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Dandelion uses the single-cell adaptive immune receptor repertoire to explore lymphocyte developmental origins.


ABSTRACT: Assessment of single-cell gene expression (single-cell RNA sequencing) and adaptive immune receptor (AIR) sequencing (scVDJ-seq) has been invaluable in studying lymphocyte biology. Here we introduce Dandelion, a computational pipeline for scVDJ-seq analysis. It enables the application of standard V(D)J analysis workflows to single-cell datasets, delivering improved V(D)J contig annotation and the identification of nonproductive and partially spliced contigs. We devised a strategy to create an AIR feature space that can be used for both differential V(D)J usage analysis and pseudotime trajectory inference. The application of Dandelion improved the alignment of human thymic development trajectories of double-positive T cells to mature single-positive CD4/CD8 T cells, generating predictions of factors regulating lineage commitment. Dandelion analysis of other cell compartments provided insights into the origins of human B1 cells and ILC/NK cell development, illustrating the power of our approach. Dandelion is available at https://www.github.com/zktuong/dandelion .

SUBMITTER: Suo C 

PROVIDER: S-EPMC10791579 | biostudies-literature | 2024 Jan

REPOSITORIES: biostudies-literature

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Dandelion uses the single-cell adaptive immune receptor repertoire to explore lymphocyte developmental origins.

Suo Chenqu C   Polanski Krzysztof K   Dann Emma E   Lindeboom Rik G H RGH   Vilarrasa-Blasi Roser R   Vento-Tormo Roser R   Haniffa Muzlifah M   Meyer Kerstin B KB   Dratva Lisa M LM   Tuong Zewen Kelvin ZK   Clatworthy Menna R MR   Teichmann Sarah A SA  

Nature biotechnology 20230413 1


Assessment of single-cell gene expression (single-cell RNA sequencing) and adaptive immune receptor (AIR) sequencing (scVDJ-seq) has been invaluable in studying lymphocyte biology. Here we introduce Dandelion, a computational pipeline for scVDJ-seq analysis. It enables the application of standard V(D)J analysis workflows to single-cell datasets, delivering improved V(D)J contig annotation and the identification of nonproductive and partially spliced contigs. We devised a strategy to create an AI  ...[more]

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