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Data and Code Repository for: Rates of evolution differ between cell types identified by single-cell RNAseq in threespine stickleback

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Figshare2025-02-20 更新2026-04-28 收录
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https://figshare.com/articles/dataset/Data_and_Code_Repository_for_b_Rates_of_evolution_differ_between_cell_types_identified_by_single-cell_RNAseq_in_threespine_stickleback_b_/28452359
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Rates of evolutionary change vary by gene. While some broad gene categories are highly conserved with little divergence over time, others undergo continuous selection pressure and are highly divergent. Here, we combine single-cell RNA sequencing (scRNAseq) with evolutionary genomics to understand whether certain cell types exhibit faster evolutionary divergence (using their characteristic genes), than other types of cells. Merging scRNAseq with population genomic data, we show that cell types differ in the rate at which their characteristic genes evolve, as measured by allele frequency divergence among many populations (Fst) and between species (dN/dS ratios). Neutrophils, B cells, and fibroblasts exhibit elevated Fst at characteristic genes, while eosinophils in the intestine and thrombocytes in the head kidney exhibit lower Fst than the average for 1000 random genes. Gene network centrality also differed between immune- and non immune-associated genes, and closeness centrality was positively related to gene Fst. These results highlight the value of merging single cell RNA sequencing technology with evolutionary population genomic data, and reveal that genes which define immune cell types exhibit especially rapid evolution.
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2025-02-20
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