In silico methods for cell annotation, quantification of gene expression, and cell geometry at single-cell resolution using 3DCellAtlas

Petra Stamm, Soeren Strauss, Thomas D Montenegro-Johnson, Richard Smith, George W Bassel

Research output: Chapter in Book/Report/Conference proceedingChapter

1 Citation (Scopus)

Abstract

A comprehensive understanding of plant growth and development requires the integration of the spatial and temporal dynamics of gene regulatory networks with changes in cellular geometry during 3D organ growth. 3DCellAtlas is an integrative computational pipeline that semi-automatically identifies cell type and position within radially symmetric plant organs, and simultaneously quantifies 3D cell anisotropy and reporter abundance at single-cell resolution. It is a powerful tool that generates digital single-cell cellular atlases of plant organs and enables 3D cell geometry and reporter abundance (gene/protein/biosensor) from multiple samples to be integrated at single-cell resolution across whole organs. Here we describe how to use 3DCellAtlas to process and analyze radially symmetric organs, and to identify cell types and extract geometric cell data within these 3D cellular datasets. We detail how to use two statistical tools in 3DCellAtlas to compare cellular geometries, and to analyze reporter abundance at single-cell resolution.

Original languageEnglish
Title of host publicationPlant Hormones
Subtitle of host publicationMethods and Protocols
PublisherSpringer
Pages99-123
ISBN (Electronic)978-1493964697
ISBN (Print)978-1493964673
DOIs
Publication statusPublished - 2017

Publication series

NameMethods in Molecular Biology
PublisherSpringer New York
Volume1497
ISSN (Print)1064-3745

Keywords

  • 3DCellAtlas
  • MorphoGraphX
  • 3D imaging
  • 3D image analysis
  • Cell type identification
  • 3D anisotropy
  • Digital single-cell analysis

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