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Predicting amplification of MYCN using CpG methylation biomarkers in neuroblastoma.

Abdulazeez GiwaSophia Catherine RossouwAzeez FataiJunaid GamieldienAlan ChristoffelsHocine Bendou
Published in: Future oncology (London, England) (2021)
Background: Neuroblastoma is the most common extracranial solid tumor in childhood. Amplification of MYCN in neuroblastoma is a predictor of poor prognosis. Materials and methods: DNA methylation data from the TARGET data matrix were stratified into MYCN amplified and non-amplified groups. Differential methylation analysis, clustering, recursive feature elimination (RFE), machine learning (ML), Cox regression analysis and Kaplan-Meier estimates were performed. Results and Conclusion: 663 CpGs were differentially methylated between the two groups. A total of 25 CpGs were selected by RFE for clustering and ML, and a 100% clustering accuracy was obtained. ML validation on three external datasets produced high accuracy scores of 100%, 97% and 93%. Eight survival-associated CpGs were also identified. Therapeutic interventions may need to be targeted to patient subgroups.
Keyphrases
  • dna methylation
  • poor prognosis
  • machine learning
  • genome wide
  • rna seq
  • single cell
  • long non coding rna
  • big data
  • nucleic acid
  • young adults
  • artificial intelligence
  • copy number
  • free survival