Pan-cancer profiling of tumor-infiltrating natural killer cells through transcriptional reference mapping

Herman Netskar(Oslo University Hospital), Aline Pfefferle(Karolinska Institutet), Jodie P. Goodridge(Fate Therapeutics (United States)), Ebba Sohlberg(Karolinska Institutet), Olli Dufva(University of Cambridge), Sara A. Teichmann(University of Cambridge), Trevor Clancy(Oslo Cancer Cluster), Amir Horowitz(Icahn School of Medicine at Mount Sinai), Karl‐Johan Malmberg(Oslo University Hospital)
bioRxiv (Cold Spring Harbor Laboratory)
October 30, 2023
Cited by 13Open Access
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Abstract

Abstract The functional diversity of natural killer (NK) cell repertoires stems from differentiation, homeostatic receptor-ligand interactions, and adaptive-like responses to viral infections. Here, we generated a single-cell transcriptional reference map of healthy human blood and tissue-derived NK cells, with temporal resolution and fate-specific expression of gene regulator networks defining NK cell differentiation. Using transfer learning, transcriptomes of tumor-infiltrating NK cells from seven solid tumor types (427 patients), combined from 39 datasets, were incorporated into the reference map and interrogated for tumor microenvironment (TME)-induced perturbations. We identified six functionally distinct NK cellular states in healthy and malignant tissues, two of which were commonly enriched for across tumor types: a dysfunctional ‘stressed’ CD56 bright state susceptible to TME-induced immunosuppression and a cytotoxic TME-resistant ‘effector’ CD56 dim state. The ratio of ‘stressed’ CD56 bright and ‘effector’ CD56 dim was predictive of patient outcome in malignant melanoma and osteosarcoma. This resource may inform the design of novel NK cell therapies and can be extended endlessly through transfer learning to interrogate new datasets from experimental perturbations or disease conditions.


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