| Literature DB >> 29961576 |
David van Dijk1, Roshan Sharma2, Juozas Nainys3, Kristina Yim4, Pooja Kathail5, Ambrose J Carr5, Cassandra Burdziak1, Kevin R Moon6, Christine L Chaffer7, Diwakar Pattabiraman8, Brian Bierie8, Linas Mazutis1, Guy Wolf9, Smita Krishnaswamy10, Dana Pe'er11.
Abstract
Single-cell RNA sequencing technologies suffer from many sources of technical noise, including under-sampling of mRNA molecules, often termed "dropout," which can severely obscure important gene-gene relationships. To address this, we developed MAGIC (Markov affinity-based graph imputation of cells), a method that shares information across similar cells, via data diffusion, to denoise the cell count matrix and fill in missing transcripts. We validate MAGIC on several biological systems and find it effective at recovering gene-gene relationships and additional structures. Applied to the epithilial to mesenchymal transition, MAGIC reveals a phenotypic continuum, with the majority of cells residing in intermediate states that display stem-like signatures, and infers known and previously uncharacterized regulatory interactions, demonstrating that our approach can successfully uncover regulatory relations without perturbations.Entities:
Keywords: EMT; imputation; manifold learning; regulatory networks; single-cell RNA sequencing
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Year: 2018 PMID: 29961576 PMCID: PMC6771278 DOI: 10.1016/j.cell.2018.05.061
Source DB: PubMed Journal: Cell ISSN: 0092-8674 Impact factor: 41.582