MoSAIC: Multi-Resolution Spatial Regression Analysis of Cellular Colocalizations in Cancer Imaging

Jessica Aldous Speaker
 
Veera Baladandayuthapani Co-Author
University of Michigan
 
Michele Peruzzi Co-Author
University of Michigan
 
Maria Masotti Co-Author
University of Michigan
 
Evan Keller Co-Author
University of Michigan
 
Aaron Udager Co-Author
University of Michigan
 
Allison May Co-Author
University of Virginia
 
Wednesday, Aug 5: 11:35 AM - 11:50 AM
2229 
Contributed Papers 
Thomas M. Menino Convention & Exhibition Center 
Hierarchical multiplex imaging approaches generate spatially resolved single-cell measurements across multiple, spatially organized fields of view (FOVs) within patient tumor specimens, thereby enabling systematic investigation of how the organization of the tumor microenvironment varies along biologically meaningful intratumoral gradients. Existing approaches fail to jointly address this multi-resolution data structure needed to recover true biological signals. We propose MoSAIC: multi-resolution spatial regression analysis of cell colocalizations, a hierarchical Bayesian spatial regression model designed for multi-resolution spatial data. MoSAIC decomposes the joint variation into three model components: (i) global tumor-gradient effects, (ii) patient-specific effects to capture inter-patient variability, and (iii) Gaussian process models to account for spatial dependence between FOVs within each patient tumor tissue. Simulations demonstrate MoSAIC has improved prediction and model fit compared to existing spatial and non-spatial model alternatives. Our method is motivated by and applied to a renal cell carcinoma multiplex imaging cohort to investigate immune–tumor colocalization patterns across the epithelial-to-mesenchymal transition (EMT) gradient. MoSAIC identifies increased macrophage–tumor colocalization and decreased cytotoxic T–tumor colocalization progressing across the increasing EMT gradient, consistent with EMT-associated immune suppression and spatially varying immune engagement. Overall, MoSAIC provides an interpretable, multi-resolution framework for quantifying spatial tumor-gradient effects in cancer imaging studies.

Keywords

Gaussian Processes

Hierarchical Bayes

Multiplex Imaging

Renal Cell Carcinoma

Spatial Regression 

Main Sponsor

Section on Statistics in Imaging