Cell segmentation in imaging-based spatial transcriptomics

被引:0
|
作者
Viktor Petukhov
Rosalind J. Xu
Ruslan A. Soldatov
Paolo Cadinu
Konstantin Khodosevich
Jeffrey R. Moffitt
Peter V. Kharchenko
机构
[1] Harvard Medical School,Department of Biomedical Informatics
[2] University of Copenhagen,Biotech Research and Innovation Centre, Faculty of Health and Medical Sciences
[3] Boston Children’s Hospital,Program in Cellular and Molecular Medicine
[4] Harvard Medical School,Department of Microbiology
[5] Harvard University,Department of Chemistry
[6] Harvard Stem Cell Institute,undefined
来源
Nature Biotechnology | 2022年 / 40卷
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摘要
Single-molecule spatial transcriptomics protocols based on in situ sequencing or multiplexed RNA fluorescent hybridization can reveal detailed tissue organization. However, distinguishing the boundaries of individual cells in such data is challenging and can hamper downstream analysis. Current methods generally approximate cells positions using nuclei stains. We describe a segmentation method, Baysor, that optimizes two-dimensional (2D) or three-dimensional (3D) cell boundaries considering joint likelihood of transcriptional composition and cell morphology. While Baysor can take into account segmentation based on co-stains, it can also perform segmentation based on the detected transcripts alone. To evaluate performance, we extend multiplexed error-robust fluorescence in situ hybridization (MERFISH) to incorporate immunostaining of cell boundaries. Using this and other benchmarks, we show that Baysor segmentation can, in some cases, nearly double the number of cells compared to existing tools while reducing segmentation artifacts. We demonstrate that Baysor performs well on data acquired using five different protocols, making it a useful general tool for analysis of imaging-based spatial transcriptomics.
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页码:345 / 354
页数:9
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