转录组
计算机科学
杠杆(统计)
核糖核酸
计算生物学
RNA序列
生物
人工智能
基因表达
基因
遗传学
作者
Robert R. Stickels,Evan Murray,Pawan Kumar,Jilong Li,Jamie L. Marshall,Daniela J. Di Bella,Paola Arlotta,Evan Z. Macosko,Fei Chen
标识
DOI:10.1038/s41587-020-0739-1
摘要
Measurement of the location of molecules in tissues is essential for understanding tissue formation and function. Previously, we developed Slide-seq, a technology that enables transcriptome-wide detection of RNAs with a spatial resolution of 10 μm. Here we report Slide-seqV2, which combines improvements in library generation, bead synthesis and array indexing to reach an RNA capture efficiency ~50% that of single-cell RNA-seq data (~10-fold greater than Slide-seq), approaching the detection efficiency of droplet-based single-cell RNA-seq techniques. First, we leverage the detection efficiency of Slide-seqV2 to identify dendritically localized mRNAs in neurons of the mouse hippocampus. Second, we integrate the spatial information of Slide-seqV2 data with single-cell trajectory analysis tools to characterize the spatiotemporal development of the mouse neocortex, identifying underlying genetic programs that were poorly sampled with Slide-seq. The combination of near-cellular resolution and high transcript detection efficiency makes Slide-seqV2 useful across many experimental contexts.
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