Radiogenomic-Based Survival Risk Stratification of Tumor Habitat on Gd-T1w MRI Is Associated with Biological Processes in Glioblastoma

Niha Beig(Case Western Reserve University), Kaustav Bera(Case Western Reserve University), Prateek Prasanna(Case Western Reserve University), Jacob Antunes(Case Western Reserve University), Ramón Correa(Case Western Reserve University), Salendra Singh(Case Western Reserve University), Anas Saeed Bamashmos(Cleveland Clinic), Marwa Ismail(Case Western Reserve University), Nathaniel Braman(Case Western Reserve University), Ruchika Verma(Case Western Reserve University), Virginia Hill(Northwestern University), Volodymyr Statsevych(Cleveland Clinic), Manmeet S. Ahluwalia(Cleveland Clinic), Vinay Varadan(Case Western Reserve University), Anant Madabhushi(Louis Stokes Cleveland VA Medical Center), Pallavi Tiwari(Case Western Reserve University)
Clinical Cancer Research
February 20, 2020
Cited by 134Open Access
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Abstract

Abstract Purpose: To (i) create a survival risk score using radiomic features from the tumor habitat on routine MRI to predict progression-free survival (PFS) in glioblastoma and (ii) obtain a biological basis for these prognostic radiomic features, by studying their radiogenomic associations with molecular signaling pathways. Experimental Design: Two hundred three patients with pretreatment Gd-T1w, T2w, T2w-FLAIR MRI were obtained from 3 cohorts: The Cancer Imaging Archive (TCIA; n = 130), Ivy GAP (n = 32), and Cleveland Clinic (n = 41). Gene-expression profiles of corresponding patients were obtained for TCIA cohort. For every study, following expert segmentation of tumor subcompartments (necrotic core, enhancing tumor, peritumoral edema), 936 3D radiomic features were extracted from each subcompartment across all MRI protocols. Using Cox regression model, radiomic risk score (RRS) was developed for every protocol to predict PFS on the training cohort (n = 130) and evaluated on the holdout cohort (n = 73). Further, Gene Ontology and single-sample gene set enrichment analysis were used to identify specific molecular signaling pathway networks associated with RRS features. Results: Twenty-five radiomic features from the tumor habitat yielded the RRS. A combination of RRS with clinical (age and gender) and molecular features (MGMT and IDH status) resulted in a concordance index of 0.81 (P < 0.0001) on training and 0.84 (P = 0.03) on the test set. Radiogenomic analysis revealed associations of RRS features with signaling pathways for cell differentiation, cell adhesion, and angiogenesis, which contribute to chemoresistance in GBM. Conclusions: Our findings suggest that prognostic radiomic features from routine Gd-T1w MRI may also be significantly associated with key biological processes that affect response to chemotherapy in GBM.


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