染色质
计算生物学
转录组
空间分析
RNA序列
计算机科学
生物
神经科学
基因
遗传学
基因表达
遥感
地质学
作者
Tommaso Biancalani,Gabriele Scalia,Lorenzo Buffoni,Raghav Avasthi,Ziqing Lu,Aman Sanger,Neriman Tokcan,Charles R. Vanderburg,Åsa Segerstolpe,Meng Zhang,Inbal Avraham‐Davidi,Sanja Vicković,Mor Nitzan,Sai Ma,Ayshwarya Subramanian,Michał Lipiński,Jason D. Buenrostro,Nik Bear Brown,Duccio Fanelli,Xiaowei Zhuang,Evan Z. Macosko,Aviv Regev
出处
期刊:Nature Methods
[Springer Nature]
日期:2021-10-28
卷期号:18 (11): 1352-1362
被引量:221
标识
DOI:10.1038/s41592-021-01264-7
摘要
Charting an organs' biological atlas requires us to spatially resolve the entire single-cell transcriptome, and to relate such cellular features to the anatomical scale. Single-cell and single-nucleus RNA-seq (sc/snRNA-seq) can profile cells comprehensively, but lose spatial information. Spatial transcriptomics allows for spatial measurements, but at lower resolution and with limited sensitivity. Targeted in situ technologies solve both issues, but are limited in gene throughput. To overcome these limitations we present Tangram, a method that aligns sc/snRNA-seq data to various forms of spatial data collected from the same region, including MERFISH, STARmap, smFISH, Spatial Transcriptomics (Visium) and histological images. Tangram can map any type of sc/snRNA-seq data, including multimodal data such as those from SHARE-seq, which we used to reveal spatial patterns of chromatin accessibility. We demonstrate Tangram on healthy mouse brain tissue, by reconstructing a genome-wide anatomically integrated spatial map at single-cell resolution of the visual and somatomotor areas.
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