학술논문

Identification of an Efficient Gene Expression Panel for Glioblastoma Classification.
Document Type
article
Source
PloS one. 11(11)
Subject
Humans
Glioblastoma
Brain Neoplasms
Prognosis
Reproducibility of Results
Gene Expression Profiling
Computational Biology
Genomics
Algorithms
Kaplan-Meier Estimate
Molecular Sequence Annotation
Transcriptome
Web Browser
Datasets as Topic
General Science & Technology
Language
Abstract
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.