| Literature DB >> 31657111 |
Conor Delaney1, Alexandra Schnell2, Louis V Cammarata3, Aaron Yao-Smith4, Aviv Regev5,6, Vijay K Kuchroo2,6, Meromit Singer1,6,7.
Abstract
Single-cell transcriptomic studies are identifying novel cell populations with exciting functional roles in various in vivo contexts, but identification of succinct gene marker panels for such populations remains a challenge. In this work, we introduce COMET, a computational framework for the identification of candidate marker panels consisting of one or more genes for cell populations of interest identified with single-cell RNA-seq data. We show that COMET outperforms other methods for the identification of single-gene panels and enables, for the first time, prediction of multi-gene marker panels ranked by relevance. Staining by flow cytometry assay confirmed the accuracy of COMET's predictions in identifying marker panels for cellular subtypes, at both the single- and multi-gene levels, validating COMET's applicability and accuracy in predicting favorable marker panels from transcriptomic input. COMET is a general non-parametric statistical framework and can be used as-is on various high-throughput datasets in addition to single-cell RNA-sequencing data. COMET is available for use via a web interface (http://www.cometsc.com/) or a stand-alone software package (https://github.com/MSingerLab/COMETSC).Entities:
Keywords: cell types; computational biology; data analysis; marker panel; single-cell RNA-seq
Mesh:
Substances:
Year: 2019 PMID: 31657111 PMCID: PMC6811728 DOI: 10.15252/msb.20199005
Source DB: PubMed Journal: Mol Syst Biol ISSN: 1744-4292 Impact factor: 11.429