| Literature DB >> 34062119 |
Yuhan Hao1, Stephanie Hao2, Erica Andersen-Nissen3, William M Mauck4, Shiwei Zheng1, Andrew Butler1, Maddie J Lee5, Aaron J Wilk5, Charlotte Darby4, Michael Zager6, Paul Hoffman4, Marlon Stoeckius2, Efthymia Papalexi1, Eleni P Mimitou2, Jaison Jain4, Avi Srivastava4, Tim Stuart4, Lamar M Fleming7, Bertrand Yeung8, Angela J Rogers5, Juliana M McElrath7, Catherine A Blish9, Raphael Gottardo7, Peter Smibert10, Rahul Satija11.
Abstract
The simultaneous measurement of multiple modalities represents an exciting frontier for single-cell genomics and necessitates computational methods that can define cellular states based on multimodal data. Here, we introduce "weighted-nearest neighbor" analysis, an unsupervised framework to learn the relative utility of each data type in each cell, enabling an integrative analysis of multiple modalities. We apply our procedure to a CITE-seq dataset of 211,000 human peripheral blood mononuclear cells (PBMCs) with panels extending to 228 antibodies to construct a multimodal reference atlas of the circulating immune system. Multimodal analysis substantially improves our ability to resolve cell states, allowing us to identify and validate previously unreported lymphoid subpopulations. Moreover, we demonstrate how to leverage this reference to rapidly map new datasets and to interpret immune responses to vaccination and coronavirus disease 2019 (COVID-19). Our approach represents a broadly applicable strategy to analyze single-cell multimodal datasets and to look beyond the transcriptome toward a unified and multimodal definition of cellular identity.Entities:
Keywords: CITE-seq; COVID-19; T cell; immune system; multimodal analysis; reference mapping; single cell genomics
Mesh:
Year: 2021 PMID: 34062119 PMCID: PMC8238499 DOI: 10.1016/j.cell.2021.04.048
Source DB: PubMed Journal: Cell ISSN: 0092-8674 Impact factor: 41.582