A platform for multisite immune profiling of premetastatic pancreatic cancer at single-cell resolution

Abstract Background Pancreatic ductal adenocarcinoma (PDAC) is characterized by exceedingly high rates of metastatic progression, with the liver representing the most common site of distant spread. Here, we established a platform for multisite immune profiling of human PDAC encompassing the tumor, p...

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Main Authors: Elishama N. Kanu, Ashley A. Fletcher, Jiayin Bao, Ethan S. Agritelley, Julia Button, Austin M. Eckhoff, Karrie Comatas, Tao Wang, Bin-Jin Hwang, Michael E. Lidsky, Sabino Zani, Dan G. Blazer, Peter J. Allen, Zhicheng Ji, Frank J. Lowery, Sri Krishna, Nicholas D. Klemen, Daniel P. Nussbaum, Erika J. Crosby
Format: Article
Language:English
Published: Springer 2025-08-01
Series:Cancer Immunology, Immunotherapy
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Online Access:https://doi.org/10.1007/s00262-025-04146-5
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Summary:Abstract Background Pancreatic ductal adenocarcinoma (PDAC) is characterized by exceedingly high rates of metastatic progression, with the liver representing the most common site of distant spread. Here, we established a platform for multisite immune profiling of human PDAC encompassing the tumor, peripheral circulation, and premetastatic liver, to more comprehensively study how various immune subsets might contribute to patient outcomes. Methods Tumor, liver, and blood samples were obtained from patients undergoing resection for non-metastatic PDAC. Derived immune cells underwent paired single-cell RNA and TCR sequencing. Immune composition, cell-type functional profiles, and T cell clonal expansion patterns were evaluated across tissue sites. Results In total, 106,539 immune cells were sequenced, of which 85,748 met criteria for analysis. We identified 32 cell populations, of which seven demonstrated significant enrichment within a particular tissue, highlighting that this workflow possesses the granularity needed for identifying potential future biomarkers. Functional profiling revealed tissue-specific differences in cell phenotypes. This included terminally differentiated exhausted CD8 T cells within the tumor, highly active Tregs within the premetastatic liver and tumor, and M1 versus M2 polarization of liver and tumor macrophage populations, respectively. Within the tumor, expanded Treg clones were uniquely abundant, and while expanded clones could be tracked to the blood and premetastatic liver, many of these mapped back to known viral antigens. Leveraging previously validated gene sets, we show how these can be applied to predict the tumor reactivity of intratumoral T cells using transcriptional signatures. We demonstrated a high degree of concordance between multiple independent signatures and tracked high-priority TCRs within the blood and liver. Conclusion This study demonstrates the feasibility of a platform, which has already been implemented into ongoing clinical protocols, for immune profiling of human PDAC across the sites most relevant to metastatic progression. Future applications of this work can monitor immune populations throughout metastatic progression to build a temporal database of immune phenotypes and track association with clinical outcomes.
ISSN:1432-0851