Genomic and transcriptomic characterization of papillary microcarcinomas with lateral neck lymph node metastases Journal Article


Authors: Perera, D.; Ghossein, R.; Camacho, N.; Senbabaoglu, Y.; Seshan, V.; Li, J.; Bouvier, N.; Boucai, L.; Viale, A.; Socci, N. D.; Untch, B. R.; Gonen, M.; Knauf, J.; Fagin, J. A.; Berger, M.; Tuttle, R. M.
Article Title: Genomic and transcriptomic characterization of papillary microcarcinomas with lateral neck lymph node metastases
Abstract: CONTEXT: Most papillary microcarcinomas (PMCs) are indolent and subclinical. However, as many as 10% can present with clinically significant nodal metastases. OBJECTIVE AND DESIGN: Characterization of the genomic and transcriptomic landscape of PMCs presenting with or without clinically important lymph node metastases. SUBJECTS AND SAMPLES: Formalin-fixed paraffin-embedded PMC samples from 40 patients with lateral neck nodal metastases (pN1b) and 71 patients with PMC with documented absence of nodal disease (pN0). OUTCOME MEASURES: To interrogate DNA alterations in 410 genes commonly mutated in cancer and test for differential gene expression using a custom NanoString panel of 248 genes selected primarily based on their association with tumor size and nodal disease in the papillary thyroid cancer TCGA project. RESULTS: The genomic landscapes of PMC with or without pN1b were similar. Mutations in TERT promoter (3%) and TP53 (1%) were exclusive to N1b cases. Transcriptomic analysis revealed differential expression of 43 genes in PMCs with pN1b compared with pN0. A random forest machine learning-based molecular classifier developed to predict regional lymph node metastasis demonstrated a negative predictive value of 0.98 and a positive predictive value of 0.72 at a prevalence of 10% pN1b disease. CONCLUSIONS: The genomic landscape of tumors with pN1b and pN0 disease was similar, whereas 43 genes selected primarily by mining the TCGA RNAseq data were differentially expressed. This bioinformatics-driven approach to the development of a custom transcriptomic assay provides a basis for a molecular classifier for pN1b risk stratification in PMC. Copyright © 2019 Endocrine Society.
Journal Title: Journal of Clinical Endocrinology and Metabolism
Volume: 104
Issue: 10
ISSN: 0021-972X
Publisher: Oxford University Press  
Date Published: 2019-10-01
Start Page: 4889
End Page: 4899
Language: English
DOI: 10.1210/jc.2019-00431
PUBMED: 31237614
PROVIDER: scopus
PMCID: PMC6733494
DOI/URL:
Notes: Article -- Export Date: 1 October 2019 -- Source: Scopus
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MSK Authors
  1. Venkatraman Ennapadam Seshan
    373 Seshan
  2. James A Fagin
    170 Fagin
  3. Jeffrey A Knauf
    61 Knauf
  4. Ronald A Ghossein
    451 Ghossein
  5. Mithat Gonen
    967 Gonen
  6. Robert M Tuttle
    465 Tuttle
  7. Agnes Viale
    241 Viale
  8. Nancy Bouvier
    68 Bouvier
  9. Nicholas D Socci
    243 Socci
  10. Michael Forman Berger
    707 Berger
  11. Brian Untch
    60 Untch
  12. Juan Li
    2 Li
  13. Laura   Boucai
    43 Boucai
  14. Dilmi Chathurika Perera
    5 Perera