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Multicentre, deep learning, synthetic-CT generation for ano-rectal MR-only radiotherapy treatment planning

D. J. Bird, Michael Nix, H. McCallum, Mark Teo, Alexandra Gilbert, Nathalie Casanova, Rachel Cooper, David L. Buckley, David Sebag‐Montefiore, R. Speight, Bashar Al‐Qaisieh, Ann Henry

2020Radiotherapy and Oncology55 citationsDOIOpen Access PDF

Abstract

BACKGROUND AND PURPOSE: Comprehensive dosimetric analysis is required prior to the clinical implementation of pelvic MR-only sites, other than prostate, due to the limited number of site specific synthetic-CT (sCT) dosimetric assessments in the literature. This study aims to provide a comprehensive assessment of a deep learning-based, conditional generative adversarial network (cGAN) model for a large ano-rectal cancer cohort. The following challenges were investigated; T2-SPACE MR sequences, patient data from multiple centres and the impact of sex and cancer site on sCT quality. METHOD: RT treatment position CT and T2-SPACE MR scans, from two centres, were collected for 90 ano-rectal patients. A cGAN model trained using a focal loss function, was trained and tested on 46 and 44 CT-MR ano-rectal datasets, paired using deformable registration, respectively. VMAT plans were created on CT and recalculated on sCT. Dose differences and gamma indices assessed sCT dosimetric accuracy. A linear mixed effect (LME) model assessed the impact of centre, sex and cancer site. RESULTS: A mean PTV D95% dose difference of 0.1% (range: -0.5% to 0.7%) was found between CT and sCT. All gamma index (1%/1 mm threshold) measurements were >99.0%. The LME model found the impact of modality, cancer site, sex and centre was clinically insignificant (effect ranges: -0.4% and 0.3%). The mean dose difference for all OAR constraints was 0.1%. CONCLUSION: Focal loss cGAN models using T2-SPACE MR sequences from multiple centres can produce generalisable, dosimetrically accurate sCTs for ano-rectal cancers.

Topics & Concepts

MedicineRadiation therapyRadiologyRadiation treatment planningAdvanced Radiotherapy TechniquesProstate Cancer Diagnosis and TreatmentRadiomics and Machine Learning in Medical Imaging