Back to Search Start Over

Joint cell segmentation and cell type annotation for spatial transcriptomics

Authors :
Robert Foreman
Fernando Gomez-Pinilla
Douglas Arneson
Xia Yang
Guanglin Zhang
Russell Littman
Roy Wollman
Zachary Hemminger
Source :
Molecular systems biology, vol 17, iss 6, Molecular Systems Biology, Vol 17, Iss 6, Pp n/a-n/a (2021), Molecular Systems Biology
Publication Year :
2021
Publisher :
eScholarship, University of California, 2021.

Abstract

RNA hybridization‐based spatial transcriptomics provides unparalleled detection sensitivity. However, inaccuracies in segmentation of image volumes into cells cause misassignment of mRNAs which is a major source of errors. Here, we develop JSTA, a computational framework for joint cell segmentation and cell type annotation that utilizes prior knowledge of cell type‐specific gene expression. Simulation results show that leveraging existing cell type taxonomy increases RNA assignment accuracy by more than 45%. Using JSTA, we were able to classify cells in the mouse hippocampus into 133 (sub)types revealing the spatial organization of CA1, CA3, and Sst neuron subtypes. Analysis of within cell subtype spatial differential gene expression of 80 candidate genes identified 63 with statistically significant spatial differential gene expression across 61 (sub)types. Overall, our work demonstrates that known cell type expression patterns can be leveraged to improve the accuracy of RNA hybridization‐based spatial transcriptomics while providing highly granular cell (sub)type information. The large number of newly discovered spatial gene expression patterns substantiates the need for accurate spatial transcriptomic measurements that can provide information beyond cell (sub)type labels.<br />JSTA is a new computational method for joint cell segmentation and cell type annotation using spatial transcriptomics data and scRNAseq reference data.

Details

Database :
OpenAIRE
Journal :
Molecular systems biology, vol 17, iss 6, Molecular Systems Biology, Vol 17, Iss 6, Pp n/a-n/a (2021), Molecular Systems Biology
Accession number :
edsair.doi.dedup.....136ab06c0412b8cefd04733b26305783