Institute of Medical Technology and Intelligent Systems, Hamburg University of Technology, Hamburg, Germany.
Int J Comput Assist Radiol Surg. 2020 Sep;15(9):1427-1436. doi: 10.1007/s11548-020-02203-1. Epub 2020 Jun 18.
In the field of medical image analysis, deep learning methods gained huge attention over the last years. This can be explained by their often improved performance compared to classic explicit algorithms. In order to work well, they need large amounts of annotated data for supervised learning, but these are often not available in the case of medical image data. One way to overcome this limitation is to generate synthetic training data, e.g., by performing simulations to artificially augment the dataset. However, simulations require domain knowledge and are limited by the complexity of the underlying physical model. Another method to perform data augmentation is the generation of images by means of neural networks.
We developed a new algorithm for generation of synthetic medical images exhibiting speckle noise via generative adversarial networks (GANs). Key ingredient is a speckle layer, which can be incorporated into a neural network in order to add realistic and domain-dependent speckle. We call the resulting GAN architecture SpeckleGAN.
We compared our new approach to an equivalent GAN without speckle layer. SpeckleGAN was able to generate ultrasound images with very crisp speckle patterns in contrast to the baseline GAN, even for small datasets of 50 images. SpeckleGAN outperformed the baseline GAN by up to 165 % with respect to the Fréchet Inception distance. For artery layer and lumen segmentation, a performance improvement of up to 4 % was obtained for small datasets, when these were augmented with images by SpeckleGAN.
SpeckleGAN facilitates the generation of realistic synthetic ultrasound images to augment small training sets for deep learning based image processing. Its application is not restricted to ultrasound images but could be used for every imaging methodology that produces images with speckle such as optical coherence tomography or radar.
在医学图像分析领域,深度学习方法近年来受到了极大的关注。这可以解释为它们的性能通常优于经典的显式算法。为了正常工作,它们需要大量的带注释数据进行监督学习,但在医学图像数据的情况下,这些数据通常不可用。克服这一限制的一种方法是生成合成训练数据,例如,通过执行模拟来人为地扩充数据集。然而,模拟需要领域知识,并受到基础物理模型复杂性的限制。另一种执行数据扩充的方法是通过神经网络生成图像。
我们开发了一种新的算法,通过生成对抗网络(GAN)生成具有斑点噪声的合成医学图像。关键要素是斑点层,可以将其纳入神经网络中,以添加真实和特定于域的斑点。我们将由此产生的 GAN 架构称为 SpeckleGAN。
我们将我们的新方法与没有斑点层的等效 GAN 进行了比较。SpeckleGAN 能够生成具有非常清晰斑点模式的超声图像,与基线 GAN 形成对比,即使对于只有 50 张图像的小数据集也是如此。SpeckleGAN 的 Fréchet Inception 距离最高可达基线 GAN 的 165%,表现优于基线 GAN。对于小数据集的动脉层和管腔分割,当使用 SpeckleGAN 生成的图像对其进行扩充时,性能可提高高达 4%。
SpeckleGAN 有助于生成逼真的合成超声图像,以扩充基于深度学习的图像处理的小训练集。其应用不仅限于超声图像,还可以用于产生斑点的任何成像方法,如光学相干断层扫描或雷达。