| Literature DB >> 35191503 |
Sungwoo Bae1,2, Kwon Joong Na3,4, Jaemoon Koh5, Dong Soo Lee1,2,6, Hongyoon Choi2,6, Young Tae Kim3,4.
Abstract
Deciphering the cellular composition in genome-wide spatially resolved transcriptomic data is a critical task to clarify the spatial context of cells in a tissue. In this study, we developed a method, CellDART, which estimates the spatial distribution of cells defined by single-cell level data using domain adaptation of neural networks and applied it to the spatial mapping of human lung tissue. The neural network that predicts the cell proportion in a pseudospot, a virtual mixture of cells from single-cell data, is translated to decompose the cell types in each spatial barcoded region. First, CellDART was applied to a mouse brain and a human dorsolateral prefrontal cortex tissue to identify cell types with a layer-specific spatial distribution. Overall, the proposed approach showed more stable and higher accuracy with short execution time compared to other computational methods to predict the spatial location of excitatory neurons. CellDART was capable of decomposing cellular proportion in mouse hippocampus Slide-seq data. Furthermore, CellDART elucidated the cell type predominance defined by the human lung cell atlas across the lung tissue compartments and it corresponded to the known prevalent cell types. CellDART is expected to help to elucidate the spatial heterogeneity of cells and their close interactions in various tissues.Entities:
Mesh:
Year: 2022 PMID: 35191503 PMCID: PMC9177989 DOI: 10.1093/nar/gkac084
Source DB: PubMed Journal: Nucleic Acids Res ISSN: 0305-1048 Impact factor: 19.160