A pan-cancer somatic mutation embedding using autoencoders.
Martin PalazzoPierre BeauseroyPatricio YankilevichPublished in: BMC bioinformatics (2019)
The learned latent space maps the original samples in a much lower dimension while keeping the biological signals from the original tumor samples. This pipeline and the resulting embedding allows an easier exploration of the heterogeneity within and across tumor types and to perform an accurate classification of tumor samples in the pan-cancer somatic mutation landscape.