Paired Conditional Generative Adversarial Network for Highly Accelerated Liver 4D MRI
Di Xu, Xin Miao, Hengjie Liu, Jessica E. Scholey, Wensha Yang, Mary, Feng, Michael Ohliger, Hui Lin, Yi Lao, Yang Yang, Ke Sheng

TL;DR
This paper introduces Re-Con-GAN, a novel generative adversarial network that accelerates 4D liver MRI reconstruction, maintaining high image quality and enabling real-time applications for liver cancer radiotherapy.
Contribution
The study presents Re-Con-GAN, a new paired conditional GAN that significantly reduces MRI reconstruction time while preserving image quality, outperforming traditional methods.
Findings
Re-Con-GAN achieves comparable or better image quality metrics than CS/UNet.
Inference time of Re-Con-GAN is approximately 0.15 seconds, vastly faster than traditional methods.
Re-Con-GAN improves GTV detection accuracy in under-sampled MRI data.
Abstract
Purpose: 4D MRI with high spatiotemporal resolution is desired for image-guided liver radiotherapy. Acquiring densely sampling k-space data is time-consuming. Accelerated acquisition with sparse samples is desirable but often causes degraded image quality or long reconstruction time. We propose the Reconstruct Paired Conditional Generative Adversarial Network (Re-Con-GAN) to shorten the 4D MRI reconstruction time while maintaining the reconstruction quality. Methods: Patients who underwent free-breathing liver 4D MRI were included in the study. Fully- and retrospectively under-sampled data at 3, 6 and 10 times (3x, 6x and 10x) were first reconstructed using the nuFFT algorithm. Re-Con-GAN then trained input and output in pairs. Three types of networks, ResNet9, UNet and reconstruction swin transformer, were explored as generators. PatchGAN was selected as the discriminator. Re-Con-GAN…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Brain Tumor Detection and Classification
MethodsPatchGAN
