Slide-seq: A scalable technology for measuring genome-wide expression at high spatial resolution

Samuel G. Rodriques(Broad Institute), Robert R. Stickels(Broad Institute), Aleksandrina Goeva(Broad Institute), Caroline Martin(Broad Institute), Evan Murray(Broad Institute), Charles Vanderburg(Broad Institute), Joshua D. Welch(Broad Institute), Linlin M. Chen(Broad Institute), Fei Chen(Broad Institute), Evan Z. Macosko(Broad Institute)
Science
March 28, 2019
Cited by 2,519

Abstract

Spatial positions of cells in tissues strongly influence function, yet a high-throughput, genome-wide readout of gene expression with cellular resolution is lacking. We developed Slide-seq, a method for transferring RNA from tissue sections onto a surface covered in DNA-barcoded beads with known positions, allowing the locations of the RNA to be inferred by sequencing. Using Slide-seq, we localized cell types identified by single-cell RNA sequencing datasets within the cerebellum and hippocampus, characterized spatial gene expression patterns in the Purkinje layer of mouse cerebellum, and defined the temporal evolution of cell type-specific responses in a mouse model of traumatic brain injury. These studies highlight how Slide-seq provides a scalable method for obtaining spatially resolved gene expression data at resolutions comparable to the sizes of individual cells.


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