omic_network object contains now a total of 53,035
literature-reported biological links. Running
get_diffNetworks() on the same data might now result in
differential networks containing new additional links.Vignettes improvements.
Patch: get_diffNetworks_singleOmic() now double checks
that assayData and metadata are aligned for
the layer
Minor fixes in documentation
Two new functions are provided for nested feature engineering. To use
them in combination with the nestedcv package their name
must be passed to the modifyX parameter of
nestcv.glmnet() or nestcv.train().
multiDEGGs_filter() function performs feature
selection based entirely on differential network analysis.multiDEGGs_combined_filter() function combines
traditional statistical feature selection (5 options) with differential
network analysis.predict.multiDEGGs_filter() and
predict.multiDEGGs_combined_filter() S3 methods generate
predictions by creating a dataset with single and combined predictors
based on the filtering results of a multiDEGGs_filter
model.multiDEGGs