Addition of MR imaging features and genetic biomarkers strengthens glioblastoma survival prediction in TCGA patients

Manal Nicolasjilwan
Ying Hu
Chunhua Yan
Daoud Meerzaman
Chad A. Holder
David Gutman
Rajan Jain, Henry Ford Health System
Rivka Colen
Daniel Rubin
Pascal Zinn
Scott Hwang
Prashant Raghavan
Dima Hammoud
Lisa Scarpace, Henry Ford Health System
Tom Mikkelsen, Henry Ford Health System
James Chen
Olivier Gevaert
Kenneth Buetow
John Freymann
Justin Kirby
Adam E Flanders
Max Wintermark

Abstract

PURPOSE: The purpose of our study was to assess whether a model combining clinical factors, MR imaging features, and genomics would better predict overall survival of patients with glioblastoma (GBM) than either individual data type.

METHODS: The study was conducted leveraging The Cancer Genome Atlas (TCGA) effort supported by the National Institutes of Health. Six neuroradiologists reviewed MRI images from The Cancer Imaging Archive (http://cancerimagingarchive.net) of 102 GBM patients using the VASARI scoring system. The patients' clinical and genetic data were obtained from the TCGA website (http://www.cancergenome.nih.gov/). Patient outcome was measured in terms of overall survival time. The association between different categories of biomarkers and survival was evaluated using Cox analysis.

RESULTS: The features that were significantly associated with survival were: (1) clinical factors: chemotherapy; (2) imaging: proportion of tumor contrast enhancement on MRI; and (3) genomics: HRAS copy number variation. The combination of these three biomarkers resulted in an incremental increase in the strength of prediction of survival, with the model that included clinical, imaging, and genetic variables having the highest predictive accuracy (area under the curve 0.679±0.068, Akaike's information criterion 566.7, P<0.001).

CONCLUSION: A combination of clinical factors, imaging features, and HRAS copy number variation best predicts survival of patients with GBM.