Cross-tissue immune cell analysis reveals tissue-specific features in humans.
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Authors
Suchanek, O
Richoz, N
Pritchard, S
Rahmani, E
Bayraktar, OA
Publication Date
2022-05-13Journal Title
Science
ISSN
0036-8075
Publisher
American Association for the Advancement of Science (AAAS)
Language
eng
Type
Article
This Version
VoR
Metadata
Show full item recordCitation
Domínguez Conde, C., Xu, C., Jarvis, L., Rainbow, D., Wells, S., Gomes, T., Howlett, S., et al. (2022). Cross-tissue immune cell analysis reveals tissue-specific features in humans.. Science https://doi.org/10.1126/science.abl5197
Abstract
Despite their crucial role in health and disease, our knowledge of immune cells within human tissues remains limited. We surveyed the immune compartment of 16 tissues from 12 adult donors by single-cell RNA sequencing and VDJ sequencing generating a dataset of ~360,000 cells. To systematically resolve immune cell heterogeneity across tissues, we developed CellTypist, a machine learning tool for rapid and precise cell type annotation. Using this approach, combined with detailed curation, we determined the tissue distribution of finely phenotyped immune cell types, revealing hitherto unappreciated tissue-specific features and clonal architecture of T and B cells. Our multitissue approach lays the foundation for identifying highly resolved immune cell types by leveraging a common reference dataset, tissue-integrated expression analysis, and antigen receptor sequencing.
Keywords
B-Lymphocytes, Cells, Cultured, Humans, Machine Learning, Organ Specificity, Sequence Analysis, RNA, Single-Cell Analysis, T-Lymphocytes, Transcriptome
Sponsorship
CZI
NIH grant
ERC grant (Thdefine)
Funder references
Wellcome Trust (105924/Z/14/Z)
Wellcome Trust (105924/Z/14/A)
Wellcome Trust (105924/Z/14/Z)
Wellcome Trust (105924/Z/14/A)
Chan Zuckerberg Initiative (via University of California) (10208)
Wellcome Trust (211276/D/18/Z)
National Institute for Health Research (IS-BRC-1215-20014)
Identifiers
35549406, PMC7612735
External DOI: https://doi.org/10.1126/science.abl5197
This record's URL: https://www.repository.cam.ac.uk/handle/1810/338057
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