论文标题

通过学习的采样策略,主动CT重建

Active CT Reconstruction with a Learned Sampling Policy

论文作者

Wang, Ce, Shang, Kun, Zhang, Haimiao, Zhao, Shang, Liang, Dong, Zhou, S. Kevin

论文摘要

计算机断层扫描(CT)是一种广泛使用的成像技术,可帮助临床决策以高质量的人体表现形式。为了减少CT提出的辐射剂量,开发了具有保留的图像质量的稀疏视图和有限角度的CT。但是,这些方法仍然被固定或均匀的采样策略粘住,这抑制了以均匀剂量降低的更好图像的可能性。在本文中,我们通过学习积极的采样策略来探讨这种可能性,该策略优化了患者特异性,高质量重建的采样位置。为此,我们设计了一个\ textIt {智能代理},以通过渐进式的方式根据即时重建,基于即时重建的采样位置的主动建议。通过这样的设计,我们在NIH-AAPM数据集上取得了更好的性能,而不是流行的统一抽样,尤其是当视图数量很少时。最后,这样的设计还可以在临床上重要的区域内(ROI)内的重建质量提高重建质量。诗歌数据集上的实验证明了我们的抽样策略的这种能力,这基于统一的采样很难实现。

Computed tomography (CT) is a widely-used imaging technology that assists clinical decision-making with high-quality human body representations. To reduce the radiation dose posed by CT, sparse-view and limited-angle CT are developed with preserved image quality. However, these methods are still stuck with a fixed or uniform sampling strategy, which inhibits the possibility of acquiring a better image with an even reduced dose. In this paper, we explore this possibility via learning an active sampling policy that optimizes the sampling positions for patient-specific, high-quality reconstruction. To this end, we design an \textit{intelligent agent} for active recommendation of sampling positions based on on-the-fly reconstruction with obtained sinograms in a progressive fashion. With such a design, we achieve better performances on the NIH-AAPM dataset over popular uniform sampling, especially when the number of views is small. Finally, such a design also enables RoI-aware reconstruction with improved reconstruction quality within regions of interest (RoI's) that are clinically important. Experiments on the VerSe dataset demonstrate this ability of our sampling policy, which is difficult to achieve based on uniform sampling.

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