Deep radiomic features from MRI scans predict survival outcome of recurrent glioblastoma

November 15, 2019 Β· Declared Dead Β· πŸ› RNO-AI@MICCAI

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Authors Ahmad Chaddad, Saima Rathore, Mingli Zhang, Christian Desrosiers, Tamim Niazi arXiv ID 1911.06687 Category cs.CV: Computer Vision Cross-listed eess.IV, q-bio.QM Citations 13 Venue RNO-AI@MICCAI Last Checked 4 months ago
Abstract
This paper proposes to use deep radiomic features (DRFs) from a convolutional neural network (CNN) to model fine-grained texture signatures in the radiomic analysis of recurrent glioblastoma (rGBM). We use DRFs to predict survival of rGBM patients with preoperative T1-weighted post-contrast MR images (n=100). DRFs are extracted from regions of interest labelled by a radiation oncologist and used to compare between short-term and long-term survival patient groups. Random forest (RF) classification is employed to predict survival outcome (i.e., short or long survival), as well as to identify highly group-informative descriptors. Classification using DRFs results in an area under the ROC curve (AUC) of 89.15% (p<0.01) in predicting rGBM patient survival, compared to 78.07% (p<0.01) when using standard radiomic features (SRF). These results indicate the potential of DRFs as a prognostic marker for patients with rGBM.
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