| Literature DB >> 35193613 |
John J Miles1,2,3,4,5, Champa N Ratnatunga6,7,8,9, Amali Karunathilaka10, Samuel Halstrom11, Patricia Price11, Michael Holt12,13, Viviana P Lutzky14, Denise L Doolan15,16, Andreas Kupz15,16, Scott C Bell12,14, Rachel M Thomson13,17.
Abstract
γδ T cells are a highly versatile immune lineage involved in host defense and homeostasis, but questions remain around their heterogeneity, precise function and role during health and disease. We used multi-parametric flow cytometry, dimensionality reduction, unsupervised clustering, and self-organizing maps (SOM) to identify novel γδ T cell naïve/memory subsets chiefly defined by CD161 expression levels, a surface membrane receptor that can be activating or suppressive. We used middle-to-old age individuals given immune blockade is commonly used in this population. Whilst most Vδ1+subset cells exhibited a terminal differentiation phenotype, Vδ1- subset cells showed an early memory phenotype. Dimensionality reduction revealed eight γδ T cell clusters chiefly diverging through CD161 expression with CD4 and CD8 expression limited to specific subpopulations. Comparison of matched healthy elderly individuals to bronchiectasis patients revealed elevated Vδ1+ terminally differentiated effector memory cells in patients potentially linking this population with chronic proinflammatory disease.Entities:
Keywords: Bronchiectasis; CD161; Cellular immunity; FlowSOM; High dimensional flow cytometry; Immune checkpoint; Unsupervised clustering; γδ T cell; γδ T cell multifunctionality; γδ T cell subsets
Year: 2022 PMID: 35193613 PMCID: PMC8862246 DOI: 10.1186/s12979-022-00269-w
Source DB: PubMed Journal: Immun Ageing ISSN: 1742-4933 Impact factor: 6.400
Fig. 1γδ T cells subsets exhibit distinct surface protein fingerprints. Total γδ T cells were gated on (A) CD161 and (B) HLA-DR versus Vδ1. Vδ1− (C) and Vδ1+(D) T cells were gated on CD45RA versus CD27,. An example of biaxial density plots from one donor is shown. Comparison of CD161 expression on (E) TCM cells and (F) TEM cells in Vδ1+ and Vδ1− populations showing elevated CD161 expression in Vδ1− cells (p < 0.0001)
Fig. 2UMAP (uniform manifold approximation and projection) together with FlowSOM identifies phenotypically unique subsets of γδ T cells in healthy elderly individuals. A UMAP dimensionality reduction performed the whole γδ T cell population grouped cells into 8 islands when Vδ1, CD161, CD45RA, HLA-DR, CD27, CD8 and CD4 were used as clustering channels. B FlowSOM meta-cluster overlayed on UMAP plot indicating high degree of correlation between two independent automated analyses. C FlowSOM meta-cluster positions on the minimal spanning tree. The meta-cluster numbers given here represents numbers shown in panel (B) and Table 1
Fig. 3FlowSOM minimal spanning tree (MST) clustering identifies eight novel γδ T -cell subsets. Total γδ T cell flow data from middle aged to elderly healthy donors were clustered into 100 nodes with subsequent automated meta-clustering into eight γδ T cells subsets (meta-clusters) using Vδ1, CD161, CD45RA and, CD27, CD8 and CD4 clustering channels and the FlowSOM algorithm. The relationships between the nodes (which are most like each other) are shown by the spanning tree with similar nodes placed close together on the plot. Expression intensity of each clustering marker on the same spanning tree plot is shown in the six diagrams (A) Vδ1, (B) CD161, (C) CD45RA, (D) HLA-DR (E) CD27, (F) CD8 and (G) CD4. Dark red represents maximum expression, and dark blue represents no expression of the given marker as shown in the colour bar. A coloured halo around the node indicates the meta-cluster to which each node belongs. Expression levels of each marker in each cell meta-cluster is summarized in Table 1
The cell surface landscape of ϒδ T cells subsets