Back to Search Start Over

SPACE-GM: geometric deep learning of disease-associated microenvironments from multiplex spatial protein profiles

Authors :
Zhenqin Wu
Alexandro E. Trevino
Eric Wu
Kyle Swanson
Honesty J. Kim
H. Blaize D’Angio
Ryan Preska
Gregory W. Charville
Piero D. Dalerba
Ann Marie Egloff
Ravindra Uppaluri
Umamaheswar Duvvuri
Aaron T. Mayer
James Zou
Publication Year :
2022
Publisher :
Cold Spring Harbor Laboratory, 2022.

Abstract

Multiplexed immunofluorescence imaging enables high-dimensional molecular profiling at subcellular resolution. However, learning disease-relevant cellular environments from these rich imaging data is an open challenge. We developed SPAtial CEllular Graphical Modeling (SPACE-GM), a geometric deep learning framework that flexibly models tumor microenvironments (TMEs) as cellular graphs. We applied SPACE-GM to 658 head-and-neck and colorectal human cancer samples assayed with 40-plex immunofluorescence imaging to identify spatial motifs associated with cancer recurrence and patient survival after immunotherapy. SPACE-GM is substantially more accurate in predicting patient outcomes than previous approaches for modeling spatial data using neighborhood cell-type compositions. Computational interpretation of the disease-relevant microenvironments identified by SPACE-GM generates insights into the effect of spatial dispersion of tumor cells and granulocytes on patient prognosis.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........10928b05d942bff2c2ac3ba6bb9aa2aa