Spatial Analysis and CD25-expression Identify Regulatory T Cells As Predictors of a Poor Prognosis in Colorectal Cancer

Modern pathology(2022)

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摘要
Regulatory T cells (Tregs) are a heterogeneous cell population that can either suppress or stimulate immune responses. Tumor-infiltrating Tregs are associated with an adverse outcome from most cancer types, but have generally been found to be associated with a good prognosis in colorectal cancer (CRC). We investigated the prognostic heterogeneity of Tregs in CRC by co-expression patterns and spatial analyses with diverse T cell markers, using multiplex fluorescence immunohistochemistry and digital image analysis in two consecutive series of primary CRCs (total n = 1720). Treg infiltration in tumors, scored as FOXP3 + or CD4 + /CD25 + /FOXP3 + (triple-positive) cells, was strongly correlated to the overall amount of CD3 + and CD8 + T cells, and consequently associated with a favorable 5-year relapse-free survival rate among patients with stage I–III CRC who underwent complete tumor resection. However, high relative expression of the activation marker CD25 in triple-positive Tregs was independently associated with an adverse outcome in a multivariable model incorporating clinicopathological and known molecular prognostic markers (hazard ratio = 1.35, p = 0.028). Furthermore, spatial marker analysis based on Voronoi diagrams and permutation testing of cellular neighborhoods revealed a statistically significant proximity between Tregs and CD8 + -cells in 18% of patients, and this was independently associated with a poor survival (multivariable hazard ratio = 1.36, p = 0.017). These results show prognostic heterogeneity of different Treg populations in primary CRC, and highlight the importance of multi-marker and spatial analyses for accurate immunophenotyping of tumors in relation to patient outcome.
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关键词
Cancer microenvironment,Colorectal cancer,Immunohistochemistry,Prognostic markers,T cells,Medicine/Public Health,general,Pathology,Laboratory Medicine
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