GANeXt: A Fully ConvNeXt-Enhanced Generative Adversarial Network for MRI- and CBCT-to-CT Synthesis
Siyuan Mei, Yan Xia, Fuxin Fan, Andreas Maier

TL;DR
GANeXt introduces a fully ConvNeXt-enhanced GAN architecture for accurate MRI- and CBCT-to-CT synthesis, improving clinical treatment planning with a unified, high-quality image generation approach.
Contribution
This work presents a novel 3D patch-based GAN with ConvNeXt blocks for unified CT synthesis across modalities and regions, incorporating advanced loss functions and training strategies.
Findings
Achieved high-quality CT synthesis across MRI and CBCT modalities.
Improved synthesis accuracy with combined loss functions and training techniques.
Demonstrated effectiveness on diverse anatomical regions without fine-tuning.
Abstract
The synthesis of computed tomography (CT) from magnetic resonance imaging (MRI) and cone-beam CT (CBCT) plays a critical role in clinical treatment planning by enabling accurate anatomical representation in adaptive radiotherapy. In this work, we propose GANeXt, a 3D patch-based, fully ConvNeXt-powered generative adversarial network for unified CT synthesis across different modalities and anatomical regions. Specifically, GANeXt employs an efficient U-shaped generator constructed from stacked 3D ConvNeXt blocks with compact convolution kernels, while the discriminator adopts a conditional PatchGAN. To improve synthesis quality, we incorporate a combination of loss functions, including mean absolute error (MAE), perceptual loss, segmentation-based masked MAE, and adversarial loss and a combination of Dice loss and cross-entropy for multi-head segmentation discriminator. For both tasks,…
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Taxonomy
TopicsAdvanced Radiotherapy Techniques · Generative Adversarial Networks and Image Synthesis · Advanced Neural Network Applications
