.dist, mahalanobis.dist) in thepredict
function
plsda
and splsda
functions are implemented to perform PLS Discriminant Analysis (PLS-DA) and sparse PLS-DA respectively
breast.tumors
data set is introduced to illustrate the (s)PLS-DA
- PCA can also been performed with missing values using the NIPALS algorithm and 3D plots are also available for PCA
- Network (updated) to display relevant associations between variables for (r)CCA and (s)PLS, with a new similarity function
- A new similarity measure has been included in
cim
function and the arguments hclusfunc
and distfunc
to display Clustered image maps (heatmaps)
- 3D representation to display samples and variables for (r)CCA
- 3D representation to display samples and variables for (s)PLS
- The argument
scaleY
has been added to the pls
and spls
functions
- (s)PLS can also be applied when there is only 1 predictor variable