Cross-modality image estimation involves the generation of images of one medical imaging modality from that of another modality. Convolutional neural networks (CNNs) have been shown to be useful in identifying, characterising and extracting image patterns. Generative adversarial networks (GANs) use CNNs as generators and estimated images are discriminated as true or false based on an additional network. CNNs and GANs within the image estimation framework may be considered more generally as deep learning approaches, since imaging data tends to be large, leading to a larger number of network weights. Almost all research in the CNN/GAN image estimation literature has involved the use of MRI data with the other modality primarily being PET or CT. This review provides an overview of the use of CNNs and GANs for MRI-based cross-modality medical image estimation. We outline the neural networks implemented, and detail network constructs employed for CNN and GAN image-to-image estimators. Motivations behind cross-modality image estimation are provided as well. GANs appear to provide better utility in cross-modality image estimation in comparison with CNNs, a finding drawn based on our analysis involving metrics comparing estimated and actual images. Our final remarks highlight key challenges faced by the cross-modality medical image estimation field, and suggestions for future research are outlined.
翻译:跨模式图像估计涉及从另一种模式生成一种医学成像模式的图像。进化神经网络(CNN)已被证明在识别、定性和提取图像模式方面非常有用。产生性对称网络(GANs)使用CNN作为发音和估计图像,根据另外的网络被歧视为真实或假。图像估计框架内的CNN和GAN可被更一般地视为深层次学习方法,因为成像数据往往很大,导致网络重量增加。CNN/GAN图像估计文献中几乎所有的MRI数据都涉及使用其他模式(主要是PET或CT)的MRI数据。这一审查概述了CNN和GANs用于基于MRI的跨模式医学图像估计的使用情况。我们概述了CNN和GAN图像图象估计框架内的神经网络和详细网络结构,因为成像数据往往很大,导致网络的重量增加。跨模式图像估计背后的图象估计,几乎所有的图象估计都涉及跨模式的跨模式数据比较,通过CNNM的实地分析,我们对实地图像进行最后的实地分析,通过我们的最新图像估计,对未来图像估计进行了更好的实地分析。