Literature DB >> 33845354

Transcriptional signatures underlying dynamic phenotypic switching and novel disease biomarkers in a linear cellular model of melanoma progression.

Diogo de Oliveira Pessoa1, Flávia Eichemberger Rius2, Debora D'Angelo Papaiz2, Ana Luísa Pedroso Ayub2, Alice Santana Morais2, Camila Ferreira de Souza2, Vinicius Ferreira da Paixão1, João Carlos Setubal1, Julia Newton-Bishop3, Jérémie Nsengimana3, Hatylas Azevedo4, Eduardo Moraes Reis5, Miriam Galvonas Jasiulionis6.   

Abstract

Despite advances in therapeutics, the progression of melanoma to metastasis still confers a poor outcome to patients. Nevertheless, there is a scarcity of biological models to understand cellular and molecular changes taking place along disease progression. Here, we characterized the transcriptome profiles of a multi-stage murine model of melanoma progression comprising a nontumorigenic melanocyte lineage (melan-a), premalignant melanocytes (4C), nonmetastatic (4C11-) and metastasis-prone (4C11+) melanoma cells. Clustering analyses have grouped the 4 cell lines according to their differentiated (melan-a and 4C11+) or undifferentiated/"mesenchymal-like" (4C and 4C11-) morphologies, suggesting dynamic gene expression patterns associated with the transition between these phenotypes. The cell plasticity observed in the murine melanoma progression model was corroborated by molecular markers described during stepwise human melanoma differentiation, as the differentiated cell lines in our model exhibit upregulation of transitory and melanocytic markers, whereas "mesenchymal-like" cells show increased expression of undifferentiated and neural crest-like markers. Sets of differentially expressed genes (DEGs) were detected at each transition step of tumor progression, and transcriptional signatures related to malignancy, metastasis and epithelial-to-mesenchymal transition were identified. Finally, DEGs were mapped to their human orthologs and evaluated in uni- and multivariate survival analyses using gene expression and clinical data of 703 drug-naïve primary melanoma patients, revealing several independent candidate prognostic markers. Altogether, these results provide novel insights into the molecular mechanisms underlying the phenotypic switch taking place during melanoma progression, reveal potential drug targets and prognostic biomarkers, and corroborate the translational relevance of this unique sequential model of melanoma progression.
Copyright © 2021 The Authors. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  EMT; Malignancy; Melanoma; Metastasis; Phenotype switch; Prognosis

Year:  2021        PMID: 33845354     DOI: 10.1016/j.neo.2021.03.007

Source DB:  PubMed          Journal:  Neoplasia        ISSN: 1476-5586            Impact factor:   5.715


  4 in total

1.  Genome-wide promoter methylation profiling in a cellular model of melanoma progression reveals markers of malignancy and metastasis that predict melanoma survival.

Authors:  Flávia E Rius; Debora D Papaiz; Hatylas F Z Azevedo; Ana Luísa P Ayub; Diogo O Pessoa; Tiago F Oliveira; Ana Paula M Loureiro; Fernando Andrade; André Fujita; Eduardo M Reis; Christopher E Mason; Miriam G Jasiulionis
Journal:  Clin Epigenetics       Date:  2022-05-23       Impact factor: 7.259

2.  Genes regulated by DNA methylation are involved in distinct phenotypes during melanoma progression and are prognostic factors for patients.

Authors:  Debora D'Angelo Papaiz; Flávia Eichemberger Rius; Ana Luísa Pedroso Ayub; Clarice S Origassa; Hemant Gujar; Diogo de Oliveira Pessoa; Eduardo Moraes Reis; Jérémie Nsengimana; Julia Newton-Bishop; Christopher E Mason; Daniel J Weisenberger; Gangning Liang; Miriam Galvonas Jasiulionis
Journal:  Mol Oncol       Date:  2022-02-04       Impact factor: 7.449

Review 3.  Revisiting miRNA Association with Melanoma Recurrence and Metastasis from a Machine Learning Point of View.

Authors:  Aigli Korfiati; Katerina Grafanaki; George C Kyriakopoulos; Ilias Skeparnias; Sophia Georgiou; George Sakellaropoulos; Constantinos Stathopoulos
Journal:  Int J Mol Sci       Date:  2022-01-24       Impact factor: 5.923

4.  Comprehensive Gene Expression Analysis to Identify Differences and Similarities between Sex- and Stage-Stratified Melanoma Samples.

Authors:  Eirini Chrysanthou; Emir Sehovic; Paola Ostano; Giovanna Chiorino
Journal:  Cells       Date:  2022-03-24       Impact factor: 6.600

  4 in total

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