Radiomic profiles improve prognostication and reveal targets for therapy in cervical cancer

Author:

Halle Mari Kyllesø,Hodneland Erlend,Wagner-Larsen Kari S.,Lura Njål G.,Fasmer Kristine E.,Berg Hege F.,Stokowy Tomasz,Srivastava Aashish,Forsse David,Hoivik Erling A.,Woie Kathrine,Bertelsen Bjørn I.,Krakstad Camilla,Haldorsen Ingfrid S.

Abstract

AbstractCervical cancer (CC) is a major global health problem with 570,000 new cases and 266,000 deaths annually. Prognosis is poor for advanced stage disease, and few effective treatments exist. Preoperative diagnostic imaging is common in high-income countries and MRI measured tumor size routinely guides treatment allocation of cervical cancer patients. Recently, the role of MRI radiomics has been recognized. However, its potential to independently predict survival and treatment response requires further clarification. This retrospective cohort study demonstrates how non-invasive, preoperative, MRI radiomic profiling may improve prognostication and tailoring of treatments and follow-ups for cervical cancer patients. By unsupervised clustering based on 293 radiomic features from 132 patients, we identify three distinct clusters comprising patients with significantly different risk profiles, also when adjusting for FIGO stage and age. By linking their radiomic profiles to genomic alterations, we identify putative treatment targets for the different patient clusters (e.g., immunotherapy, CDK4/6 and YAP-TEAD inhibitors and p53 pathway targeting treatments).

Funder

Kreftforeningen

Norges Forskningsråd

Helse Vest

Trond Mohn stiftelse

Bergens Forskningsstiftelse

Norges forsknigsråd

University of Bergen

Publisher

Springer Science and Business Media LLC

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