Investigator

Riccardo Giannini

Personale tecnico amm.vo · Universita' di Pisa, DIPARTIMENTO DI PATOLOGIA CHIRURGICA, MEDICA, MOLECOLARE E DELL'AREA CRITICA

RGRiccardo Giannini
Papers(1)
Transcriptomic Profil…
Collaborators(5)
Stefano LandiAndrea BertolucciFrancesco BartoliPiero Vincenzo Lippol…Pinuccia Faviana
Institutions(3)
Medica ItalyUniversity of PisaAzienda Ospedaliera U…

Papers

Transcriptomic Profiling of the Tumor Microenvironment in High-Grade Serous Carcinoma: A Pilot Study of Morphologic and Molecular Distinctions Between Classic and SET Patterns

High-grade serous carcinoma (HGSC) of the ovary is characterized by two major histological patterns: a classic papillary/micropapillary architecture and a solid pseudo-endometrioid transitional (SET) variant. We investigated whether the distinct morphologic subtypes are underpinned by transcriptomic differences in the tumor microenvironment (TME). We profiled 21 HGSC tumors (7 SET, 14 classic) using a 770-gene NanoString PanCancer Progression panel. Differential expression analysis revealed ~20 genes with significantly different expression (>4-fold, adjusted p < 0.01) between SET and classic tumors. Unsupervised clustering partially separated SET and classic tumors, suggesting that global gene expression patterns correlate with histologic subtype. SET tumors exhibited upregulation of cell-cycle and epithelial genes (e.g., PTTG1, TRAIL, HER3) and downregulation of genes involved in epithelial–mesenchymal transition (EMT), extracellular matrix (ECM) organization, and angiogenesis (e.g., TWIST2, FGF2, decorin) relative to classic tumors. Notably, PTTG1 and TRAIL were upregulated ~6–9-fold in SET tumors, whereas TWIST2 was ~7-fold downregulated, consistent with reduced EMT in SET tumors. Pathway analysis indicated that SET tumors appear to have an immune-active, stroma-poor microenvironment, in line with an “immunoreactive” phenotype, whereas classic tumors showed a mesenchymal, stroma-rich profile. These molecular distinctions could have diagnostic utility and may inform therapeutic stratification, with key dysregulated genes (e.g., HER3, TRAIL, FGF2) representing potential prognostic or predictive biomarkers. For example, high HER3 expression in SET tumors might predict sensitivity to ERBB3/PI3K inhibitors, whereas stromal factors (e.g., FGF2) enriched in classic HGSC could be targeted with microenvironment-modulating therapies. These preliminary findings require validation before translation into pathology practice via immunohistochemical (IHC) assays (e.g., for HER3 or TRAIL), potentially enabling improved classification and personalized treatment of HGSC. We report effect sizes as log2 fold change with 95% confidence intervals and emphasize FDR-adjusted q-values. Given the small sample size and the absence of outcome data (OS/PFS/PFI), results are preliminary and hypothesis-generating. Orthogonal protein-level validation and replication in larger, independent cohorts are required before any translational inference.

107Works
1Papers
5Collaborators
Tumor MicroenvironmentThyroid NeoplasmsBiomarkers, TumorOvarian NeoplasmsCystadenocarcinoma, SerousNeoplasm Grading

Positions

2017–

Personale tecnico amm.vo

Universita' di Pisa · DIPARTIMENTO DI PATOLOGIA CHIRURGICA, MEDICA, MOLECOLARE E DELL'AREA CRITICA

2004–

Tecnico Amministrativo, Categoria D - Area Tecnica, Tecnico-scientifica ed Elaborazione Dati

Università di Pisa · Dipartimento di Patologia Chirurgica, Medica, Molecolare e dell'Area Critica

2012–

Personale tecnico amm.vo

Universita' di Pisa · DIP. DI PATOLOGIA CHIRURGICA, MEDICA, MOLECOLARE E DELL'AREA CRITICA - disattivato (attivo dal 19/09/2012 al 31/12/2019)

2012–

Personale tecnico amm.vo

Universita' di Pisa · DIPARTIMENTO DI CHIRURGIA (attivo dal 01/01/1995 al 18/09/2012)

Education

Dottore in Tecniche di Laboratorio Biomedico

Università degli Studi di Pisa

Dottore in Scienze Biologiche

Università degli Studi di Pisa

Dottore di Ricerca (PhD) in Oncologia Sperimentale e Morfologia dei Tumori.

Università degli Studi di Pisa

Country

IT

Keywords
Thyroid CancerMolecular Pathology