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Prediction of Glioblastoma Multiforme Patient Survival Using MR Image Features and Gene Expression Control/Tracking Number: 11-O-1519-ASNR Nicolasjilwan,

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Presentation on theme: "Prediction of Glioblastoma Multiforme Patient Survival Using MR Image Features and Gene Expression Control/Tracking Number: 11-O-1519-ASNR Nicolasjilwan,"— Presentation transcript:

1 Prediction of Glioblastoma Multiforme Patient Survival Using MR Image Features and Gene Expression Control/Tracking Number: 11-O-1519-ASNR Nicolasjilwan, M.1·Clifford, R.2·Raghavan, P.1·Wintermark, M.1·Hammoud, D.3·Huang, E.4·Jaffe, C.5·Freymann, J.2·Kirby, J.2·Buetow, K.4·Huang, S.6·Holder, C.6·Gutman, D.6·Flanders, A. E.7 1University of Virginia, Charlottesville, VA, 2SAIC-Frederick, Inc., Frederick, MD, 3National Institute of Health, Bethesda, MD, 4National Cancer Institute, Bethesda, MD, 5Boston University School of Medicine, Boston, MA, 6Emory University Hospital, Atlanta, GA, 7Thomas Jefferson University Hospital, Philadelphia, PA.

2 DISCLOSURE Nothing to disclose

3 PURPOSE  Utilize conventional MRI imaging features to predict survival of patients with glioblastoma multiforme (GBM) after initial diagnosis.  Linear regression models incorporating MR imaging features and tumor gene expression to predict patient survival.  Important role in selecting treatment options.

4 Materials & Methods  The study is part of The Cancer Genome Atlas (TCGA) MR imaging (MRI) characterization project of the National Cancer Institute.  MR images for 70 GBM patients made available through the National Biomedical Imaging Archive were reviewed independently by six neuroradiologists.

5  The VASARI feature scoring system for human gliomas, developed at Thomas Jefferson University Hospital, was employed.  30 features clustered by categories. –Lesion Location –Morphology of Lesion Substance –Morphology of Lesion Margin –Alterations in Vicinity of Lesion –Extent of resection   620 genes associated with angiogenesis used in this investigation.

6  Survival was recoded as a binary categorical variable: survival less than or greater than 1 year.  Associations between imaging features and survival were assessed using linear regression models. Survival was the outcome; imaging features were the predictors.

7 Well marginated Non-enhancing F4 Enhancement Quality: 1=None 2=Mild/Minimal 3=Marked/Avid F13 Definition of the non-enhancing margin 1= n/a 2= Smooth 3= Irregular Courtesy Dr Adam Flanders

8 Predominantly Non-enhancing F5 Proportion Enhancing: 1= n/a 2=None (0%) 3= 95% 8=All (100%) Courtesy Dr Adam Flanders

9 RESULTS

10 Univariate Analysis of Association between VASARI features and survival

11  Individually, 6 MRI features show association to survival with an unadjusted p-value < 0.05.  Negative correlation with survival:  Ependymal extension (F19), (P = 0.0012)  Longest dimension of lesion size (F29)  Deep white matter invasion (F21)  The presence of satellites (F24).  Positive correlation with survival:  Location of the tumor in the right (usually non-dominant) hemisphere (F2).  Frontal lobe location (feature F1a), (P = 0.0098).

12 Linear regression models incorporating the most significant VASARI feature, F19 (ependymal extension), and expression of angiogenesis-related genes.  4 genes individually improve the predictive power of F19 (ependymal extension).  Expression of ANG (angiogenin) and TGFB2 (TGF- beta 2) genes negatively correlates with survival.  CCL5 (chemokine (C-C motif) ligand 5) and TNF (tumor necrosis factor) positively correlate with survival.  Feature F19 correctly predicts survival for 72% of the cases. A model based on ependymal extension, CCL5, ANG, TGFB2 and TNF correctly predicts survival for 82% of patients.

13 CONCLUSION  A subset of VASARI imaging features correlate well with patient survival.  Linear regression models incorporating multiple imaging features or a single VASARI feature (ependymal extension) and tumor gene expression can be used to predict patient survival.  We are refining these models and are investigating whether including patient clinical characteristics into linear models can improve their predictive power.

14 AKNOWLEDGMENT University of Virginia SAIC-Frederick National Institute of Health National Cancer Institute Thomas Jefferson University Hospital Emory University Hospital Boston University School of Medicine


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