PLoS ONE (Jan 2016)

Identification of an Efficient Gene Expression Panel for Glioblastoma Classification.

  • Thomas J Crisman,
  • Ivette Zelaya,
  • Dan R Laks,
  • Yining Zhao,
  • Riki Kawaguchi,
  • Fuying Gao,
  • Harley I Kornblum,
  • Giovanni Coppola

DOI
https://doi.org/10.1371/journal.pone.0164649
Journal volume & issue
Vol. 11, no. 11
p. e0164649

Abstract

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We present here a novel genetic algorithm-based random forest (GARF) modeling technique that enables a reduction in the complexity of large gene disease signatures to highly accurate, greatly simplified gene panels. When applied to 803 glioblastoma multiforme samples, this method allowed the 840-gene Verhaak et al. gene panel (the standard in the field) to be reduced to a 48-gene classifier, while retaining 90.91% classification accuracy, and outperforming the best available alternative methods. Additionally, using this approach we produced a 32-gene panel which allows for better consistency between RNA-seq and microarray-based classifications, improving cross-platform classification retention from 69.67% to 86.07%. A webpage producing these classifications is available at http://simplegbm.semel.ucla.edu.