springer - Sparse Group Variable Selection for Gene-Environment
Interactions in the Longitudinal Study
Recently, regularized variable selection has emerged as a
powerful tool to identify and dissect gene-environment
interactions. Nevertheless, in longitudinal studies with high
dimensional genetic factors, regularization methods for G×E
interactions have not been systematically developed. In this
package, we provide the implementation of sparse group variable
selection, based on both the quadratic inference function (QIF)
and generalized estimating equation (GEE), to accommodate the
bi-level selection for longitudinal G×E studies with high
dimensional genomic features. Alternative methods conducting
only the group or individual level selection have also been
included. The core modules of the package have been developed
in C++.