This article reviews the state-of-the-art in image-to-image translation, focusing on the evolution of GANs and CycleGAN for medical applications.This article reviews the state-of-the-art in image-to-image translation, focusing on the evolution of GANs and CycleGAN for medical applications.

From CycleGAN to DDPM: Advanced Techniques in Medical Ultrasound Image Synthesis

2025/10/01 22:00
3 min read
For feedback or concerns regarding this content, please contact us at crypto.news@mexc.com

Abstract and 1. Introduction

II. Related Work

III. Methodology

IV. Experiments and Results

V. Conclusion and References

II. RELATED WORK

A. Image-to-image translation

\ Image-to-image translation is a domain of computer vision that focuses on transforming an image from one style or modality to another while preserving its underlying structure. This process is fundamental in various applications, ranging from artistic style transfer to synthesizing realistic datasets.

\ One seminal work in this field is the introduction of the Generative Adversarial Network (GAN) by Goodfellow et al. [7]. The GAN framework involves a dual-network architecture where a generator network competes against a discriminator network, fostering the generation of highly realistic images. Building on this, Zhu et al. introduced CycleGAN [8], which allows for image-to-image translation in the absence of paired examples. In the context of medical imaging, Sun et al. [9] leveraged a double U-Net CycleGAN to enhance the synthesis of CT images from MRI images. Their model incorporates a U-Net-based discriminator that improves the local and global accuracy of synthesized images. Chen et al. [10] introduced a correction network module based on an encoder-decoder structure into a CycleGAN model. Their module incorporates residual connections to efficiently extract latent feature representations from medical images and optimize them to generate higher-quality images.

\ B. Ultrasound image synthesis

\ As for medical ultrasound image synthesis, there have been achieving advancements due to the integration of deep learning techniques, particularly GANs and Denoising Diffusion Probabilistic Models (DDPMs) [11]. Liang et al. [12] employed GANs to generate high-resolution ultrasound images from low-resolution inputs, thereby enhancing image clarity and detail that are crucial for effective medical analysis. Stojanovski et al. [13] introduced a novel approach to generating synthetic ultrasound images through DDPM. Their study leverages cardiac semantic label maps to guide the synthesis process, producing realistic ultrasound images that can substitute for actual data in training deep learning models for tasks like cardiac segmentation.

\ In the specific context of synthesizing ultrasound images from CT images, Vitale et al. [14] proposed a two-stage pipeline. Their method begins with the generation of intermediate synthetic ultrasound images from abdominal CT scans using a ray-casting approach. Then a CycleGAN framework operates by training on unpaired sets of synthetic and real ultrasound images. Song et al. [15] also proposed a CycleGAN based method to synthesize ultrasound images from abundant CT data. Their approach leverages the rich annotations of CT images to enhance the segmentation network learning process. The segmentation networks are initially pretrained on the synthetic dataset, which mimics the properties of ultrasound images while preserving the detailed anatomical features of CT scans. Then they are then fine-tuned on actual ultrasound images to refine their ability to accurately segment kidneys.

\

:::info Authors:

(1) Yuhan Song, School of Information Science, Japan Advanced Institute of Science and Technology, Nomi, Ishikawa 923-1292, Japan (yuhan-s@jaist.ac.jp);

(2) Nak Young Chong, School of Information Science, Japan Advanced Institute of Science and Technology, Nomi, Ishikawa 923-1292, Japan (nakyoung@jaist.ac.jp).

:::


:::info This paper is available on arxiv under ATTRIBUTION-NONCOMMERCIAL-NODERIVS 4.0 INTERNATIONAL license.

:::

\

Market Opportunity
LiveArt Logo
LiveArt Price(ART)
$0.0004903
$0.0004903$0.0004903
-1.00%
USD
LiveArt (ART) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact crypto.news@mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

Bitcoin ETFs Surge with 20,685 BTC Inflows, Marking Strongest Week

Bitcoin ETFs Surge with 20,685 BTC Inflows, Marking Strongest Week

TLDR Bitcoin ETFs recorded their strongest weekly inflows since July, reaching 20,685 BTC. U.S. Bitcoin ETFs contributed nearly 97% of the total inflows last week. The surge in Bitcoin ETF inflows pushed holdings to a new high of 1.32 million BTC. Fidelity’s FBTC product accounted for 36% of the total inflows, marking an 18-month high. [...] The post Bitcoin ETFs Surge with 20,685 BTC Inflows, Marking Strongest Week appeared first on CoinCentral.
Share
Coincentral2025/09/18 02:30
Today’s NYT Pips Hints And Solutions For Thursday, September 18th

Today’s NYT Pips Hints And Solutions For Thursday, September 18th

The post Today’s NYT Pips Hints And Solutions For Thursday, September 18th appeared on BitcoinEthereumNews.com. It’s Thursday and I am incredibly sore and tired after really hitting the weights and the yoga mat hard this week. Sore is good! It takes pain to reduce pain, or at least that’s my experience with exercise. We must exercise our minds as well, and what better way to do that than with a fun puzzle game about placing dominoes in the correct tiles. Come along, my Pipsqueaks, let’s solve today’s Pips! Looking for Wednesday’s Pips? Read our guide right here. How To Play Pips In Pips, you have a grid of multicolored boxes. Each colored area represents a different “condition” that you have to achieve. You have a select number of dominoes that you have to spend filling in the grid. You must use every domino and achieve every condition properly to win. There are Easy, Medium and Difficult tiers. Here’s an example of a difficult tier Pips: Pips example Screenshot: Erik Kain As you can see, the grid has a bunch of symbols and numbers with each color. On the far left, the three purple squares must not equal one another (hence the equal sign crossed out). The two pink squares next to that must equal a total of 0. The zig-zagging blue squares all must equal one another. You click on dominoes to rotate them, and will need to since they have to be rotated to fit where they belong. Not shown on this grid are other conditions, such as “less than” or “greater than.” If there are multiple tiles with > or < signs, the total of those tiles must be greater or less than the listed number. It varies by grid. Blank spaces can have anything. The various possible conditions are: = All pips must equal one another in this group. ≠ All pips…
Share
BitcoinEthereumNews2025/09/18 08:59
Vitalik Buterin to Ethereum Developers: Build It Like It Has to Last Without You

Vitalik Buterin to Ethereum Developers: Build It Like It Has to Last Without You

Key Takeaways Vitalik Buterin wants Ethereum apps built to survive without developers, corporate servers, or trusted third parties Two major […] The post Vitalik
Share
Coindoo2026/03/07 15:49