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Patient-Derived Organoids Capture Histological, Molecular And Therapeutic Heterogeneity In Pharyngeal And Laryngeal Squamous Cell Carcinomas

Alvarez-Gonzalez, M.; Pozo-Agundo, E.; de Luxan-Delgado, B.; Codina-Martinez, H.; Gallego, B.; Otero-Rosales, M.; Rivera-Garcia, I.; Blazquez, A.; Rodriguez-Santamaria, M.; Corte-Torres, D.; Alvarez-Teijeiro, S.; Blanco-Parajon, S.; Lopez, F.; Hermida-Prado, F.; Rodriguez, R.; Astudillo, A.; Garcia-Pedrero, J. -M.; Fernandez-Vega, I.; Rodrigo, J. P.; Alvarez-Fernandez, M.

2026-03-26 cancer biology
10.64898/2026.03.24.713954 bioRxiv
Show abstract

BackgroundHead and neck squamous cell carcinoma (HNSCC) comprises a heterogeneous group of epithelial malignancies associated with poor survival ({approx}50%), limited therapeutic options, and a lack of predictive biomarkers. Concurrent chemoradiotherapy (CRT) remains the standard treatment for advanced disease; however, many patients fail to respond, develop resistance, or eventually relapse. The development of three-dimensional organoid technology has enabled the generation of patient-derived organoids (PDOs), offering a promising platform for personalized therapeutic testing. MethodsWe established a biobank of HNSCC PDOs from fresh laryngeal and pharyngeal tumor samples, including human papillomavirus-positive (HPV+) cases. Organoid formation and expansion rates were analyzed in relation to clinical parameters. Selected representative PDOs were histologically and molecularly characterized. Additionally, several models were exposed to cisplatin and radiation to evaluate treatment response, and a subset was assessed for tumorigenicity in subcutaneous mouse models. ResultsFifty-seven PDO models were successfully established, long-term expanded, and cryopreserved. Prior chemotherapy and/or radiotherapy was identified as an independent negative predictor of organoid outgrowth and expansion capacity compared with treatment-naive samples. Histological features, including differentiation grade and immunohistochemical markers, were largely preserved and strongly correlated with the original tumors. PDOs displayed heterogeneous responses to cisplatin and radiotherapy, with HPV-positive models showing greater sensitivity, consistent with clinical observations. Global transcriptomic profiling revealed molecular subtypes concordant with established HNSCC classifications and suggested an additional subtype characterized by low MYC and mTORC1 transcriptional activity. ConclusionHNSCC PDOs faithfully recapitulate tumor histology and molecular diversity, providing a robust platform to investigate tumor biology and therapeutic response.

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