The deep learning-based tomographic image reconstruction methods have been attracting much attention among these years. The sparse-view data reconstruction is one of typical underdetermined inverse problems, how to reconstruct high-quality CT images from dozens of projections is still a challenge in practice. To address this challenge, in this article we proposed a Multi-domain Integrative Swin Transformer network (MIST-net). First, the proposed MIST-net incorporated lavish domain features from data, residual-data, image, and residual-image using flexible network architectures. Here, the residual-data and residual-image domains network components can be considered as the data consistency module to eliminate interpolation errors in both residual data and image domains, and then further retain image details. Second, to detect the image features and further protect image edge, the trainable Sobel Filter was incorporated into the network to improve the encode-decode ability. Third, with the classical Swin Transformer, we further designed the high-quality reconstruction transformer (i.e., Recformer) to improve the reconstruction performance. The Recformer inherited the power of Swin transformer to capture the global and local features of the reconstructed image. The experiments on the numerical datasets with 48 views demonstrated our proposed MIST-net provided higher reconstructed image quality with small feature recovery and edge protection than other competitors including the advanced unrolled networks. The trained network was transferred to the real cardiac CT dataset to further validate the advantages of our MIST-net as well as good robustness in clinical applications.
翻译:这些年来,基于深层学习的图像重建方法一直引起人们的极大注意。光学数据重建是典型的不完全的问题之一,如何从几十个预测中重建高质量的CT图像仍然是实际中的一项挑战。为了应对这一挑战,我们在本篇文章中提议建立一个多多面综合双向变形网络(MIST-net) 。首先,拟议的MIST-net纳入了数据、残余数据、图像和利用灵活的网络结构的残余图像的稀有域域特征。在这里,残余数据和残余模拟域域网组件可被视为数据一致性模块,以消除残余数据和图像领域的内插错误,然后进一步保留图像细节。第二,为了检测图像特征并进一步保护图像边缘,我们提议将可培训的Sobel过滤器纳入网络,以提高编码解码能力。第三,与经典的Swin Transformormation一道,我们进一步设计了高品质的重建边缘变形软件(e. Recreformation)来改进重建业绩。在Swin Reformal 网络中,将Syalalal developmentalalal siversation the review the pow liversation the review the Sliversational requistration laveal reviewation the Sliversation the Sliversal rodududududustrational laveal laveal 包括了我们所展示的微缩成型数据模型, 和M mad 提供的微的图像, 和M 提供的模型, 提供的模型,这是我们所展示的模型,以已展示的模拟的模型化的模型, 和模拟的模型,以显示的模型,以显示的模型的模型,以显示的模型的模型,以显示的恢复的模型,作为已显示的模型的模型的模型的模型的模型的模型,以制制制制制制制成为制成的模型,以制成的模型,以制成的M的模型的模型, 和当地的模型的模型的模型的模型的模型的模型的模型的模型,作为的模型,提供了的模型的模型的模型的模型的模型的模型的模型的模型的模型的模型的模型的模型的模型的模型的模型的模型的模型的模型,提供了的模型的模型的模型的模型的模型的