Leveraging spatial transcriptomics data to recover cell locations in single-cell RNA-seq with CeLEry

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作者
Qihuang Zhang
Shunzhou Jiang
Amelia Schroeder
Jian Hu
Kejie Li
Baohong Zhang
David Dai
Edward B. Lee
Rui Xiao
Mingyao Li
机构
[1] McGill University,Department of Epidemiology, Biostatistics and Occupational Health, School of Population and Global Health
[2] University of Pennsylvania,Statistical Center for Single
[3] Emory University,Cell and Spatial Genomics, Department of Biostatistics, Epidemiology, and Informatics, Perelman School of Medicine
[4] Biogen,Department of Human Genetics, School of Medicine
[5] Inc.,Research Department
[6] University of Pennsylvania,Translational Neuropathology Research Laboratory, Department of Pathology and Laboratory Medicine
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摘要
Single-cell RNA sequencing (scRNA-seq) has revolutionized our understanding of cellular heterogeneity in health and disease. However, the lack of physical relationships among dissociated cells has limited its applications. To address this issue, we present CeLEry (Cell Location recovEry), a supervised deep learning algorithm that leverages gene expression and spatial location relationships learned from spatial transcriptomics to recover the spatial origins of cells in scRNA-seq. CeLEry has an optional data augmentation procedure via a variational autoencoder, which improves the method’s robustness and allows it to overcome noise in scRNA-seq data. We show that CeLEry can infer the spatial origins of cells in scRNA-seq at multiple levels, including 2D location and spatial domain of a cell, while also providing uncertainty estimates for the recovered locations. Our comprehensive benchmarking evaluations on multiple datasets generated from brain and cancer tissues using Visium, MERSCOPE, MERFISH, and Xenium demonstrate that CeLEry can reliably recover the spatial location information for cells using scRNA-seq data.
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