Author:
Erbe Rossin,Kessler Michael D.,Favorov Alexander V.,Easwaran Hariharan,Gaykalova Daria A.,Fertig Elana J.
Abstract
AbstractWhile single-cell ATAC-seq analysis methods allow for robust clustering of cell types, the question of how to integrate multiple scATAC-seq data sets and/or sequencing modalities is still open. We present an analysis framework that enables such integration by applying the CoGAPS Matrix Factorization algorithm and the projectR transfer learning program to identify common regulatory patterns across scATAC-seq data sets. Using publicly available scATAC-seq data, we find patterns that accurately characterize cell types both within and across data sets. Furthermore, we demonstrate that these patterns are both consistent with current biological understanding and reflective of novel regulatory biology.
Publisher
Cold Spring Harbor Laboratory