Project: Standardized Profiling of Epigenetic Loci for decentralized ClAssification of Sinonasal Tumors and idEntification of therapy Response markers

Acronym SPELCASTER (Reference Number: TRANSCAN2023-1858-077)
Duration 01/04/2025 - 31/03/2028
Project Topic Background: Sinonasal and salivary gland tumors represent a complex group of over 40 different types of cancer, sharing an overlapping anatomical compartment and ranging from benign to highly malignant biology. Many tumors show morphologic similarities that present significant challenges to diagnosis and result in substantial diagnostic discrepancy. Further, methods to predict treatment response or to predict tumor progression or metastasis are lacking. Epigenetic classification based on DNA methylation and machine learning has demonstrated tremendous power in unifying diagnostics in brain tumors. A single array-based test can effectively classify between many different types of cancer and allows unprecedented diagnostic harmonization. Hypothesis: We hypothesise that DNA methylation signatures of sinonasal and salivary gland tumors are sufficiently distinct to generate machine-learning classifiers for robust classification. We further propose that implementation of decentralized DNA methylation-based classification can outperform routine pathological workup by improving accuracy and speed of diagnosis and may identify clinically relevant tumor subtypes. We additionally hypothesise that DNA methylation signatures can be used to predict response to chemotherapy and radiotherapy and possibly to predict propensity to progress or develop metastasis. Aims: Primary aim is to provide a unifying classification system for sinonasal and salivary gland tumors that harmonizes diagnostic standards across the participating centres. Secondary aims are to explore spatial and temporal changes in DNA methylation patterns to deepen understanding of tumor progression and metastasis and to explore DNA methylation in relation to clinical outcomes to predict therapy responses. Methods: We have assembled a preliminary DNA methylation reference cohort for sinonasal and salivary gland tumors (795 samples, 37 molecular classes) containing all relevant differential diagnoses of this anatomical compartment. Using this data, we will develop a DNA methylation based classifier and will decentrally validate the algorithm in six independent laboratories on retrospective cases and three clinical trial cohorts. We will further use our collaborative network to assemble relevant numbers of inverted papilloma progressing to sinonasal cancer and tumors developing metastases to study epigenetic changes during these processes. Our large, combined dataset will further be used to perform and validate outcome analyses. Expected results and potential impact: The harmonization of diagnostic classification tools across Europe will enable quality assurance in future clinical management and will facilitate the development of transnational clinical trials. More rapid diagnostics will allow earlier administration of treatment such as induction chemotherapy; the shortened delay itself will be assessed for corresponding benefit in therapy response.
Network TRANSCAN-3
Call 3rd TRANSCAN-3 Joint Call 2023

Project partner