PLoS ONE (Jan 2013)

Discriminating survival outcomes in patients with glioblastoma using a simulation-based, patient-specific response metric.

  • Maxwell Lewis Neal,
  • Andrew D Trister,
  • Tyler Cloke,
  • Rita Sodt,
  • Sunyoung Ahn,
  • Anne L Baldock,
  • Carly A Bridge,
  • Albert Lai,
  • Timothy F Cloughesy,
  • Maciej M Mrugala,
  • Jason K Rockhill,
  • Russell C Rockne,
  • Kristin R Swanson

DOI
https://doi.org/10.1371/journal.pone.0051951
Journal volume & issue
Vol. 8, no. 1
p. e51951

Abstract

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Accurate clinical assessment of a patient's response to treatment for glioblastoma multiforme (GBM), the most malignant type of primary brain tumor, is undermined by the wide patient-to-patient variability in GBM dynamics and responsiveness to therapy. Using computational models that account for the unique geometry and kinetics of individual patients' tumors, we developed a method for assessing treatment response that discriminates progression-free and overall survival following therapy for GBM. Applying these models as untreated virtual controls, we generate a patient-specific "Days Gained" response metric that estimates the number of days a therapy delayed imageable tumor progression. We assessed treatment response in terms of Days Gained scores for 33 patients at the time of their first MRI scan following first-line radiation therapy. Based on Kaplan-Meier analyses, patients with Days Gained scores of 100 or more had improved progression-free survival, and patients with scores of 117 or more had improved overall survival. Our results demonstrate that the Days Gained response metric calculated at the routinely acquired first post-radiation treatment time point provides prognostic information regarding progression and survival outcomes. Applied prospectively, our model-based approach has the potential to improve GBM treatment by accounting for patient-to-patient heterogeneity in GBM dynamics and responses to therapy.