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Multi-resolution Guided 3D GANs for Medical Image Translation

About

Medical image translation is the process of converting from one imaging modality to another, in order to reduce the need for multiple image acquisitions from the same patient. This can enhance the efficiency of treatment by reducing the time, equipment, and labor needed. In this paper, we introduce a multi-resolution guided Generative Adversarial Network (GAN)-based framework for 3D medical image translation. Our framework uses a 3D multi-resolution Dense-Attention UNet (3D-mDAUNet) as the generator and a 3D multi-resolution UNet as the discriminator, optimized with a unique combination of loss functions including voxel-wise GAN loss and 2.5D perception loss. Our approach yields promising results in volumetric image quality assessment (IQA) across a variety of imaging modalities, body regions, and age groups, demonstrating its robustness. Furthermore, we propose a synthetic-to-real applicability assessment as an additional evaluation to assess the effectiveness of synthetic data in downstream applications such as segmentation. This comprehensive evaluation shows that our method produces synthetic medical images not only of high-quality but also potentially useful in clinical applications. Our code is available at github.com/juhha/3D-mADUNet.

Juhyung Ha, Jong Sung Park, David Crandall, Eleftherios Garyfallidis, Xuhong Zhang• 2024

Related benchmarks

TaskDatasetResultRank
Tumor SegmentationBraTS 23
DSC86.18
39
MRI SynthesisBraTS 2023
PSNR (dB)28.314
38
MRI SynthesisBraTS T2f 2023
MFD0.9261
10
MRI SynthesisBraTS T1c 2023
MFD1.4672
10
Brain MR Image SynthesisBraTS 2023
PSNR21.03
10
MRI SynthesisBraTS T1n 2023
MFD1.4439
10
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