A REAL-TIME MEDICAL ULTRASOUND SIMULATOR BASED ON A GENERATIVE ADVERSARIAL NETWORK MODEL.

Bo Peng, Xing Huang, Shiyuan Wang, Jingfeng Jiang
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引用次数: 12

Abstract

This paper presents an artificial intelligence-based ultrasound simulator suitable for medical simulation and clinical training. Particularly, we propose a machine learning approach to realistically simulate ultrasound images based on generative adversarial networks (GANs). Using B-mode ultrasound images simulated by a known ultrasound simulator, Field II, an "image-to-image" ultrasound simulator was trained. Then, through evaluations, we found that the GAN-based simulator can generate B-mode images following Rayleigh scattering. Our preliminary study demonstrated that ultrasound B-mode images from anatomies inferred from magnetic resonance imaging (MRI) data were feasible. While some image blurring was observed, ultrasound B- mode images obtained were both visually and quantitatively comparable to those obtained using the Field II simulator. It is also important to note that the GAN-based ultrasound simulator was computationally efficient and could achieve a frame rate of 15 frames/second using a regular laptop computer. In the future, the proposed GAN-based simulator will be used to synthesize more realistic looking ultrasound images with artifacts such as shadowing.

Abstract Image

Abstract Image

Abstract Image

基于生成对抗网络模型的实时医学超声模拟器。
本文提出了一种基于人工智能的超声模拟器,适用于医学模拟和临床训练。特别地,我们提出了一种基于生成对抗网络(GANs)的机器学习方法来逼真地模拟超声图像。利用已知超声模拟器Field II模拟的b型超声图像,训练了一个“图像到图像”的超声模拟器。然后,通过评估,我们发现基于gan的模拟器可以生成瑞利散射后的b模式图像。我们的初步研究表明,从磁共振成像(MRI)数据推断解剖的超声b型图像是可行的。虽然观察到一些图像模糊,但所获得的超声B模图像在视觉上和数量上与使用Field II模拟器获得的图像相当。同样值得注意的是,基于gan的超声模拟器计算效率很高,使用普通笔记本电脑可以达到15帧/秒的帧速率。在未来,所提出的基于gan的模拟器将用于合成更逼真的超声波图像,并带有诸如阴影之类的伪影。
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