Inicio  /  Applied Sciences  /  Vol: 13 Par: 11 (2023)  /  Artículo
ARTÍCULO
TITULO

End-to-End 3D Liver CT Image Synthesis from Vasculature Using a Multi-Task Conditional Generative Adversarial Network

Qianmu Xiao and Liang Zhao    

Resumen

Acquiring relevant, high-quality, and heterogeneous medical images is essential in various types of automated analysis, used for a variety of downstream data augmentation tasks. However, a large number of real image samples are expensive to obtain, especially for 3D medical images. Therefore, there is an urgent need to synthesize realistic 3D medical images. However, the existing generator models have poor stability and lack the guidance of prior medical knowledge. To this end, we propose a multi-task (i.e., segmentation task and generation task) 3D generative adversarial network (GAN) for the synthesis of 3D liver CT images (3DMT-GAN). To the best of our knowledge, this is the first application for a 3D liver CT image synthesis task. Specifically, we utilize a mask of vascular segmentation as the input because it contains structural information about a variety of rich anatomical structures. We use the semantic mask of the liver as prior medical knowledge to guide the 3D CT image generation, reducing the calculation of a large number of backgrounds, thus making the model more focused on the generation of the region of the liver. In addition, we introduce a stable multiple gradient descent algorithm (MGDA) reconstruction method into our model to balance the weights of the multi-task framework. Experiments were conducted on a real dataset, and the experimental results show that the segmentation task achieves a Dice similarity coefficient (DSC) of 0.87, while the synthesis task outperforms existing state-of-the-art methods. This study demonstrates the feasibility of using vascular images to synthesize images of the liver.

 Artículos similares

       
 
Luana Conte, Emanuele Rizzo, Tiziana Grassi, Francesco Bagordo, Elisabetta De Matteis and Giorgio De Nunzio    
Pedigree charts remain essential in oncological genetic counseling for identifying individuals with an increased risk of developing hereditary tumors. However, this valuable data source often remains confined to paper files, going unused. We propose a co... ver más
Revista: Computation

 
Moiz Hassan, Kandasamy Illanko and Xavier N. Fernando    
Single Image Super Resolution (SSIR) is an intriguing research topic in computer vision where the goal is to create high-resolution images from low-resolution ones using innovative techniques. SSIR has numerous applications in fields such as medical/sate... ver más
Revista: AI

 
Mohammad Alhumaid and Ayman G. Fayoumi    
Paranasal sinus pathologies, particularly those affecting the maxillary sinuses, pose significant challenges in diagnosis and treatment due to the complex anatomical structures and diverse disease manifestations. The aim of this study is to investigate t... ver más
Revista: Applied Sciences

 
Woonghee Lee and Younghoon Kim    
This study introduces a deep-learning-based framework for detecting adversarial attacks in CT image segmentation within medical imaging. The proposed methodology includes analyzing features from various layers, particularly focusing on the first layer, a... ver más
Revista: Applied Sciences

 
Hassen Louati, Ali Louati, Rahma Lahyani, Elham Kariri and Abdullah Albanyan    
Responding to the critical health crisis triggered by respiratory illnesses, notably COVID-19, this study introduces an innovative and resource-conscious methodology for analyzing chest X-ray images. We unveil a cutting-edge technique that marries neural... ver más
Revista: Information