Deep learning based solutions are being succesfully implemented for a wide variety of applications. Most notably, clinical use-cases have gained an increased interest and have been the main driver behind some of the cutting-edge data-driven algorithms proposed in the last years. For applications like sparse-view tomographic reconstructions, where the amount of measurement data is small in order to keep acquisition times short and radiation dose low, reduction of the streaking artifacts has prompted the development of data-driven denoising algorithms with the main goal of obtaining diagnostically viable images with only a subset of a full-scan data. We propose WNet, a data-driven dual-domain denoising model which contains a trainable reconstruction layer for sparse-view artifact denoising. Two encoder-decoder networks perform denoising in both sinogram- and reconstruction-domain simultaneously, while a third layer implementing the Filtered Backprojection algorithm is sandwiched between the first two and takes care of the reconstruction operation. We investigate the performance of the network on sparse-view chest CT scans, and we highlight the added benefit of having a trainable reconstruction layer over the more conventional fixed ones. We train and test our network on two clinically relevant datasets and we compare the obtained results with three different types of sparse-view CT denoising and reconstruction algorithms.
翻译:以深层次学习为基础的解决方案正在为各种各样的应用得到实施。 最显著的是,临床使用案例获得了越来越多的兴趣,并且成为过去几年中提出的一些最先进的数据驱动算法背后的主要驱动因素。 对于诸如稀释图像重建等应用,测量数据的数量很小,以便保持获取时间短和辐射剂量低,而减少有迹文物则促使开发以数据驱动的分解算法,主要目标是获得诊断性可行的图像,只有一组全扫描数据。我们提议了由数据驱动的双向脱钩模型,其中含有用于稀释文物拆的可训练重建层。两个编码-脱码网络同时在罪谱图和重建领域同时进行分解,而第三层实施过滤的回射算法则在前两层之间调制成,并照顾到重建操作的主要目的。我们调查了光谱胸部CT扫描网络的性能,我们建议了由数据驱动的双向脱钩模型,其中包含了用于稀有文物拆解的可训练的重建层。我们用三层的临床重建模型测试了我们获得的不断更新的临床数据,并对比了三层的模型。