SynthRAD2025 Grand Challenge dataset: generating synthetic CTs for radiotherapy
Adrian Thummerer, Erik van der Bijl, Arthur Jr Galapon, Florian Kamp, Mark Savenije, Christina Muijs, Shafak Aluwini, Roel J.H.M. Steenbakkers, Stephanie Beuel, Martijn P.W. Intven, Johannes A. Langendijk, Stefan Both, Stefanie Corradini, Viktor Rogowski, Maarten Terpstra

TL;DR
The paper introduces the SynthRAD2025 dataset and Grand Challenge, providing a comprehensive benchmark platform with diverse medical imaging data to advance synthetic CT generation for radiotherapy applications.
Contribution
It presents a large, multi-center dataset with high-quality, registered MRI, CBCT, and CT images, enabling standardized benchmarking of synthetic imaging algorithms in radiotherapy.
Findings
Dataset includes 2362 cases from multiple European centers.
Provides high-quality, registered multimodal imaging data.
Supports development of robust, generalizable sCT algorithms.
Abstract
Medical imaging is essential in modern radiotherapy, supporting diagnosis, treatment planning, and monitoring. Synthetic imaging, particularly synthetic computed tomography (sCT), is gaining traction in radiotherapy. The SynthRAD2025 dataset and Grand Challenge promote advancements in sCT generation by providing a benchmarking platform for algorithms using cone-beam CT (CBCT) and magnetic resonance imaging (MRI). The dataset includes 2362 cases: 890 MRI-CT and 1472 CBCT-CT pairs from head-and-neck, thoracic, and abdominal cancer patients treated at five European university medical centers (UMC Groningen, UMC Utrecht, Radboud UMC, LMU University Hospital Munich, and University Hospital of Cologne). Data were acquired with diverse scanners and protocols. Pre-processing, including rigid and deformable image registration, ensures high-quality, modality-aligned images. Extensive quality…
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