TL;DR
This paper introduces CCycleGAN, a novel unpaired ultrasound image translation method that enhances spatial resolution and preserves structural and backscattering properties, improving image quality and analysis of dynamic organs.
Contribution
The study proposes a constrained CycleGAN that incorporates additional loss functions to maintain structural and backscattering fidelity in unpaired ultrasound image translation.
Findings
Improved spatial resolution in generated ultrasound images.
Higher PSNR and SSIM compared to benchmarks.
Enhanced heart wall motion estimation in vivo.
Abstract
Objective. A phased or a curvilinear array produces ultrasound (US) images with a sector field of view (FOV), which inherently exhibits spatially-varying image resolution with inferior quality in the far zone and towards the two sides azimuthally. Sector US images with improved spatial resolutions are favorable for accurate quantitative analysis of large and dynamic organs, such as the heart. Therefore, this study aims to translate US images with spatially-varying resolution to ones with less spatially-varying resolution. CycleGAN has been a prominent choice for unpaired medical image translation; however, it neither guarantees structural consistency nor preserves backscattering patterns between input and generated images for unpaired US images. Approach. To circumvent this limitation, we propose a constrained CycleGAN (CCycleGAN), which directly performs US image generation with…
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Taxonomy
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Residual Connection · Batch Normalization · Residual Block · GAN Least Squares Loss · Tanh Activation · PatchGAN · Instance Normalization · Cycle Consistency Loss · Convolution
