Spatial transcriptomics at subspot resolution with BayesSpace
Details
Serval ID
serval:BIB_8D92033C8F26
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Spatial transcriptomics at subspot resolution with BayesSpace
Journal
Nat Biotechnol
ISSN
1546-1696 (Electronic)
ISSN-L
1087-0156
Publication state
Published
Issued date
11/2021
Volume
39
Number
11
Pages
1375-1384
Language
english
Notes
Zhao, Edward
Stone, Matthew R
Ren, Xing
Guenthoer, Jamie
Smythe, Kimberly S
Pulliam, Thomas
Williams, Stephen R
Uytingco, Cedric R
Taylor, Sarah E B
Nghiem, Paul
Bielas, Jason H
Gottardo, Raphael
eng
P30 CA015704/CA/NCI NIH HHS/
S10 OD028685/OD/NIH HHS/
P01 CA225517/CA/NCI NIH HHS/
F30 CA254168/CA/NCI NIH HHS/
T32 CA080416/CA/NCI NIH HHS/
Research Support, Non-U.S. Gov't
Nat Biotechnol. 2021 Nov;39(11):1375-1384. doi: 10.1038/s41587-021-00935-2. Epub 2021 Jun 3.
Stone, Matthew R
Ren, Xing
Guenthoer, Jamie
Smythe, Kimberly S
Pulliam, Thomas
Williams, Stephen R
Uytingco, Cedric R
Taylor, Sarah E B
Nghiem, Paul
Bielas, Jason H
Gottardo, Raphael
eng
P30 CA015704/CA/NCI NIH HHS/
S10 OD028685/OD/NIH HHS/
P01 CA225517/CA/NCI NIH HHS/
F30 CA254168/CA/NCI NIH HHS/
T32 CA080416/CA/NCI NIH HHS/
Research Support, Non-U.S. Gov't
Nat Biotechnol. 2021 Nov;39(11):1375-1384. doi: 10.1038/s41587-021-00935-2. Epub 2021 Jun 3.
Abstract
Recent spatial gene expression technologies enable comprehensive measurement of transcriptomic profiles while retaining spatial context. However, existing analysis methods do not address the limited resolution of the technology or use the spatial information efficiently. Here, we introduce BayesSpace, a fully Bayesian statistical method that uses the information from spatial neighborhoods for resolution enhancement of spatial transcriptomic data and for clustering analysis. We benchmark BayesSpace against current methods for spatial and non-spatial clustering and show that it improves identification of distinct intra-tissue transcriptional profiles from samples of the brain, melanoma, invasive ductal carcinoma and ovarian adenocarcinoma. Using immunohistochemistry and an in silico dataset constructed from scRNA-seq data, we show that BayesSpace resolves tissue structure that is not detectable at the original resolution and identifies transcriptional heterogeneity inaccessible to histological analysis. Our results illustrate BayesSpace's utility in facilitating the discovery of biological insights from spatial transcriptomic datasets.
Pubmed
Create date
28/02/2022 11:45
Last modification date
06/05/2022 5:35