4.7 Article

Characterizing spatial gene expression heterogeneity in spatially resolved single-cell transcriptomic data with nonuniform cellular densities

Journal

GENOME RESEARCH
Volume 31, Issue 10, Pages 1843-1855

Publisher

COLD SPRING HARBOR LAB PRESS, PUBLICATIONS DEPT
DOI: 10.1101/gr.271288.120

Keywords

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Funding

  1. Faculty of Arts and Sciences Division of Science, Research Computing Group at Harvard University
  2. Cancer Research United Kingdom Imaging and Molecular Annotation of Xenografts and Tumors (CRUK IMAXT) Grand Challenge grant
  3. National Institutes of Health Pre-Doc to Post-Doc Transition Award [K00CA222750]
  4. National Science Foundation CAREER Award [2047611]
  5. National Institutes of Health Pathway [K99HD092542]
  6. Div Of Biological Infrastructure
  7. Direct For Biological Sciences [2047611] Funding Source: National Science Foundation

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The computational framework MERINGUE is developed for spatially resolved transcriptomic data analysis, enabling cell clustering and identification of gene expression patterns in 2D and 3D. This spatial analysis method is expected to enhance our understanding of the interplay between cell state and spatial organization in tissue development and disease.
Recent technological advances have enabled spatially resolved measurements of expression profiles for hundreds to thousands of genes in fixed tissues at single-cell resolution. However, scalable computational analysis methods able to take into consideration the inherent 3D spatial organization of cell types and nonuniform cellular densities within tissues are still lacking. To address this, we developed MERINGUE, a computational framework based on spatial autocorrelation and cross-correlation analysis to identify genes with spatially heterogeneous expression patterns, infer putative cell-cell communication, and perform spatially informed cell clustering in 2D and 3D in a density-agnostic manner using spatially resolved transcriptomic data. We applied MERINGUE to a variety of spatially resolved transcriptomic data sets including multiplexed error-robust fluorescence in situ hybridization (MERFISH), spatial transcriptomics, Slide-seq, and aligned in situ hybridization (ISH) data. We anticipate that such statistical analysis of spatially resolved transcriptomic data will facilitate our understanding of the interplay between cell state and spatial organization in tissue development and disease.

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