Morphology-Aware Profiling of Highly Multiplexed Tissue Images using Variational Autoencoders

Journal: bioRxiv
Published Date:

Abstract

Spatial proteomics (highly multiplexed tissue imaging) provides unprecedented insight into the types, states, and spatial organization of cells within preserved tissue environments. To enable single-cell analysis, high-plex images are typically segmented using algorithms that assign marker signals to individual cells. However, conventional segmentation is often imprecise and susceptible to signal spillover between adjacent cells, interfering with accurate cell type identification. Segmentation-based methods also fail to capture the morphological detail that histopathologists rely on for disease diagnosis and staging. Here, we present a method that combines unsupervised, pixel-level machine learning using autoencoders with traditional segmentation to generate single-cell data that captures information on protein abundance, morphology, and local neighborhood in a manner analogous to human experts while overcoming signal spillover. We demonstrate the generality of this approach by applying it to CyCIF, Lunaphore COMET, and CODEX data, and show that it can learn histological features across multiple spatial scales.

Authors

  • Gregory J. Baker; Edward Novikov; Shannon Coy; Yu-An Chen; Clemens B. Hug; Zergham Ahmed; Sebastián A. Cajas Ordóñez; Siyu Huang; Clarence Yapp; Gaurav N. Joshi; Fumiki Yanagawa; Artem Sokolov; Hanspeter Pfister; Sandro Santagata; Peter K. Sorger