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CLAUDIO TRIPODO

Dissection of DLBCL microenvironment provides a gene expression-based predictor of survival applicable to formalin-fixed paraffin-embedded tissue

  • Autori: Ciavarella S.; Vegliante M.C.; Fabbri M.; De Summa S.; Melle F.; Motta G.; De Iuliis V.; Opinto G.; Enjuanes A.; Rega S.; Gulino A.; Agostinelli C.; Scattone A.; Tommasi S.; Mangia A.; Mele F.; Simone G.; Zito A.F.; Ingravallo G.; Vitolo U.; Chiappella A.; Tarella C.; Gianni A.M.; Rambaldi A.; Zinzani P.L.; Casadei B.; Derenzini E.; Loseto G.; Pileri A.; Tabanelli V.; Fiori S.; Rivas-Delgado A.; Lopez-Guillermo A.; Venesio T.; Sapino A.; Campo E.; Tripodo C.; Guarini A.; Pileri S.A.
  • Anno di pubblicazione: 2018
  • Tipologia: Articolo in rivista
  • OA Link: http://hdl.handle.net/10447/401664

Abstract

Background: Gene expression profiling (GEP) studies recognized a prognostic role for tumor microenvironment (TME) in diffuse large B-cell lymphoma (DLBCL), but the routinely adoption of prognostic stromal signatures remains limited. Patients and methods: Here, we applied the computational method CIBERSORT to generate a 1028-gene matrix incorporating signatures of 17 immune and stromal cytotypes. Then, we carried out a deconvolution on publicly available GEP data of 482 untreated DLBCLs to reveal associations between clinical outcomes and proportions of putative tumor-infiltrating cell types. Forty-five genes related to peculiar prognostic cytotypes were selected and their expression digitally quantified by NanoString technology on a validation set of 175 formalin-fixed, paraffin-embedded DLBCLs from two randomized trials. Data from an unsupervised clustering analysis were used to build a model of clustering assignment, whose prognostic value was also assessed on an independent cohort of 40 cases. All tissue samples consisted of pretreatment biopsies of advanced-stage DLBCLs treated by comparable R-CHOP/R-CHOP-like regimens. Results: In silico analysis demonstrated that higher proportion of myofibroblasts (MFs), dendritic cells, and CD4þ T cells correlated with better outcomes and the expression of genes in our panel is associated with a risk of overall and progression-free survival. In a multivariate Cox model, the microenvironment genes retained high prognostic performance independently of the cell-of-origin (COO), and integration of the two prognosticators (COO þ TME) improved survival prediction in both validation set and independent cohort. Moreover, the major contribution of MF-related genes to the panel and Gene Set Enrichment Analysis suggested a strong influence of extracellular matrix determinants in DLBCL biology. Conclusions: Our study identified new prognostic categories of DLBCL, providing an easy-to-apply gene panel that powerfully predicts patients' survival. Moreover, owing to its relationship with specific stromal and immune components, the panel may acquire a predictive relevance in clinical trials exploring new drugs with known impact on TME.