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A Clinically Useful and Biologically Informative Genomic Classifier for Papillary Thyroid Cancer

Abstract

Clinical management of papillary thyroid cancer depends on estimations of prognosis. Standard care, which relies on prognostication based on clinicopathologic features, is inaccurate. We applied a machine learning algorithm () to 502 cases annotated by The Cancer Genome Atlas Project to derive an accurate molecular prognostic classifier. Unsupervised analysis of the 82 genes that were most closely associated with recurrence after surgery enabled the identification of three unique molecular subtypes. One subtype had a high recurrence rate, an immunosuppressed microenvironment, and enrichment of the EZH2-HOTAIR pathway. Two other unique molecular subtypes with a lower rate of recurrence were identified, including one subtype with a paucity of BRAF mutations and a high rate of RAS mutations. The genomic risk classifier, in addition to tumor size and lymph node status, enabled effective prognostication that outperformed the American Thyroid Association clinical risk stratification. The genomic classifier we derived can potentially be applied preoperatively to direct clinical decision-making. Distinct biological features of molecular subtypes also have implications regarding sensitivity to radioactive iodine, EZH2 inhibitors, and immune checkpoint inhibitors.

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PMID: 38028629 PMC: 10643182. DOI: 10.3389/fgene.2023.1282824.

References
1.
Tuttle R, Tala H, Shah J, Leboeuf R, Ghossein R, Gonen M . Estimating risk of recurrence in differentiated thyroid cancer after total thyroidectomy and radioactive iodine remnant ablation: using response to therapy variables to modify the initial risk estimates predicted by the new American Thyroid.... Thyroid. 2010; 20(12):1341-9. PMC: 4845674. DOI: 10.1089/thy.2010.0178. View

2.
Afgan E, Baker D, Batut B, van den Beek M, Bouvier D, cech M . The Galaxy platform for accessible, reproducible and collaborative biomedical analyses: 2018 update. Nucleic Acids Res. 2018; 46(W1):W537-W544. PMC: 6030816. DOI: 10.1093/nar/gky379. View

3.
Castagna M, Maino F, Cipri C, Belardini V, Theodoropoulou A, Cevenini G . Delayed risk stratification, to include the response to initial treatment (surgery and radioiodine ablation), has better outcome predictivity in differentiated thyroid cancer patients. Eur J Endocrinol. 2011; 165(3):441-6. DOI: 10.1530/EJE-11-0466. View

4.
Sciuto R, Romano L, Rea S, Marandino F, Sperduti I, Maini C . Natural history and clinical outcome of differentiated thyroid carcinoma: a retrospective analysis of 1503 patients treated at a single institution. Ann Oncol. 2009; 20(10):1728-35. DOI: 10.1093/annonc/mdp050. View

5.
Craig S, Bysice A, Nakoneshny S, Pasieka J, Chandarana S . The Identification of Intraoperative Risk Factors Can Reduce, but Not Exclude, the Need for Completion Thyroidectomy in Low-Risk Papillary Thyroid Cancer Patients. Thyroid. 2019; 30(2):222-228. PMC: 7047120. DOI: 10.1089/thy.2019.0274. View