转录组
生物
计算生物学
基因表达
原位杂交
RNA序列
斑马鱼
基因表达谱
核糖核酸
基因
细胞生物学
遗传学
作者
Rahul Satija,Jeffrey A. Farrell,David Gennert,Alexander F. Schier,Aviv Regev
摘要
RNA-seq data from single cells are mapped to their location in complex tissues using gene expression atlases based on in situ hybridization. Spatial localization is a key determinant of cellular fate and behavior, but methods for spatially resolved, transcriptome-wide gene expression profiling across complex tissues are lacking. RNA staining methods assay only a small number of transcripts, whereas single-cell RNA-seq, which measures global gene expression, separates cells from their native spatial context. Here we present Seurat, a computational strategy to infer cellular localization by integrating single-cell RNA-seq data with in situ RNA patterns. We applied Seurat to spatially map 851 single cells from dissociated zebrafish (Danio rerio) embryos and generated a transcriptome-wide map of spatial patterning. We confirmed Seurat's accuracy using several experimental approaches, then used the strategy to identify a set of archetypal expression patterns and spatial markers. Seurat correctly localizes rare subpopulations, accurately mapping both spatially restricted and scattered groups. Seurat will be applicable to mapping cellular localization within complex patterned tissues in diverse systems.
科研通智能强力驱动
Strongly Powered by AbleSci AI