| Literature DB >> 33971932 |
Rui Dong1,2, Guo-Cheng Yuan3,4.
Abstract
Recent development of spatial transcriptomic technologies has made it possible to characterize cellular heterogeneity with spatial information. However, the technology often does not have sufficient resolution to distinguish neighboring cell types. Here, we present spatialDWLS, to quantitatively estimate the cell-type composition at each spatial location. We benchmark the performance of spatialDWLS by comparing it with a number of existing deconvolution methods and find that spatialDWLS outperforms the other methods in terms of accuracy and speed. By applying spatialDWLS to a human developmental heart dataset, we observe striking spatial temporal changes of cell-type composition during development.Entities:
Keywords: Deconvolution; Single cell; Spatial transcriptomics
Mesh:
Year: 2021 PMID: 33971932 PMCID: PMC8108367 DOI: 10.1186/s13059-021-02362-7
Source DB: PubMed Journal: Genome Biol ISSN: 1474-7596 Impact factor: 13.583
Fig. 1An overview of the spatialDWLS method. a A schematic representation of the spatialDWLS workflow. The input contains a spatial transcriptomic dataset (gene expression matrix and cell location coordinates) and a set of known cell-type specific gene signatures. For each spot, the cell types that are likely to be present are identified by using cell-type enrichment analysis. Then, a modified DWLS method is applied to infer cell type position at each spot. b Comparison of the accuracy of different deconvolution methods. Single-cell resolution seqFISH+ data are coarse-grain averaged to generate lower-resolution spatial transcriptomic data. The true frequency of a cell-type (indicated as blue squares in the top left panel) at each spot is compared with the inferred frequency (indicated as red squares in the five other panels) by using different methods. The relationship is also represented as a scatter plot, with x-axis representing the true frequency and the y-axis representing the inferred frequency. The overall performance is quantified as the root mean square error (RMSE). The oligodendrocyte cell-type is used here as a representative example. c The overall RMSE error is further decomposed into two components, corresponding to regions where the cell type is absent (red) and present (green), respectively. d Comparison of the computing speed of different methods. Running times for analyzing a mouse brain Visium dataset are shown
Fig. 2Deconvolution analysis identifies spatial-temporal change of cell-type composition during human heart development. a A schematic overview of the analysis. Spatial Transcriptomic data for developing heart were collected at three developmental stages by Asp et al. 2019. In parallel, single-cell RNAseq analysis was carried out to identify cell-type specific gene signatures. The spatialDWLS method was applied to infer the distribution of different cell-types across developmental stages. b The resulting estimates of the spatial distribution of different cell types. One representative sample was selected from each developmental stage. c A summary of the cell-type composition for all samples grouped by the corresponding developmental stages. d The assortativity analysis indicates an increased level of spatial clustering among similar cell types during heart development