医学影像跨模态重建中的生成对抗网络研究进展

Research Progress on Generative Adversarial Network in Cross-modal Medical Image Reconstruction

  • 摘要: 单一模态的医学影像所包含的疾病特征信息有限,临床医生可通过综合分析多种模态的医学影像信息以明确诊断,但由于医疗资源及诊疗时间受限,医生一般无法在短时间内获得所需的多模态影像信息。跨模态医学影像重建技术能够生成临床所需的多种模态医学影像,有望辅助临床医生对疾病进行精准诊疗。目前,传统跨模态重建技术已实现部分临床场景的应用,但重建影像的生成质量有待进一步提高,生成对抗网络可重建出临床所需的高质量多模态医学影像,最大程度地节约医疗资源并缩短患者就诊时间。本文就生成对抗网络在X线、CT、MRI、PET等多模态影像之间的跨模态重建应用研究作一综述,以期为开发更先进的跨模态重建技术提供借鉴。

     

    Abstract: Single-modal medical images contain limited disease-specific information. To analyze and diagnose patients, clinicians often need to integrate multiple modal images. However, due to limited medical resources and treatment time, it may be difficult to obtain multi-modal images. Cross-modal image reconstruction can generate medical images for clinical needs, thus assisting clinicians in accurately diagnosing and treating diseases. Traditional cross-modal reconstruction techniques have been applied in some clinical scenarios, but the quality of the reconstructed images needs further improvement. Generative adversarial network (GAN) can recover high-quality and complete image data from low-quality or incomplete medical image data, maximally savings medical equipment resources and accelerating medical treatment speed. This article summarizes the applications of GAN technology in cross-modal image reconstruction across X-ray imaging, computed tomography imaging, magnetic resonance imaging, and positron emission tomography imaging, to provide reference for the development of more advanced cross-modal reconstruction techniques.

     

/

返回文章
返回