This article introduces S-CycleGAN, an advanced deep learning model that generates high-quality synthetic ultrasound images from CT data.This article introduces S-CycleGAN, an advanced deep learning model that generates high-quality synthetic ultrasound images from CT data.

Overcoming Data Scarcity: Semantic-Enhanced CycleGAN for Medical Ultrasound Synthesis

Abstract and 1. Introduction

II. Related Work

III. Methodology

IV. Experiments and Results

V. Conclusion and References

\ Abstract— Ultrasound imaging is pivotal in various medical diagnoses due to its non-invasive nature and safety. In clinical practice, the accuracy and precision of ultrasound image analysis are critical. Recent advancements in deep learning are showing great capacity of processing medical images. However, the data hungry nature of deep learning and the shortage of high-quality ultrasound image training data suppress the development of deep learning-based ultrasound analysis methods. To address these challenges, we introduce an advanced deep learning model, dubbed S-CycleGAN, which generates high-quality synthetic ultrasound images from computed tomography (CT) data. This model incorporates semantic discriminators within a CycleGAN framework to ensure that critical anatomical details are preserved during the style transfer process. The synthetic images produced are used to augment training datasets for semantic segmentation models and robot-assisted ultrasound scanning system development, enhancing their ability to accurately parse real ultrasound imagery. The data and code will be available at https://github.com/yhsong98/ct-us-i2i-translation

I. INTRODUCTION

Ultrasound imaging is one of the most widely implemented medical imaging modalities, offering a versatile, noninvasive, and cost-effective method for visualizing the internal structures of the body in real-time. Although ultrasound imaging is safe and convenient, analyzing these images presents considerable challenges due to factors such as low contrast, acoustic shadows, and speckles [1]. Deep learning based medical image processing methods have made great breakthroughs in recent years and have been the state-of-the-art tool for medical image processing applications in various fields, including detection, segmentation, classification, and synthesis [2].

\ Nonetheless, due to the data-hungry nature of deep learning, the performance of those methods relies heavily on a large amount of image data and manual annotations. While progress in unsupervised learning techniques and the emergence of large-scale open-source image datasets have mitigated these issues somewhat, these solutions are less applicable in the field of medical image processing [3]. This discrepancy is mainly due to several factors: First, medical images require precise and reliable annotations, which must often be provided by expert clinicians, making the process time-consuming and expensive. Second, patient privacy concerns limit the availability and sharing of medical datasets. Third, the variability in medical imaging equipment and protocols across different healthcare facilities can lead to inconsistencies in the data, complicating the development of generalized models. Lastly, the high dimensionality and complexity of medical images demand larger and more diverse datasets to train effective models, which are not always feasible to compile in the medical field.

\ Along the lines, we are building a fully automated robot assisted ultrasound scan system (RUSS). This platform is designed to perform abdominal ultrasound scans without any human intervention (Fig. 1). Thus we have proposed several versions of ultrasound image segmentation algorithms as evaluation metrics for the robot arm movements [4], [5], [6]. However, our prior efforts have been restricted by limited data sources. While our segmentation algorithms have demonstrated effectiveness within our experimental datasets, we anticipate that training our model with a more diverse array of data would enhance its robustness and applicability. Furthermore, we aim to create a simulation environment to facilitate the development of our RUSS, allowing for refined testing and optimization under controlled conditions. A pre-operative 3D model reconstructed from CT scans are planned to be utilized as the scan target. Based on the current contact point and angle of the virtual ultrasound probe, the system will generate and provide a corresponding ultrasound image as feedback. This integration will enable the RUSS to simulate realistic scanning scenarios, allowing for precise alignment and positioning adjustments that reflect actual clinical procedures.

\ Fig. 1: Our robot-assisted ultrasound imaging system

\ In this research, we proposed a semantically enhanced CycleGAN, dubbed S-CycleGAN. By adding additional segmentation models as semantic discriminators, together arXiv:2406.01191v1 [eess.IV] 3 Jun 2024 with the original style discriminator, the proposed model is capable of transferring the style of CT slice to the ultrasound domain while keeping the transformed image semantically consistent with the source image.

\

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

:::

:::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).

:::

\

Market Opportunity
SCARCITY Logo
SCARCITY Price(SCARCITY)
$0.01463
$0.01463$0.01463
-1.81%
USD
SCARCITY (SCARCITY) 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 service@support.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

When is the flash US S&P Global PMI data and how could it affect EUR/USD?

When is the flash US S&P Global PMI data and how could it affect EUR/USD?

The post When is the flash US S&P Global PMI data and how could it affect EUR/USD? appeared on BitcoinEthereumNews.com. US flash PMI Overview The preliminary United
Share
BitcoinEthereumNews2026/01/23 20:54
BetFury is at SBC Summit Lisbon 2025: Affiliate Growth in Focus

BetFury is at SBC Summit Lisbon 2025: Affiliate Growth in Focus

The post BetFury is at SBC Summit Lisbon 2025: Affiliate Growth in Focus appeared on BitcoinEthereumNews.com. Press Releases are sponsored content and not a part of Finbold’s editorial content. For a full disclaimer, please . Crypto assets/products can be highly risky. Never invest unless you’re prepared to lose all the money you invest. Curacao, Curacao, September 17th, 2025, Chainwire BetFury steps onto the stage of SBC Summit Lisbon 2025 — one of the key gatherings in the iGaming calendar. From 16 to 18 September, the platform showcases its brand strength, deepens affiliate connections, and outlines its plans for global expansion. BetFury continues to play a role in the evolving crypto and iGaming partnership landscape. BetFury’s Participation at SBC Summit The SBC Summit gathers over 25,000 delegates, including 6,000+ affiliates — the largest concentration of affiliate professionals in iGaming. For BetFury, this isn’t just visibility, it’s a strategic chance to present its Affiliate Program to the right audience. Face-to-face meetings, dedicated networking zones, and affiliate-focused sessions make Lisbon the ideal ground to build new partnerships and strengthen existing ones. BetFury Meets Affiliate Leaders at its Massive Stand BetFury arrives at the summit with a massive stand placed right in the center of the Affiliate zone. Designed as a true meeting hub, the stand combines large LED screens, a sleek interior, and the best coffee at the event — but its core mission goes far beyond style. Here, BetFury’s team welcomes partners and affiliates to discuss tailored collaborations, explore growth opportunities across multiple GEOs, and expand its global Affiliate Program. To make the experience even more engaging, the stand also hosts: Affiliate Lottery — a branded drum filled with exclusive offers and personalized deals for affiliates. Merch Kits — premium giveaways to boost brand recognition and leave visitors with a lasting conference memory. Besides, at SBC Summit Lisbon, attendees have a chance to meet the BetFury team along…
Share
BitcoinEthereumNews2025/09/18 01:20
Wizkid & Asake’s ‘Jogodo’ becomes fastest African song to surpass 10 million streams on Spotify

Wizkid & Asake’s ‘Jogodo’ becomes fastest African song to surpass 10 million streams on Spotify

Wizkid and Asake have set a new record with their latest collaboration, “Jogodo,” which crossed 10 million Spotify… The post Wizkid & Asake’s ‘Jogodo’ becomes fastest
Share
Technext2026/01/23 21:27