Litcius/Paper detail

Spatial analysis with SPIAT and spaSim to characterize and simulate tissue microenvironments

Yuzhou Feng, Tianpei Yang, John Zhu, Mabel Li, Maria Doyle, Volkan Ozcoban, Greg Bass, Angela Pizzolla, Lachlan Cain, Sirui Weng, Anupama Pasam, Nikolce Kocovski, Yukuan Huang, Simon P. Keam, Terence P. Speed, Paul J. Neeson, Richard B. Pearson, Shahneen Sandhu, David L. Goode, Anna Trigos

2023Nature Communications114 citationsDOIOpen Access PDF

Abstract

Spatial proteomics technologies have revealed an underappreciated link between the location of cells in tissue microenvironments and the underlying biology and clinical features, but there is significant lag in the development of downstream analysis methods and benchmarking tools. Here we present SPIAT (spatial image analysis of tissues), a spatial-platform agnostic toolkit with a suite of spatial analysis algorithms, and spaSim (spatial simulator), a simulator of tissue spatial data. SPIAT includes multiple colocalization, neighborhood and spatial heterogeneity metrics to characterize the spatial patterns of cells. Ten spatial metrics of SPIAT are benchmarked using simulated data generated with spaSim. We show how SPIAT can uncover cancer immune subtypes correlated with prognosis in cancer and characterize cell dysfunction in diabetes. Our results suggest SPIAT and spaSim as useful tools for quantifying spatial patterns, identifying and validating correlates of clinical outcomes and supporting method development.

Topics & Concepts

Computer scienceComputational biologyBiologyHealth, Environment, Cognitive AgingSingle-cell and spatial transcriptomicsAir Quality and Health Impacts