Computational immune synapse analysis reveals T-cell interactions in distinct tumor microenvironments

Author:

Wang Victor1,Liu Zichao2ORCID,Martinek Jan3,Zhou Jie3,Boruchov Hannah3,Ray Kelly3,Palucka Karolina3,Chuang Jeffrey4ORCID

Affiliation:

1. National Institutes of Health

2. 1The Jackson Laboratory for Genomic Medicine

3. The Jackson Laboratory for Genomic Medicine

4. The Jackson Laboratory

Abstract

Abstract The tumor microenvironment (TME) and the cellular interactions within it can be critical to tumor progression and treatment response. Although technologies to generate multiplex images of the TME are advancing, the many ways in which TME imaging data can be mined to elucidate cellular interactions are only beginning to be realized. Here, we present a novel approach for multipronged computational immune synapse analysis (CISA) that reveals T-cell synaptic interactions from multiplex images. CISA enables automated discovery and quantification of immune synapse interactions based on the localization of proteins on cell membranes. We first demonstrate the ability of CISA to detect T-cell:APC (antigen presenting cell) synaptic interactions in two independent human melanoma imaging mass cytometry (IMC) tissue microarray datasets. We then generate melanoma histocytometry whole slide images and verify that CISA can detect similar interactions across data modalities. Interestingly, CISA histoctyometry analysis also reveals that T-cell:macrophage synapse formation is associated with T-cell proliferation. We next show the generality of CISA by extending it to breast cancer IMC images, finding that CISA quantifications of T-cell:B-cell synapses are predictive of improved patient survival. Our work demonstrates the biological and clinical significance of spatially resolving cell-cell synaptic interactions in the TME and provides a robust method to do so across imaging modalities and cancer types.

Publisher

Research Square Platform LLC

Reference75 articles.

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