Biomedicines (May 2020)

RNA Sequencing-Based Identification of Ganglioside GD2-Positive Cancer Phenotype

  • Maxim Sorokin,
  • Irina Kholodenko,
  • Daniel Kalinovsky,
  • Tatyana Shamanskaya,
  • Igor Doronin,
  • Dmitry Konovalov,
  • Aleksei Mironov,
  • Denis Kuzmin,
  • Daniil Nikitin,
  • Sergey Deyev,
  • Anton Buzdin,
  • Roman Kholodenko

DOI
https://doi.org/10.3390/biomedicines8060142
Journal volume & issue
Vol. 8, no. 6
p. 142

Abstract

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The tumor-associated ganglioside GD2 represents an attractive target for cancer immunotherapy. GD2-positive tumors are more responsive to such targeted therapy, and new methods are needed for the screening of GD2 molecular tumor phenotypes. In this work, we built a gene expression-based binary classifier predicting the GD2-positive tumor phenotypes. To this end, we compared RNA sequencing data from human tumor biopsy material from experimental samples and public databases as well as from GD2-positive and GD2-negative cancer cell lines, for expression levels of genes encoding enzymes involved in ganglioside biosynthesis. We identified a 2-gene expression signature combining ganglioside synthase genes ST8SIA1 and B4GALNT1 that serves as a more efficient predictor of GD2-positive phenotype (Matthews Correlation Coefficient (MCC) 0.32, 0.88, and 0.98 in three independent comparisons) compared to the individual ganglioside biosynthesis genes (MCC 0.02–0.32, 0.1–0.75, and 0.04–1 for the same independent comparisons). No individual gene showed a higher MCC score than the expression signature MCC score in two or more comparisons. Our diagnostic approach can hopefully be applied for pan-cancer prediction of GD2 phenotypes using gene expression data.

Keywords