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A radiogenomics application for prognostic profiling of endometrial cancer

Erling A. Høivik, Erlend Hodneland, Julie A. Dybvik, Kari S. Wagner‐Larsen, Kristine E. Fasmer, Hege F. Berg, Mari K. Halle, Ingfrid S. Haldorsen, Camilla Krakstad

2021Communications Biology35 citationsDOIOpen Access PDF

Abstract

Prognostication is critical for accurate diagnosis and tailored treatment in endometrial cancer (EC). We employed radiogenomics to integrate preoperative magnetic resonance imaging (MRI, n = 487 patients) with histologic-, transcriptomic- and molecular biomarkers (n = 550 patients) aiming to identify aggressive tumor features in a study including 866 EC patients. Whole-volume tumor radiomic profiling from manually (radiologists) segmented tumors (n = 138 patients) yielded clusters identifying patients with high-risk histological features and poor survival. Radiomic profiling by a fully automated machine learning (ML)-based tumor segmentation algorithm (n = 336 patients) reproduced the same radiomic prognostic groups. From these radiomic risk-groups, an 11-gene high-risk signature was defined, and its prognostic role was reproduced in orthologous validation cohorts (n = 554 patients) and aligned with The Cancer Genome Atlas (TCGA) molecular class with poor survival (copy-number-high/p53-altered). We conclude that MRI-based integrated radiogenomics profiling provides refined tumor characterization that may aid in prognostication and guide future treatment strategies in EC.

Topics & Concepts

RadiogenomicsMedicineProfiling (computer programming)Magnetic resonance imagingOncologyEndometrial cancerInternal medicineRadiologyBioinformaticsCancerRadiomicsBiologyComputer scienceOperating systemRadiomics and Machine Learning in Medical ImagingEndometrial and Cervical Cancer TreatmentsSarcoma Diagnosis and Treatment
A radiogenomics application for prognostic profiling of endometrial cancer | Litcius