| Literature DB >> 32038613 |
Frances Winkler1,2, Bertram Bengsch1,3.
Abstract
Mass cytometry has become an important technique for the deep analysis of single cell protein expression required for precision systems immunology. The ability to profile more than 40 markers per cell is particularly relevant for the differentiation of cell types for which low parametric characterization has proven difficult, such as exhausted CD8+ T cells (TEX). TEX with limited effector function accumulate in many chronic infections and cancers and are subject to inhibitory signaling mediated by several immune checkpoints (e.g., PD-1). Of note, TEX represent considerable targets for immune-stimulatory therapies and are beginning to be recognized as a major correlate of successful checkpoint blockade approaches targeting the PD-1 pathway. TEX exhibit substantial functional, transcriptomic and epigenomic differences compared to canonical functional T cell subsets [such as naïve (TN), effector (TEFF) and memory T cells (TMEM)]. However, phenotypic distinction of TEX from TEFF and TMEM can often be challenging since many molecules expressed by TEX can also be expressed by effector and memory T cell populations. Moreover, significant heterogeneity of TEX has been described, such as subpopulations of exhausted T cells with progenitor-progeny relationships or populations with different degrees of exhaustion or homeostatic potential that may directly inform about disease progression. In addition, TEX subsets have essential clinical implications as they differentially respond to antiviral and checkpoint therapies. The precise assessment of TEX thus requires a high-parametric analysis that accounts for differences to canonical T cell populations as well as for TEX subset heterogeneity. In this review, we discuss how mass cytometry can be used to reveal the role of TEX subsets in humans by combining exhaustion-directed phenotyping with functional profiling. Mass cytometry analysis of human TEX populations is instrumental to gain a better understanding of TEX in chronic infections and cancer. It has important implications for immune monitoring in therapeutic settings aiming to boost T cell immunity, such as during cancer immunotherapy.Entities:
Keywords: T cell differentiation; T cell exhaustion; cancer; chronic infections; immune checkpoint blockade; immunotherapy; mass cytometry (CyTOF); systems immunology
Year: 2020 PMID: 32038613 PMCID: PMC6987473 DOI: 10.3389/fimmu.2019.03039
Source DB: PubMed Journal: Front Immunol ISSN: 1664-3224 Impact factor: 7.561
Figure 1Model of post-thymic CD8+ T cell differentiation. According to this model, after activation of naïve T cells (TN) during priming, early activated effector T cells (TEA) receive signals driving functional differentiation to effector T cells (TEFF) and memory T cells (TMEM) depending on the recognition of antigen, costimulation, and the inflammatory milieu. In contrast, persistent antigen stimulation, reduced costimulation in the presence of coinhibitory signals and prolonged exposure to inflammatory cues are main drivers of the differentiation toward the exhausted T cell (TEX) fate, including an up-regulation of inhibitory receptors (IRs).
Exhaustion markers for TEX profiling.
| 2B4 | UP | Co-regulatory receptor | X |
| Amphiregulin | UP | Cytokine | |
| CCL3 | UP | Chemokine | |
| CCR7 | DN | Chemokine receptor | |
| CD38 | UP | Ectoenzyme | |
| CD39 | UP | Ectoenzyme | X |
| CD7 | UP | Co-regulatory receptor | |
| CD73 | DN | Ectoenzyme | |
| CD127 | DN | Interleukin receptor | X |
| CTLA-4 | UP | Co-regulatory receptor | X |
| CXCL10 | UP | Chemokine | |
| CXCR5 | UP | Chemokine receptor | X |
| Eomes | UP | Transcription factor | X |
| Granzyme K | UP | Cytotoxic molecule | |
| Helios | UP | Transcription factor | |
| IFN-γ | ns | Cytokine | |
| IL-2 | DN | Cytokine | |
| IL-10 | UP | Cytokine | |
| IL-21 | UP | Cytokine | |
| Lag-3 | UP | Co-regulatory receptor | |
| PD-1 | UP | Co-regulatory receptor | X |
| Ptger2 | UP | Prostaglandin receptor | |
| TCF1 | DN | Transcription factor | X |
| TIGIT | UP | Co-regulatory receptor | X |
| TNF | ns | Cytokine | X |
| TOX | UP | Transcription factor | X |
| XCL-1 | UP | Chemokine |
Markers were selected based on exhaustion-specific expression patterns using transcriptomic and epigenomic profiling and validated using mass cytometry. Markers associated with T cell exhaustion, their predicted expression on T.
Figure 2Systems immunology approach for TEX characterization using mass cytometry. Selection of suitable exhaustion markers able to differentiate TEX from TEFF and TMEM such as by transcriptomic or epigenomic profiling is a critical step for TEX-directed immune profiling using mass cytometry. High-dimensional analysis of TEX provides further insights into the heterogeneity of TEX that can be unraveled by a bioinformatics pipeline including cluster identification and dimension reduction strategies (i.e., tSNE, Phenograph) that provide detailed overview about the exhaustion landscape. Detailed TEX subset profiling provides the basis for understanding the heterogeneity of TEX and their involvement in different disease settings, such as chronic infection and cancer. Data-driven visualizations in this figure were computed based on a dataset published in Bengsch et al. (12).
Figure 3Model of TEX heterogeneity and key markers linked to individual subsets. Within the pool of exhausted T cells, three major trajectories of TEX subsets are proposed. Early TEX can give rise to a pool of disease-associated or health-associated TEX that massively differ in their activation program as well as in their transcriptional signature, while between both extremes, a balanced pool of differentiated TEX can be observed. One differentiation trajectory leads to populations with high homeostatic potential that are identified in settings of disease control (“health-associated TEX”) and can have memory-like features, such as high TCF-1 and CD127 expression. Strong expression of activation markers also found on TEFF cells (e.g., CD38, CD39) and co-expression of many inhibitory receptors (IRs) is a key feature of TEX populations identified in progressive disease in chronic infection and cancer. According to this model, TEX with recent history of activation and severe exhaustion after priming express a different set of IRs (e.g., PD-1, CTLA-4, Lag-3) more frequently observed in cancer compared to highly activated T cells arising in many chronic infections. These highly activated T cells in chronic infection are thought to arise from an intermediate trajectory of TEX (expressing e.g., PD-1, 2B4, TIGIT) after encountering additional antigen stimulation and inhibitory signals. Furthermore, a precursor-progenitor relationship between health- and disease-associated TEX important for cancer immunotherapy has been described, and is indicated by the dotted lines. The different TEX trajectories also reflect differential transcriptional programming by varying T-bet, TCF-1, TOX and Eomes expression.