Immunohistochemical characterisation of the immune landscape in primary uveal melanoma and liver metastases

原发性葡萄膜黑色素瘤和肝转移瘤免疫景观的免疫组织化学表征

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作者:Pascale Mariani, Nouritza Torossian, Steven van Laere, Peter Vermeulen, Leanne de Koning, Sergio Roman-Roman, Olivier Lantz, Manuel Rodrigues, Marc-Henri Stern, Sophie Gardrat, Laetitia Lesage, Gabriel Champenois, André Nicolas, Alexandre Matet, Nathalie Cassoux, Vincent Servois, Emanuela Romano, So

Background

The immune landscape of uveal melanoma liver metastases (UMLM) has not been sufficiently studied.

Conclusions

TILs and PD-L1 have no predictive value in PUM or UMLM. CD68+ and CD163+TIMs, CD20+ perT lymphocytes, and HGPs are important prognostic factors in UMLMs.

Methods

Immune cell infiltrates (ICIs), PD-1 and PD-L1 were characterised in 62 UMLM and 28 primary uveal melanomas (PUM). ICI, PD-1 and PD-L1 were scored as: (1) % tumoral area occupied by tumour-infiltrating lymphocytes or macrophages (TILs, TIMs) and (2) % perTumoral (perT) area. ICIs and other variables including histopathologic growth patterns (HGPs), replacement and desmoplastic, of UMLM were analysed for their prognostic value.

Results

ICIs recognised by haematoxylin-eosin-saffron (HES) and IHC (e.g., T cells (CD3), B cells (CD20). Macrophages (CD68), (CD163), were primarily localised to the perT region in PUM and UMLM and were more conspicuous in UMLM. HES, CD3, CD4, FoxP3, CD8, CD20, PD-1 TILs were scant (<5%). TIMs were more frequent, particularly in UMLM than in PUM. Both CD68+ TIMs and HGPs remained significant on multivariate analysis, influencing overall (OS) and metastasis-specific overall survival (MSOS). CD68 + , CD163+ and CD20+ perT infiltrates in UMLM predicted increased OS and MSOS on univariate analysis. Conclusions: TILs and PD-L1 have no predictive value in PUM or UMLM. CD68+ and CD163+TIMs, CD20+ perT lymphocytes, and HGPs are important prognostic factors in UMLMs.

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