Deep learning and alignment of spatially resolved single-cell transcriptomes with Tangram

Tommaso Biancalani(Broad Institute), Gabriele Scalia(Broad Institute), Lorenzo Buffoni(University of Florence), Raghav Avasthi(Broad Institute), Ziqing Lu(Broad Institute), Aman Sanger(Broad Institute), Neriman Tokcan(Broad Institute), Charles Vanderburg(Broad Institute), Åsa Segerstolpe(Broad Institute), Meng Zhang(Howard Hughes Medical Institute), Inbal Avraham‐Davidi(Broad Institute), Sanja Vicković(Broad Institute), Mor Nitzan(Broad Institute), Sai Ma(Broad Institute), Ayshwarya Subramanian(Broad Institute), Michał Lipiński(Broad Institute), Jason D. Buenrostro(Broad Institute), Nik Bear Brown(Northeastern University), Duccio Fanelli(University of Florence), Xiaowei Zhuang(Howard Hughes Medical Institute), Evan Z. Macosko(Broad Institute), Aviv Regev(Broad Institute)
Nature Methods
October 28, 2021
Cited by 871Open Access
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Abstract

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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