| Literature DB >> 33564068 |
Dvir Netanely1, Stav Leibou2, Roma Parikh2, Neta Stern1, Hananya Vaknine3, Ronen Brenner3, Sarah Amar3, Rivi Haiat Factor4, Tomer Perluk4, Jacob Frand4, Eran Nizri2,5, Dov Hershkovitz2,6, Valentina Zemser-Werner6, Carmit Levy2, Ron Shamir7.
Abstract
Cutaneous melanoma tumors are heterogeneous and show diverse responses to treatment. Identification of robust molecular biomarkers for classifying melanoma tumors into clinically distinct and homogenous subtypes is crucial for improving the diagnosis and treatment of the disease. In this study, we present a classification of melanoma tumors into four subtypes with different survival profiles based on three distinct gene expression signatures: keratin, immune, and melanogenesis. The melanogenesis expression pattern includes several genes that are characteristic of the melanosome organelle and correlates with worse survival, suggesting the involvement of melanosomes in melanoma aggression. We experimentally validated the secretion of melanosomes into surrounding tissues by melanoma tumors, which potentially affects the lethality of metastasis. We propose a simple molecular decision tree classifier for predicting a tumor's subtype based on representative genes from the three identified signatures. Key predictor genes were experimentally validated on melanoma samples taken from patients with varying survival outcomes. Our three-pattern approach for classifying melanoma tumors can contribute to advancing the understanding of melanoma variability and promote accurate diagnosis, prognostication, and treatment.Entities:
Year: 2021 PMID: 33564068 PMCID: PMC7946641 DOI: 10.1038/s41388-021-01665-0
Source DB: PubMed Journal: Oncogene ISSN: 0950-9232 Impact factor: 9.867