Deep learning has a great potential to alleviate diagnosis and prognosis for various clinical procedures. However, the lack of a sufficient number of medical images is the most common obstacle in conducting image-based analysis using deep learning. Due to the annotations scarcity, semi-supervised techniques in the automatic medical analysis are getting high attention. Artificial data augmentation and generation techniques such as generative adversarial networks (GANs) may help overcome this obstacle. In this work, we present an image generation approach that uses generative adversarial networks with a conditional discriminator where segmentation masks are used as conditions for image generation. We validate the feasibility of GAN-enhanced medical image generation on whole heart computed tomography (CT) images and its seven substructures, namely: left ventricle, right ventricle, left atrium, right atrium, myocardium, pulmonary arteries, and aorta. Obtained results demonstrate the suitability of the proposed adversarial approach for the accurate generation of high-quality CT images. The presented method shows great potential to facilitate further research in the domain of artificial medical image generation.
翻译:深层学习具有减轻诊断和预测各种临床程序的极大潜力。然而,缺乏足够数量的医学图像是利用深层学习进行基于图像的分析的最常见障碍。由于备注稀缺,自动医学分析中的半监督技术正在受到高度关注。人工数据增强和生成技术,如基因对抗网络(GANs),可能有助于克服这一障碍。在这项工作中,我们展示了一种图像生成方法,即使用带有有条件歧视的基因对抗网络,使用分离面罩作为生成图像的条件。我们验证了在全心脏计算图象(CT)上加固医学图象生成的可行性,及其七个子结构,即:左心室、右心室、左心室、右心室、心室、肺动脉、肺动脉和肛门。取得的结果表明,拟议的对抗方法对于准确生成高质量的CT图像是合适的。我们提出的方法显示了促进在人造医学图像领域进行进一步研究的巨大潜力。